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[Commit-gnuradio] [gnuradio] 02/10: gr-vocoder: remove embedded codec2


From: git
Subject: [Commit-gnuradio] [gnuradio] 02/10: gr-vocoder: remove embedded codec2
Date: Wed, 3 Aug 2016 23:35:09 +0000 (UTC)

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jcorgan pushed a commit to branch next
in repository gnuradio.

commit 309798aea8f35e4a208c62ebf349fb5553b8d907
Author: A. Maitland Bottoms <address@hidden>
Date:   Sat Jun 25 17:55:41 2016 -0400

    gr-vocoder: remove embedded codec2
---
 gr-vocoder/lib/codec2/CMakeLists.txt           |  201 -
 gr-vocoder/lib/codec2/_kiss_fft_guts.h         |  164 -
 gr-vocoder/lib/codec2/ampexp.c                 | 1093 ----
 gr-vocoder/lib/codec2/ampexp.h                 |   39 -
 gr-vocoder/lib/codec2/c2dec.c                  |  291 -
 gr-vocoder/lib/codec2/c2demo.c                 |  101 -
 gr-vocoder/lib/codec2/c2enc.c                  |  117 -
 gr-vocoder/lib/codec2/c2sim.c                  |  934 ---
 gr-vocoder/lib/codec2/codebook/dlsp1.txt       |   35 -
 gr-vocoder/lib/codec2/codebook/dlsp10.txt      |   35 -
 gr-vocoder/lib/codec2/codebook/dlsp2.txt       |   35 -
 gr-vocoder/lib/codec2/codebook/dlsp3.txt       |   35 -
 gr-vocoder/lib/codec2/codebook/dlsp4.txt       |   35 -
 gr-vocoder/lib/codec2/codebook/dlsp5.txt       |   35 -
 gr-vocoder/lib/codec2/codebook/dlsp6.txt       |   35 -
 gr-vocoder/lib/codec2/codebook/dlsp7.txt       |   35 -
 gr-vocoder/lib/codec2/codebook/dlsp8.txt       |   35 -
 gr-vocoder/lib/codec2/codebook/dlsp9.txt       |   35 -
 gr-vocoder/lib/codec2/codebook/gecb.txt        |  257 -
 gr-vocoder/lib/codec2/codebook/lsp1.txt        |   17 -
 gr-vocoder/lib/codec2/codebook/lsp10.txt       |    6 -
 gr-vocoder/lib/codec2/codebook/lsp2.txt        |   17 -
 gr-vocoder/lib/codec2/codebook/lsp3.txt        |   17 -
 gr-vocoder/lib/codec2/codebook/lsp4.txt        |   17 -
 gr-vocoder/lib/codec2/codebook/lsp45678910.txt | 4097 ------------
 gr-vocoder/lib/codec2/codebook/lsp5.txt        |   19 -
 gr-vocoder/lib/codec2/codebook/lsp6.txt        |   19 -
 gr-vocoder/lib/codec2/codebook/lsp7.txt        |   19 -
 gr-vocoder/lib/codec2/codebook/lsp8.txt        |   11 -
 gr-vocoder/lib/codec2/codebook/lsp9.txt        |   11 -
 gr-vocoder/lib/codec2/codebook/lspdt1.txt      |    9 -
 gr-vocoder/lib/codec2/codebook/lspdt10.txt     |    3 -
 gr-vocoder/lib/codec2/codebook/lspdt2.txt      |    9 -
 gr-vocoder/lib/codec2/codebook/lspdt3.txt      |    5 -
 gr-vocoder/lib/codec2/codebook/lspdt4.txt      |    5 -
 gr-vocoder/lib/codec2/codebook/lspdt5.txt      |    5 -
 gr-vocoder/lib/codec2/codebook/lspdt6.txt      |    5 -
 gr-vocoder/lib/codec2/codebook/lspdt7.txt      |    3 -
 gr-vocoder/lib/codec2/codebook/lspdt8.txt      |    3 -
 gr-vocoder/lib/codec2/codebook/lspdt9.txt      |    3 -
 gr-vocoder/lib/codec2/codebook/lspjnd5-10.txt  | 8317 ------------------------
 gr-vocoder/lib/codec2/codebook/lspjvm1.txt     |  513 --
 gr-vocoder/lib/codec2/codebook/lspjvm2.txt     |  513 --
 gr-vocoder/lib/codec2/codebook/lspjvm3.txt     |  513 --
 gr-vocoder/lib/codec2/codebook/lspvqanssi1.txt |  257 -
 gr-vocoder/lib/codec2/codebook/lspvqanssi2.txt |  129 -
 gr-vocoder/lib/codec2/codebook/lspvqanssi3.txt |   65 -
 gr-vocoder/lib/codec2/codebook/lspvqanssi4.txt |   65 -
 gr-vocoder/lib/codec2/codec2.c                 | 1539 -----
 gr-vocoder/lib/codec2/codec2.h                 |   76 -
 gr-vocoder/lib/codec2/codec2_fdmdv.h           |  124 -
 gr-vocoder/lib/codec2/codec2_fifo.h            |   51 -
 gr-vocoder/lib/codec2/codec2_internal.h        |   63 -
 gr-vocoder/lib/codec2/comp.h                   |   38 -
 gr-vocoder/lib/codec2/defines.h                |   94 -
 gr-vocoder/lib/codec2/dump.c                   |  629 --
 gr-vocoder/lib/codec2/dump.h                   |   78 -
 gr-vocoder/lib/codec2/fdmdv.c                  | 1573 -----
 gr-vocoder/lib/codec2/fdmdv_internal.h         |  176 -
 gr-vocoder/lib/codec2/fifo.c                   |  142 -
 gr-vocoder/lib/codec2/generate_codebook.c      |  179 -
 gr-vocoder/lib/codec2/globals.c                |   49 -
 gr-vocoder/lib/codec2/globals.h                |   47 -
 gr-vocoder/lib/codec2/glottal.c                |  257 -
 gr-vocoder/lib/codec2/hanning.h                |  644 --
 gr-vocoder/lib/codec2/interp.c                 |  323 -
 gr-vocoder/lib/codec2/interp.h                 |   45 -
 gr-vocoder/lib/codec2/kiss_fft.c               |  408 --
 gr-vocoder/lib/codec2/kiss_fft.h               |  124 -
 gr-vocoder/lib/codec2/lpc.c                    |  309 -
 gr-vocoder/lib/codec2/lpc.h                    |   43 -
 gr-vocoder/lib/codec2/lsp.c                    |  325 -
 gr-vocoder/lib/codec2/lsp.h                    |   37 -
 gr-vocoder/lib/codec2/machdep.h                |   51 -
 gr-vocoder/lib/codec2/nlp.c                    |  589 --
 gr-vocoder/lib/codec2/nlp.h                    |   38 -
 gr-vocoder/lib/codec2/os.h                     |   53 -
 gr-vocoder/lib/codec2/pack.c                   |  140 -
 gr-vocoder/lib/codec2/phase.c                  |  253 -
 gr-vocoder/lib/codec2/phase.h                  |   39 -
 gr-vocoder/lib/codec2/phaseexp.c               | 1455 -----
 gr-vocoder/lib/codec2/phaseexp.h               |   39 -
 gr-vocoder/lib/codec2/pilot_coeff.h            |   34 -
 gr-vocoder/lib/codec2/postfilter.c             |  142 -
 gr-vocoder/lib/codec2/postfilter.h             |   33 -
 gr-vocoder/lib/codec2/quantise.c               | 1970 ------
 gr-vocoder/lib/codec2/quantise.h               |  126 -
 gr-vocoder/lib/codec2/rn.h                     |  964 ---
 gr-vocoder/lib/codec2/sine.c                   |  648 --
 gr-vocoder/lib/codec2/sine.h                   |   48 -
 gr-vocoder/lib/codec2/test_bits.h              |  164 -
 91 files changed, 32378 deletions(-)

diff --git a/gr-vocoder/lib/codec2/CMakeLists.txt 
b/gr-vocoder/lib/codec2/CMakeLists.txt
deleted file mode 100644
index ac25b7c..0000000
--- a/gr-vocoder/lib/codec2/CMakeLists.txt
+++ /dev/null
@@ -1,201 +0,0 @@
-# Copyright 2011 Free Software Foundation, Inc.
-#
-# This file is part of GNU Radio
-#
-# GNU Radio is free software; you can redistribute it and/or modify
-# it under the terms of the GNU General Public License as published by
-# the Free Software Foundation; either version 3, or (at your option)
-# any later version.
-#
-# GNU Radio is distributed in the hope that it will be useful,
-# but WITHOUT ANY WARRANTY; without even the implied warranty of
-# MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE.  See the
-# GNU General Public License for more details.
-#
-# You should have received a copy of the GNU General Public License
-# along with GNU Radio; see the file COPYING.  If not, write to
-# the Free Software Foundation, Inc., 51 Franklin Street,
-# Boston, MA 02110-1301, USA.
-
-########################################################################
-# Create executable to generate other sources
-# 
http://www.vtk.org/Wiki/CMake_Cross_Compiling#Using_executables_in_the_build_created_during_the_build
-########################################################################
-if(NOT CMAKE_CROSSCOMPILING)
-    include_directories(BEFORE ${CMAKE_CURRENT_SOURCE_DIR})
-    add_executable(generate_codebook 
${CMAKE_CURRENT_SOURCE_DIR}/generate_codebook.c)
-    target_link_libraries(generate_codebook -lm)
-    export(TARGETS generate_codebook APPEND FILE ${EXPORT_FILE})
-endif()
-
-########################################################################
-# Create codebook
-########################################################################
-set(CODEBOOKS
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lsp1.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lsp2.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lsp3.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lsp4.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lsp5.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lsp6.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lsp7.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lsp8.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lsp9.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lsp10.txt
-)
-
-add_custom_command(
-    OUTPUT ${CMAKE_CURRENT_BINARY_DIR}/codebook.c
-    DEPENDS generate_codebook ${CODEBOOKS}
-    COMMAND generate_codebook lsp_cb ${CODEBOOKS} > 
${CMAKE_CURRENT_BINARY_DIR}/codebook.c
-)
-
-########################################################################
-# Create codebookd
-########################################################################
-set(CODEBOOKSD
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/dlsp1.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/dlsp2.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/dlsp3.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/dlsp4.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/dlsp5.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/dlsp6.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/dlsp7.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/dlsp8.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/dlsp9.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/dlsp10.txt
-)
-
-add_custom_command(
-    OUTPUT ${CMAKE_CURRENT_BINARY_DIR}/codebookd.c
-    DEPENDS generate_codebook ${CODEBOOKSD}
-    COMMAND generate_codebook lsp_cbd ${CODEBOOKSD} > 
${CMAKE_CURRENT_BINARY_DIR}/codebookd.c
-)
-
-########################################################################
-# Create codebookvq
-########################################################################
-set(CODEBOOKSVQ
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lsp1.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lsp2.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lsp3.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lsp4.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lsp45678910.txt
-)
-
-add_custom_command(
-    OUTPUT ${CMAKE_CURRENT_BINARY_DIR}/codebookvq.c
-    DEPENDS generate_codebook ${CODEBOOKSVQ}
-    COMMAND generate_codebook lsp_cbvq ${CODEBOOKSVQ} > 
${CMAKE_CURRENT_BINARY_DIR}/codebookvq.c
-)
-
-########################################################################
-# Create codebookjnd
-########################################################################
-set(CODEBOOKSJND
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lsp1.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lsp2.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lsp3.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lsp4.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lspjnd5-10.txt
-)
-
-add_custom_command(
-    OUTPUT ${CMAKE_CURRENT_BINARY_DIR}/codebookjnd.c
-    DEPENDS generate_codebook ${CODEBOOKSJND}
-    COMMAND generate_codebook lsp_cbjnd ${CODEBOOKSJND} > 
${CMAKE_CURRENT_BINARY_DIR}/codebookjnd.c
-)
-
-########################################################################
-# Create codebookjvm
-########################################################################
-set(CODEBOOKSJVM
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lspjvm1.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lspjvm2.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lspjvm3.txt
-)
-
-add_custom_command(
-    OUTPUT ${CMAKE_CURRENT_BINARY_DIR}/codebookjvm.c
-    DEPENDS generate_codebook ${CODEBOOKSJVM}
-    COMMAND generate_codebook lsp_cbjvm ${CODEBOOKSJVM} > 
${CMAKE_CURRENT_BINARY_DIR}/codebookjvm.c
-)
-
-########################################################################
-# Create codebookvqanssi
-########################################################################
-set(CODEBOOKSVQANSSI
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lspvqanssi1.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lspvqanssi2.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lspvqanssi3.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lspvqanssi4.txt
-)
-
-add_custom_command(
-    OUTPUT ${CMAKE_CURRENT_BINARY_DIR}/codebookvqanssi.c
-    DEPENDS generate_codebook ${CODEBOOKSVQANSSI}
-    COMMAND generate_codebook lsp_cbvqanssi ${CODEBOOKSVQANSSI} > 
${CMAKE_CURRENT_BINARY_DIR}/codebookvqanssi.c
-)
-
-########################################################################
-# Create codebookdt
-########################################################################
-set(CODEBOOKSDT
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lspdt1.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lspdt2.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lspdt3.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lspdt4.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lspdt5.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lspdt6.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lspdt7.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lspdt8.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lspdt9.txt
-    ${CMAKE_CURRENT_SOURCE_DIR}/codebook/lspdt10.txt
-)
-
-add_custom_command(
-    OUTPUT ${CMAKE_CURRENT_BINARY_DIR}/codebookdt.c
-    DEPENDS generate_codebook ${CODEBOOKSDT}
-    COMMAND generate_codebook lsp_cbdt ${CODEBOOKSDT} > 
${CMAKE_CURRENT_BINARY_DIR}/codebookdt.c
-)
-
-########################################################################
-# Create codebookge
-########################################################################
-set(CODEBOOKSGE ${CMAKE_CURRENT_SOURCE_DIR}/codebook/gecb.txt)
-
-add_custom_command(
-    OUTPUT ${CMAKE_CURRENT_BINARY_DIR}/codebookge.c
-    DEPENDS generate_codebook ${CODEBOOKSGE}
-    COMMAND generate_codebook ge_cb ${CODEBOOKSGE} > 
${CMAKE_CURRENT_BINARY_DIR}/codebookge.c
-)
-
-########################################################################
-# Append all sources in this dir
-########################################################################
-list(APPEND gr_vocoder_sources
-    ${CMAKE_CURRENT_BINARY_DIR}/codebook.c
-    ${CMAKE_CURRENT_BINARY_DIR}/codebookd.c
-    ${CMAKE_CURRENT_BINARY_DIR}/codebookvq.c
-    ${CMAKE_CURRENT_BINARY_DIR}/codebookjnd.c
-    ${CMAKE_CURRENT_BINARY_DIR}/codebookjvm.c
-    ${CMAKE_CURRENT_BINARY_DIR}/codebookvqanssi.c
-    ${CMAKE_CURRENT_BINARY_DIR}/codebookdt.c
-    ${CMAKE_CURRENT_BINARY_DIR}/codebookge.c
-
-
-    ${CMAKE_CURRENT_SOURCE_DIR}/dump.c
-    ${CMAKE_CURRENT_SOURCE_DIR}/lpc.c
-    ${CMAKE_CURRENT_SOURCE_DIR}/nlp.c
-    ${CMAKE_CURRENT_SOURCE_DIR}/postfilter.c
-    ${CMAKE_CURRENT_SOURCE_DIR}/sine.c
-    ${CMAKE_CURRENT_SOURCE_DIR}/codec2.c
-    ${CMAKE_CURRENT_SOURCE_DIR}/fifo.c
-    ${CMAKE_CURRENT_SOURCE_DIR}/fdmdv.c
-    ${CMAKE_CURRENT_SOURCE_DIR}/kiss_fft.c
-    ${CMAKE_CURRENT_SOURCE_DIR}/interp.c
-    ${CMAKE_CURRENT_SOURCE_DIR}/lsp.c
-    ${CMAKE_CURRENT_SOURCE_DIR}/phase.c
-    ${CMAKE_CURRENT_SOURCE_DIR}/quantise.c
-    ${CMAKE_CURRENT_SOURCE_DIR}/pack.c
-)
diff --git a/gr-vocoder/lib/codec2/_kiss_fft_guts.h 
b/gr-vocoder/lib/codec2/_kiss_fft_guts.h
deleted file mode 100644
index f008a7b..0000000
--- a/gr-vocoder/lib/codec2/_kiss_fft_guts.h
+++ /dev/null
@@ -1,164 +0,0 @@
-/*
-Copyright (c) 2003-2010, Mark Borgerding
-
-All rights reserved.
-
-Redistribution and use in source and binary forms, with or without 
modification, are permitted provided that the following conditions are met:
-
-    * Redistributions of source code must retain the above copyright notice, 
this list of conditions and the following disclaimer.
-    * Redistributions in binary form must reproduce the above copyright 
notice, this list of conditions and the following disclaimer in the 
documentation and/or other materials provided with the distribution.
-    * Neither the author nor the names of any contributors may be used to 
endorse or promote products derived from this software without specific prior 
written permission.
-
-THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS" 
AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE 
IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE ARE 
DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT OWNER OR CONTRIBUTORS BE LIABLE FOR 
ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES 
(INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; 
LOSS OF USE, DATA, OR PROFI [...]
-*/
-
-/* kiss_fft.h
-   defines kiss_fft_scalar as either short or a float type
-   and defines
-   typedef struct { kiss_fft_scalar r; kiss_fft_scalar i; }kiss_fft_cpx; */
-#include "kiss_fft.h"
-#include <limits.h>
-
-#define MAXFACTORS 32
-/* e.g. an fft of length 128 has 4 factors
- as far as kissfft is concerned
- 4*4*4*2
- */
-
-struct kiss_fft_state{
-    int nfft;
-    int inverse;
-    int factors[2*MAXFACTORS];
-    kiss_fft_cpx twiddles[1];
-};
-
-/*
-  Explanation of macros dealing with complex math:
-
-   C_MUL(m,a,b)         : m = a*b
-   C_FIXDIV( c , div )  : if a fixed point impl., c /= div. noop otherwise
-   C_SUB( res, a,b)     : res = a - b
-   C_SUBFROM( res , a)  : res -= a
-   C_ADDTO( res , a)    : res += a
- * */
-#ifdef FIXED_POINT
-#if (FIXED_POINT==32)
-# define FRACBITS 31
-# define SAMPPROD int64_t
-#define SAMP_MAX 2147483647
-#else
-# define FRACBITS 15
-# define SAMPPROD int32_t
-#define SAMP_MAX 32767
-#endif
-
-#define SAMP_MIN -SAMP_MAX
-
-#if defined(CHECK_OVERFLOW)
-#  define CHECK_OVERFLOW_OP(a,op,b)  \
-       if ( (SAMPPROD)(a) op (SAMPPROD)(b) > SAMP_MAX || (SAMPPROD)(a) op 
(SAMPPROD)(b) < SAMP_MIN ) { \
-               fprintf(stderr,"WARNING:overflow @ " __FILE__ "(%d): (%d " #op" 
%d) = %ld\n",__LINE__,(a),(b),(SAMPPROD)(a) op (SAMPPROD)(b) );  }
-#endif
-
-
-#   define smul(a,b) ( (SAMPPROD)(a)*(b) )
-#   define sround( x )  (kiss_fft_scalar)( ( (x) + (1<<(FRACBITS-1)) ) >> 
FRACBITS )
-
-#   define S_MUL(a,b) sround( smul(a,b) )
-
-#   define C_MUL(m,a,b) \
-      do{ (m).r = sround( smul((a).r,(b).r) - smul((a).i,(b).i) ); \
-          (m).i = sround( smul((a).r,(b).i) + smul((a).i,(b).r) ); }while(0)
-
-#   define DIVSCALAR(x,k) \
-       (x) = sround( smul(  x, SAMP_MAX/k ) )
-
-#   define C_FIXDIV(c,div) \
-       do {    DIVSCALAR( (c).r , div);  \
-               DIVSCALAR( (c).i  , div); }while (0)
-
-#   define C_MULBYSCALAR( c, s ) \
-    do{ (c).r =  sround( smul( (c).r , s ) ) ;\
-        (c).i =  sround( smul( (c).i , s ) ) ; }while(0)
-
-#else  /* not FIXED_POINT*/
-
-#   define S_MUL(a,b) ( (a)*(b) )
-#define C_MUL(m,a,b) \
-    do{ (m).r = (a).r*(b).r - (a).i*(b).i;\
-        (m).i = (a).r*(b).i + (a).i*(b).r; }while(0)
-#   define C_FIXDIV(c,div) /* NOOP */
-#   define C_MULBYSCALAR( c, s ) \
-    do{ (c).r *= (s);\
-        (c).i *= (s); }while(0)
-#endif
-
-#ifndef CHECK_OVERFLOW_OP
-#  define CHECK_OVERFLOW_OP(a,op,b) /* noop */
-#endif
-
-#define  C_ADD( res, a,b)\
-    do { \
-           CHECK_OVERFLOW_OP((a).r,+,(b).r)\
-           CHECK_OVERFLOW_OP((a).i,+,(b).i)\
-           (res).r=(a).r+(b).r;  (res).i=(a).i+(b).i; \
-    }while(0)
-#define  C_SUB( res, a,b)\
-    do { \
-           CHECK_OVERFLOW_OP((a).r,-,(b).r)\
-           CHECK_OVERFLOW_OP((a).i,-,(b).i)\
-           (res).r=(a).r-(b).r;  (res).i=(a).i-(b).i; \
-    }while(0)
-#define C_ADDTO( res , a)\
-    do { \
-           CHECK_OVERFLOW_OP((res).r,+,(a).r)\
-           CHECK_OVERFLOW_OP((res).i,+,(a).i)\
-           (res).r += (a).r;  (res).i += (a).i;\
-    }while(0)
-
-#define C_SUBFROM( res , a)\
-    do {\
-           CHECK_OVERFLOW_OP((res).r,-,(a).r)\
-           CHECK_OVERFLOW_OP((res).i,-,(a).i)\
-           (res).r -= (a).r;  (res).i -= (a).i; \
-    }while(0)
-
-
-#ifdef FIXED_POINT
-#  define KISS_FFT_COS(phase)  floor(.5+SAMP_MAX * cos (phase))
-#  define KISS_FFT_SIN(phase)  floor(.5+SAMP_MAX * sin (phase))
-#  define HALF_OF(x) ((x)>>1)
-#elif defined(USE_SIMD)
-#  define KISS_FFT_COS(phase) _mm_set1_ps( cos(phase) )
-#  define KISS_FFT_SIN(phase) _mm_set1_ps( sin(phase) )
-#  define HALF_OF(x) ((x)*_mm_set1_ps(.5))
-#else
-#  define KISS_FFT_COS(phase) (kiss_fft_scalar) cos(phase)
-#  define KISS_FFT_SIN(phase) (kiss_fft_scalar) sin(phase)
-#  define HALF_OF(x) ((x)*.5)
-#endif
-
-#define  kf_cexp(x,phase) \
-       do{ \
-               (x)->r = KISS_FFT_COS(phase);\
-               (x)->i = KISS_FFT_SIN(phase);\
-       }while(0)
-
-
-/* a debugging function */
-#define pcpx(c)\
-    fprintf(stderr,"%g + %gi\n",(double)((c)->r),(double)((c)->i) )
-
-
-#ifdef KISS_FFT_USE_ALLOCA
-// define this to allow use of alloca instead of malloc for temporary buffers
-// Temporary buffers are used in two case:
-// 1. FFT sizes that have "bad" factors. i.e. not 2,3 and 5
-// 2. "in-place" FFTs.  Notice the quotes, since kissfft does not really do an 
in-place transform.
-#include <alloca.h>
-#define  KISS_FFT_TMP_ALLOC(nbytes) alloca(nbytes)
-#define  KISS_FFT_TMP_FREE(ptr)
-#else
-#define  KISS_FFT_TMP_ALLOC(nbytes) KISS_FFT_MALLOC(nbytes)
-#define  KISS_FFT_TMP_FREE(ptr) KISS_FFT_FREE(ptr)
-#endif
diff --git a/gr-vocoder/lib/codec2/ampexp.c b/gr-vocoder/lib/codec2/ampexp.c
deleted file mode 100644
index ccec6dc..0000000
--- a/gr-vocoder/lib/codec2/ampexp.c
+++ /dev/null
@@ -1,1093 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: ampexp.c
-  AUTHOR......: David Rowe
-  DATE CREATED: 7 August 2012
-
-  Functions for experimenting with amplitude quantisation.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2012 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not,see <http://www.gnu.org/licenses/>.
-*/
-
-
-#include <assert.h>
-#include <ctype.h>
-#include <math.h>
-#include <stdio.h>
-#include <stdlib.h>
-#include <string.h>
-
-#include "ampexp.h"
-
-
-#define PRED_COEFF 0.9
-
-/* states for amplitude experiments */
-
-struct codebook {
-    unsigned int        k;
-    unsigned int        log2m;
-    unsigned int        m;
-    float               *cb;
-    unsigned int         offset;
-};
-
-struct AEXP {
-    float            A_prev[MAX_AMP];
-    int              frames;
-    float            snr;
-    int              snr_n;
-    float            var;
-    int              var_n;
-    float            vq_var;
-    int              vq_var_n;
-    struct codebook *vq1,*vq2,*vq3,*vq4,*vq5;
-
-    int              indexes[5][3];
-    MODEL            model[3];
-    float            mag[3];
-    MODEL            model_uq[3];
-};
-
-
-/*---------------------------------------------------------------------------*\
-
-  Bruce Perens' funcs to load codebook files
-
-\*---------------------------------------------------------------------------*/
-
-
-static const char format[] =
-"The table format must be:\n"
-"\tTwo integers describing the dimensions of the codebook.\n"
-"\tThen, enough numbers to fill the specified dimensions.\n";
-
-static float get_float(FILE * in, const char * name, char * * cursor, char * 
buffer, int size)
-{
-  for ( ; ; ) {
-    char *     s = *cursor;
-    char       c;
-
-    while ( (c = *s) != '\0' && !isdigit(c) && c != '-' && c != '.' )
-      s++;
-
-    /* Comments start with "#" and continue to the end of the line. */
-    if ( c != '\0' && c != '#' ) {
-      char *   end = 0;
-      float    f = 0;
-
-      f = strtod(s, &end);
-
-      if ( end != s )
-        *cursor = end;
-        return f;
-    }
-
-    if ( fgets(buffer, size, in) == NULL ) {
-      fprintf(stderr, "%s: Format error. %s\n", name, format);
-      exit(1);
-    }
-    *cursor = buffer;
-  }
-}
-
-static struct codebook *load(const char * name)
-{
-    FILE               *file;
-    char               line[2048];
-    char               *cursor = line;
-    struct codebook    *b = malloc(sizeof(struct codebook));
-    int                        i;
-    int                        size;
-
-    file = fopen(name, "rt");
-    assert(file != NULL);
-
-    *cursor = '\0';
-
-    b->k = (int)get_float(file, name, &cursor, line, sizeof(line));
-    b->m = (int)get_float(file, name ,&cursor, line, sizeof(line));
-    size = b->k * b->m;
-
-    b->cb = (float *)malloc(size * sizeof(float));
-
-    for ( i = 0; i < size; i++ ) {
-       b->cb[i] = get_float(file, name, &cursor, line, sizeof(line));
-    }
-
-    fclose(file);
-
-    return b;
-}
-
-
-/*---------------------------------------------------------------------------* 
\
-
-  amp_experiment_create()
-
-  Inits states for amplitude quantisation experiments.
-
-\*---------------------------------------------------------------------------*/
-
-struct AEXP *amp_experiment_create() {
-    struct AEXP *aexp;
-    int i,j,m;
-
-    aexp = (struct AEXP *)malloc(sizeof(struct AEXP));
-    assert (aexp != NULL);
-
-    for(i=0; i<MAX_AMP; i++)
-       aexp->A_prev[i] = 1.0;
-    aexp->frames = 0;
-    aexp->snr = 0.0;
-    aexp->snr_n = 0;
-    aexp->var = 0.0;
-    aexp->var_n = 0;
-    aexp->vq_var = 0.0;
-    aexp->vq_var_n = 0;
-
-    //aexp->vq1 = load("amp_1_80_1024a.txt");
-    //aexp->vq1 = load("../unittest/st1_10_1024.txt");
-    //aexp->vq1 = load("../unittest/amp41_80_1024.txt");
-    //aexp->vq1->offset = 40;
-    aexp->vq1 = load("../unittest/amp1_10_1024.txt");
-    aexp->vq1->offset = 0;
-    aexp->vq2 = load("../unittest/amp11_20_1024.txt");
-    aexp->vq2->offset = 10;
-
-    aexp->vq3 = load("../unittest/amp21_40_1024.txt");
-    aexp->vq3->offset = 20;
-    aexp->vq4 = load("../unittest/amp41_60_1024.txt");
-    aexp->vq4->offset = 40;
-    aexp->vq5 = load("../unittest/amp61_80_256.txt");
-    aexp->vq5->offset = 60;
-
-    #ifdef CAND2_GS
-    //aexp->vq1 = load("../unittest/t1_amp1_20_1024.txt");
-    //aexp->vq1 = load("../unittest/t2_amp1_20_1024.txt");
-    aexp->vq1 = load("../unittest/amp1_20_1024.txt");
-    aexp->vq1->offset = 0;
-    aexp->vq2 = load("../unittest/amp21_40_1024.txt");
-    aexp->vq2->offset = 20;
-    aexp->vq3 = load("../unittest/amp41_60_1024.txt");
-    aexp->vq3->offset = 40;
-    aexp->vq4 = load("../unittest/amp61_80_32.txt");
-    aexp->vq4->offset = 60;
-    #endif
-
-    //#define CAND2_GS
-    #ifdef CAND2_GS
-    aexp->vq1 = load("../unittest/amp1_20_1024.txt");
-    aexp->vq2 = load("../unittest/amp21_40_1024.txt");
-    aexp->vq3 = load("../unittest/amp41_80_1024.txt");
-    aexp->vq4 = load("../unittest/amp61_80_32.txt");
-    aexp->vq1->offset = 0;
-    aexp->vq2->offset = 20;
-    aexp->vq3->offset = 40;
-    aexp->vq4->offset = 60;
-    #endif
-
-    //#define CAND1
-    #ifdef CAND1
-    aexp->vq1 = load("../unittest/amp1_10_128.txt");
-    aexp->vq2 = load("../unittest/amp11_20_512.txt");
-    aexp->vq3 = load("../unittest/amp21_40_1024.txt");
-    aexp->vq4 = load("../unittest/amp41_60_1024.txt");
-    aexp->vq5 = load("../unittest/amp61_80_32.txt");
-    aexp->vq1->offset = 0;
-    aexp->vq2->offset = 10;
-    aexp->vq3->offset = 20;
-    aexp->vq4->offset = 40;
-    aexp->vq5->offset = 60;
-    #endif
-
-    for(i=0; i<3; i++) {
-       for(j=0; j<5; j++)
-           aexp->indexes[j][i] = 0;
-       aexp->mag[i] = 1.0;
-       aexp->model[i].Wo = TWO_PI*100.0/8000.0;
-       aexp->model[i].L = floor(PI/aexp->model[i].Wo);
-       for(m=1; m<=MAX_AMP; m++)
-           aexp->model[i].A[m] = 10.0;
-       aexp->model_uq[i] = aexp->model[i];
-    }
-
-    return aexp;
-}
-
-
-/*---------------------------------------------------------------------------* 
\
-
-  amp_experiment_destroy()
-
-\*---------------------------------------------------------------------------*/
-
-void amp_experiment_destroy(struct AEXP *aexp) {
-    assert(aexp != NULL);
-    if (aexp->snr != 0.0)
-       printf("snr: %4.2f dB\n", aexp->snr/aexp->snr_n);
-    if (aexp->var != 0.0)
-       printf("var...: %4.3f  std dev...: %4.3f (%d amplitude samples)\n",
-              aexp->var/aexp->var_n, sqrt(aexp->var/aexp->var_n), aexp->var_n);
-    if (aexp->vq_var != 0.0)
-       printf("vq var: %4.3f  std dev...: %4.3f (%d amplitude samples)\n",
-              aexp->vq_var/aexp->vq_var_n, sqrt(aexp->vq_var/aexp->vq_var_n), 
aexp->vq_var_n);
-    free(aexp);
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  Various test and experimental functions ................
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Quantisation noise simulation.  Assume noise on amplitudes is a uniform
-  distribution, of +/- x dB.  This means x = sqrt(3)*sigma.
-
-  Note: for uniform distribution var = = sigma * sigma = (b-a)*(b-a)/12.
-*/
-
-static void add_quant_noise(struct AEXP *aexp, MODEL *model, int start, int 
end, float sigma_dB)
-{
-    int   m;
-    float x_dB;
-    float noise_sam_dB;
-    float noise_sam_lin;
-
-    x_dB = sqrt(3.0) * sigma_dB;
-
-    for(m=start; m<=end; m++) {
-       noise_sam_dB = x_dB*(1.0 - 2.0*rand()/RAND_MAX);
-       //printf("%f\n", noise_sam_dB);
-       noise_sam_lin = pow(10.0, noise_sam_dB/20.0);
-       model->A[m] *= noise_sam_lin;
-       aexp->var += noise_sam_dB*noise_sam_dB;
-       aexp->var_n++;
-    }
-
-}
-
-/*
-  void print_sparse_pred_error()
-
-  use to check pred error stats (e.g. of first 1kHz) in Octave:
-
-     $ ./c2sim ../raw/hts1a.raw --ampexp > amppe.txt
-
-     octave> load ../src/amppe.txt
-     octave> std(nonzeros(amppe(:,1:20)))
-     octave> hist(nonzeros(amppe(:,1:20)),20);
-
- */
-
-
-static void print_sparse_pred_error(struct AEXP *aexp, MODEL *model, float 
mag_thresh)
-{
-    int    m, index;
-    float  mag, error;
-    float  sparse_pe[MAX_AMP];
-
-    mag = 0.0;
-    for(m=1; m<=model->L; m++)
-       mag += model->A[m]*model->A[m];
-    mag = 10*log10(mag/model->L);
-
-    if (mag > mag_thresh) {
-       for(m=0; m<MAX_AMP; m++) {
-           sparse_pe[m] = 0.0;
-       }
-
-       for(m=1; m<=model->L; m++) {
-           assert(model->A[m] > 0.0);
-           error = PRED_COEFF*20.0*log10(aexp->A_prev[m]) - 
20.0*log10(model->A[m]);
-           //error = 20.0*log10(model->A[m]) - mag;
-
-           index = MAX_AMP*m*model->Wo/PI;
-           assert(index < MAX_AMP);
-           sparse_pe[index] = error;
-       }
-
-       /* dump sparse amp vector */
-
-       for(m=0; m<MAX_AMP; m++)
-           printf("%f ", sparse_pe[m]);
-       printf("\n");
-    }
-}
-
-
-static float frame_energy(MODEL *model, float *enormdB) {
-    int   m;
-    float e, edB;
-
-    e = 0.0;
-    for(m=1; m<=model->L; m++)
-       e += model->A[m]*model->A[m];
-    edB = 10*log10(e);
-
-    #define VER_E0
-
-    #ifdef VER_E0
-    *enormdB = 10*log10(e/model->L); /* make high and low pitches have similar 
amps */
-    #endif
-
-    #ifdef VER_E1
-    e = 0.0;
-    for(m=1; m<=model->L; m++)
-       e += 10*log10(model->A[m]*model->A[m]);
-    *enormdB = e;
-    #endif
-
-    #ifdef VER_E2
-    e = 0.0;
-    for(m=1; m<=model->L; m++)
-       e += 10*log10(model->A[m]*model->A[m]);
-    *enormdB = e/model->L;
-    #endif
-    //printf("%f\n", enormdB);
-
-    return edB;
-}
-
-static void print_sparse_amp_error(struct AEXP *aexp, MODEL *model, float 
edB_thresh)
-{
-    int    m, index;
-    float  edB, enormdB, error, dWo;
-    float  sparse_pe[MAX_AMP];
-
-    edB = frame_energy(model, &enormdB);
-    //printf("%f\n", enormdB);
-    dWo = fabs((aexp->model_uq[2].Wo - 
aexp->model_uq[1].Wo)/aexp->model_uq[2].Wo);
-
-    if ((edB > edB_thresh) && (dWo < 0.1)) {
-       for(m=0; m<MAX_AMP; m++) {
-           sparse_pe[m] = 0.0;
-       }
-
-       for(m=1; m<=model->L; m++) {
-           assert(model->A[m] > 0.0);
-           error = 20.0*log10(model->A[m]) - enormdB;
-
-           index = MAX_AMP*m*model->Wo/PI;
-           assert(index < MAX_AMP);
-           sparse_pe[index] = error;
-       }
-
-       /* dump sparse amp vector */
-
-       for(m=0; m<MAX_AMP; m++)
-           printf("%f ", sparse_pe[m]);
-       printf("\n");
-    }
-}
-
-
-int vq_amp(float cb[], float vec[], float weights[], int d, int e, float *se)
-{
-   float   error;      /* current error                */
-   int     besti;      /* best index so far            */
-   float   best_error; /* best error so far            */
-   int    i,j;
-   float   diff, metric, best_metric;
-
-   besti = 0;
-   best_metric = best_error = 1E32;
-   for(j=0; j<e; j++) {
-       metric = error = 0.0;
-       for(i=0; i<d; i++) {
-          if (vec[i] != 0.0) {
-              diff = (cb[j*d+i] - vec[i]);
-              error += diff*diff;
-              metric += weights[i]*diff*diff;
-          }
-       }
-       if (metric < best_metric) {
-          best_error = error;
-          best_metric = metric;
-          besti = j;
-       }
-   }
-
-   *se += best_error;
-
-   return(besti);
-}
-
-
-static int split_vq(float sparse_pe_out[], struct AEXP *aexp, struct codebook 
*vq, float weights[], float sparse_pe_in[])
-{
-    int i, j, non_zero, vq_ind;
-    float se;
-
-    vq_ind = vq_amp(vq->cb, &sparse_pe_in[vq->offset], &weights[vq->offset], 
vq->k, vq->m, &se);
-    printf("\n offset %d k %d m %d vq_ind %d j: ", vq->offset, vq->k, vq->m, 
vq_ind);
-
-    non_zero = 0;
-    for(i=0, j=vq->offset; i<vq->k; i++,j++) {
-       if (sparse_pe_in[j] != 0.0) {
-           printf("%d ", j);
-           sparse_pe_in[j]  -= vq->cb[vq->k * vq_ind + i];
-           sparse_pe_out[j] += vq->cb[vq->k * vq_ind + i];
-           non_zero++;
-       }
-    }
-    aexp->vq_var_n += non_zero;
-    return vq_ind;
-}
-
-
-static void sparse_vq_pred_error(struct AEXP *aexp,
-                                MODEL       *model
-)
-{
-    int    m, index;
-    float  error, amp_dB, edB, enormdB;
-    float  sparse_pe_in[MAX_AMP];
-    float  sparse_pe_out[MAX_AMP];
-    float  weights[MAX_AMP];
-
-    edB = frame_energy(model, &enormdB);
-
-    for(m=0; m<MAX_AMP; m++) {
-       sparse_pe_in[m] = 0.0;
-       sparse_pe_out[m] = 0.0;
-    }
-
-    for(m=1; m<=model->L; m++) {
-       assert(model->A[m] > 0.0);
-       error = PRED_COEFF*20.0*log10(aexp->A_prev[m]) - 
20.0*log10(model->A[m]);
-
-       index = MAX_AMP*m*model->Wo/PI;
-       assert(index < MAX_AMP);
-       sparse_pe_in[index] = error;
-       weights[index] = model->A[m];
-    }
-
-    /* vector quantise */
-
-    for(m=0; m<MAX_AMP; m++) {
-       sparse_pe_out[m] = sparse_pe_in[m];
-    }
-
-    //#define SIM_VQ
-    #ifndef SIM_VQ
-    split_vq(sparse_pe_out, aexp, aexp->vq1, weights, sparse_pe_in);
-    #else
-    for(m=aexp->vq->offset; m<aexp->vq->offset+aexp->vq->k; m++) {
-       if (sparse_pe_in[m] != 0.0) {
-           float error = 8*(1.0 - 2.0*rand()/RAND_MAX);
-           aexp->vq_var += error*error;
-           aexp->vq_var_n++;
-           sparse_pe_out[m] = sparse_pe_in[m] + error;
-       }
-    }
-    #endif
-
-    if (edB > -100.0)
-       for(m=0; m<MAX_AMP; m++) {
-           if (sparse_pe_in[m] != 0.0)
-               aexp->vq_var += pow(sparse_pe_out[m] - sparse_pe_in[m], 2.0);
-       }
-
-    /* transform quantised amps back */
-
-    for(m=1; m<=model->L; m++) {
-       index = MAX_AMP*m*model->Wo/PI;
-       assert(index < MAX_AMP);
-       amp_dB = PRED_COEFF*20.0*log10(aexp->A_prev[m]) - sparse_pe_out[index];
-       //printf("in: %f  out: %f\n", sparse_pe_in[index], 
sparse_pe_out[index]);
-       //printf("amp_dB: %f A[m] (dB) %f\n", amp_dB, 20.0*log10(model->A[m]));
-       model->A[m] = pow(10.0, amp_dB/20.0);
-    }
-    //exit(0);
-}
-
-
-static void split_error(struct AEXP *aexp, struct codebook *vq, float 
sparse_pe_in[], int ind)
-{
-    int i, j;
-
-    for(i=0, j=vq->offset; i<vq->k; i++,j++) {
-       if (sparse_pe_in[j] != 0.0) {
-           sparse_pe_in[j] -= vq->cb[vq->k * ind + i];
-       }
-    }
-}
-
-
-static void sparse_vq_amp(struct AEXP *aexp, MODEL *model)
-{
-    int    m, index;
-    float  error, amp_dB, enormdB;
-    float  sparse_pe_in[MAX_AMP];
-    float  sparse_pe_out[MAX_AMP];
-    float  weights[MAX_AMP];
-
-    frame_energy(model, &enormdB);
-
-    aexp->mag[2] = enormdB;
-
-    for(m=0; m<MAX_AMP; m++) {
-       sparse_pe_in[m] = 0.0;
-       sparse_pe_out[m] = 0.0;
-    }
-
-    for(m=1; m<=model->L; m++) {
-       assert(model->A[m] > 0.0);
-       error = 20.0*log10(model->A[m]) - enormdB;
-
-       index = MAX_AMP*m*model->Wo/PI;
-       assert(index < MAX_AMP);
-       sparse_pe_in[index] = error;
-       weights[index] = pow(model->A[m],0.8);
-    }
-
-    /* vector quantise */
-
-    for(m=0; m<MAX_AMP; m++) {
-       sparse_pe_out[m] = sparse_pe_in[m];
-    }
-
-    for(m=0; m<80; m++)
-       sparse_pe_out[m] = 0;
-
-    #define SPLIT
-    #ifdef SPLIT
-    aexp->indexes[0][2] = split_vq(sparse_pe_out, aexp, aexp->vq1, weights, 
sparse_pe_in);
-
-    aexp->indexes[1][2] = split_vq(sparse_pe_out, aexp, aexp->vq2, weights, 
sparse_pe_in);
-    aexp->indexes[2][2] = split_vq(sparse_pe_out, aexp, aexp->vq3, weights, 
sparse_pe_in);
-    aexp->indexes[3][2] = split_vq(sparse_pe_out, aexp, aexp->vq4, weights, 
sparse_pe_in);
-    aexp->indexes[4][2] = split_vq(sparse_pe_out, aexp, aexp->vq5, weights, 
sparse_pe_in);
-    #endif
-    //#define MULTISTAGE
-    #ifdef MULTISTAGE
-    aexp->indexes[0][2] = split_vq(sparse_pe_out, aexp, aexp->vq1, weights, 
sparse_pe_in);
-    aexp->indexes[1][2] = split_vq(sparse_pe_out, aexp, aexp->vq2, weights, 
sparse_pe_in);
-    aexp->indexes[2][2] = split_vq(sparse_pe_out, aexp, aexp->vq3, weights, 
sparse_pe_in);
-    //aexp->indexes[3][2] = split_vq(sparse_pe_out, aexp, aexp->vq4, weights, 
sparse_pe_in);
-    #endif
-
-    for(m=0; m<MAX_AMP; m++) {
-       if (sparse_pe_in[m] != 0.0)
-           aexp->vq_var += pow(sparse_pe_out[m] - sparse_pe_in[m], 2.0);
-    }
-
-    /* transform quantised amps back */
-
-    for(m=1; m<=model->L; m++) {
-       index = MAX_AMP*m*model->Wo/PI;
-       assert(index < MAX_AMP);
-       amp_dB = sparse_pe_out[index] + enormdB;
-       model->A[m] = pow(10.0, amp_dB/20.0);
-    }
-    //exit(0);
-}
-
-
-static void update_snr_calc(struct AEXP *aexp, MODEL *m1, MODEL *m2)
-{
-    int m;
-    float signal, noise, signal_dB;
-
-    assert(m1->L == m2->L);
-
-    signal = 0.0; noise = 1E-32;
-    for(m=1; m<=m1->L; m++) {
-       signal += m1->A[m]*m1->A[m];
-       noise  += pow(m1->A[m] - m2->A[m], 2.0);
-       //printf("%f %f\n", before[m], model->phi[m]);
-    }
-    signal_dB = 10*log10(signal);
-    if (signal_dB > -100.0) {
-       aexp->snr += 10.0*log10(signal/noise);
-       aexp->snr_n++;
-    }
-}
-
-
-/* gain/shape vq search.  Returns index of best gain.  Gain is additive (as we 
use log quantisers) */
-
-int gain_shape_vq_amp(float cb[], float vec[], float weights[], int d, int e, 
float *se, float *best_gain)
-{
-   float   error;      /* current error                */
-   int     besti;      /* best index so far            */
-   float   best_error; /* best error so far            */
-   int    i,j,m;
-   float   diff, metric, best_metric, gain, sumAm, sumCb;
-
-   besti = 0;
-   best_metric = best_error = 1E32;
-   for(j=0; j<e; j++) {
-
-       /* compute optimum gain */
-
-       sumAm = sumCb = 0.0;
-       m = 0;
-       for(i=0; i<d; i++) {
-          if (vec[i] != 0.0) {
-              m++;
-              sumAm += vec[i];
-              sumCb += cb[j*d+i];
-          }
-       }
-       gain = (sumAm - sumCb)/m;
-
-       /* compute error */
-
-       metric = error = 0.0;
-       for(i=0; i<d; i++) {
-          if (vec[i] != 0.0) {
-              diff = vec[i] - cb[j*d+i] - gain;
-              error += diff*diff;
-              metric += weights[i]*diff*diff;
-          }
-       }
-       if (metric < best_metric) {
-          best_error = error;
-          best_metric = metric;
-          *best_gain = gain;
-          besti = j;
-       }
-   }
-
-   *se += best_error;
-
-   return(besti);
-}
-
-
-static void gain_shape_split_vq(float sparse_pe_out[], struct AEXP *aexp, 
struct codebook *vq, float weights[], float sparse_pe_in[], float *best_gain)
-{
-    int i, j, non_zero, vq_ind;
-    float se;
-
-    vq_ind = gain_shape_vq_amp(vq->cb, &sparse_pe_in[vq->offset], 
&weights[vq->offset], vq->k, vq->m, &se, best_gain);
-    //printf("\n offset %d k %d m %d vq_ind %d gain: %4.2f j: ", vq->offset, 
vq->k, vq->m, vq_ind, *best_gain);
-
-    non_zero = 0;
-    for(i=0, j=vq->offset; i<vq->k; i++,j++) {
-       if (sparse_pe_in[j] != 0.0) {
-           //printf("%d ", j);
-           sparse_pe_out[j] = vq->cb[vq->k * vq_ind + i] + *best_gain;
-           non_zero++;
-       }
-    }
-    aexp->vq_var_n += non_zero;
-}
-
-
-static void gain_shape_sparse_vq_amp(struct AEXP *aexp, MODEL *model)
-{
-    int    m, index;
-    float  amp_dB, best_gain;
-    float  sparse_pe_in[MAX_AMP];
-    float  sparse_pe_out[MAX_AMP];
-    float  weights[MAX_AMP];
-
-    for(m=0; m<MAX_AMP; m++) {
-       sparse_pe_in[m] = 0.0;
-       sparse_pe_out[m] = 0.0;
-    }
-
-    for(m=1; m<=model->L; m++) {
-       assert(model->A[m] > 0.0);
-
-       index = MAX_AMP*m*model->Wo/PI;
-       assert(index < MAX_AMP);
-       sparse_pe_in[index] = 20.0*log10(model->A[m]);
-       weights[index] = model->A[m];
-    }
-
-    /* vector quantise */
-
-    for(m=0; m<MAX_AMP; m++) {
-       sparse_pe_out[m] = sparse_pe_in[m];
-    }
-
-    gain_shape_split_vq(sparse_pe_out, aexp, aexp->vq1, weights, sparse_pe_in, 
&best_gain);
-    gain_shape_split_vq(sparse_pe_out, aexp, aexp->vq2, weights, sparse_pe_in, 
&best_gain);
-    gain_shape_split_vq(sparse_pe_out, aexp, aexp->vq3, weights, sparse_pe_in, 
&best_gain);
-    gain_shape_split_vq(sparse_pe_out, aexp, aexp->vq4, weights, sparse_pe_in, 
&best_gain);
-
-    for(m=0; m<MAX_AMP; m++) {
-       if (sparse_pe_in[m] != 0.0)
-           aexp->vq_var += pow(sparse_pe_out[m] - sparse_pe_in[m], 2.0);
-    }
-
-    /* transform quantised amps back */
-
-    for(m=1; m<=model->L; m++) {
-       index = MAX_AMP*m*model->Wo/PI;
-       assert(index < MAX_AMP);
-       amp_dB = sparse_pe_out[index];
-       model->A[m] = pow(10.0, amp_dB/20.0);
-    }
-    //exit(0);
-}
-
-
-static void interp_split_vq(float sparse_pe_out[], struct AEXP *aexp, struct 
codebook *vq, float sparse_pe_in[], int ind)
-{
-    int   i, j;
-    float amp_dB;
-
-    for(i=0, j=vq->offset; i<vq->k; i++,j++) {
-       if (sparse_pe_in[j] != 0.0) {
-           amp_dB  = 0.5*(aexp->mag[0] + vq->cb[vq->k * aexp->indexes[ind][0] 
+ i]);
-           amp_dB += 0.5*(aexp->mag[2] + vq->cb[vq->k * aexp->indexes[ind][2] 
+ i]);
-           sparse_pe_out[j] = amp_dB;
-       }
-    }
-}
-
-
-static void vq_interp(struct AEXP *aexp, MODEL *model, int on)
-{
-    int              i, j, m, index;
-    float            amp_dB;
-    //struct codebook *vq = aexp->vq1;
-    float  sparse_pe_in[MAX_AMP];
-    float  sparse_pe_out[MAX_AMP];
-
-    /* replace odd frames with interp */
-    /* once we get an even input frame we can interpolate and output odd */
-    /* using VQ to interpolate.  This assumes some correlation in
-       adjacent VQ samples */
-
-    memcpy(&aexp->model[2], model, sizeof(MODEL));
-
-    /* once we get an even input frame we have enough information to
-      replace prev odd frame with interpolated version */
-
-    if (on && ((aexp->frames % 2) == 0)) {
-
-       /* copy Wo, L, and phases */
-
-       memcpy(model, &aexp->model[1], sizeof(MODEL));
-       //printf("mags: %4.2f %4.2f %4.2f Am: \n", aexp->mag[0], aexp->mag[1], 
aexp->mag[2]);
-
-       /* now replace Am by interpolation, use similar design to VQ
-          to handle different bands  */
-
-       for(m=1; m<=model->L; m++) {
-           assert(model->A[m] > 0.0);
-
-           index = MAX_AMP*m*model->Wo/PI;
-           assert(index < MAX_AMP);
-           sparse_pe_in[index] = 20.0*log10(model->A[m]);
-       }
-
-       /* this can be used for when just testing partial interpolation */
-
-       for(m=0; m<MAX_AMP; m++) {
-           //sparse_pe_out[m] = sparse_pe_in[m];
-           sparse_pe_out[m] = 0;
-       }
-
-       interp_split_vq(sparse_pe_out, aexp, aexp->vq1, sparse_pe_in, 0);
-       interp_split_vq(sparse_pe_out, aexp, aexp->vq2, sparse_pe_in, 1);
-       interp_split_vq(sparse_pe_out, aexp, aexp->vq3, sparse_pe_in, 2);
-       interp_split_vq(sparse_pe_out, aexp, aexp->vq4, sparse_pe_in, 3);
-       interp_split_vq(sparse_pe_out, aexp, aexp->vq5, sparse_pe_in, 4);
-
-       for(m=1; m<=model->L; m++) {
-           index = MAX_AMP*m*model->Wo/PI;
-           assert(index < MAX_AMP);
-           amp_dB = sparse_pe_out[index];
-           //printf("  %4.2f", 10.0*log10(model->A[m]));
-           model->A[m] = pow(10.0, amp_dB/20.0);
-           //printf("  %4.2f\n", 10.0*log10(model->A[m]));
-       }
-
-        #ifdef INITIAL_VER
-
-       for(m=1; m<=model->L; m++) {
-           index = MAX_AMP*m*model->Wo/PI;
-           assert(index < MAX_AMP);
-
-           if (index < vq->k) {
-               amp_dB  = 0.5*(aexp->mag[0] + vq->cb[vq->k * aexp->indexes[0] + 
index]);
-               amp_dB += 0.5*(aexp->mag[2] + vq->cb[vq->k * aexp->indexes[2] + 
index]);
-               //printf("  %4.2f", 10.0*log10(model->A[m]));
-               //amp_dB = 10;
-               model->A[m] = pow(10.0, amp_dB/20.0);
-               printf("  %4.2f\n", 10.0*log10(model->A[m]));
-           }
-       }
-
-       #endif
-    }
-    else
-       memcpy(model, &aexp->model[1], sizeof(MODEL));
-
-    /* update memories */
-
-    for(i=0; i<2; i++) {
-       memcpy(&aexp->model[i], &aexp->model[i+1], sizeof(MODEL));
-       for(j=0; j<5; j++)
-           aexp->indexes[j][i] = aexp->indexes[j][i+1];
-       aexp->mag[i] = aexp->mag[i+1];
-    }
-
-}
-
-
-/*
-  This functions tests theory that some bands can be combined together
-  due to less frequency resolution at higher frequencies.  This will
-  reduce the amount of information we need to encode.
-*/
-
-void smooth_samples(struct AEXP *aexp, MODEL *model, int mode)
-{
-    int    m, i, j, index, step, nav, v, en;
-    float  sparse_pe_in[MAX_AMP], av, amp_dB;
-    float  sparse_pe_out[MAX_AMP];
-    float  smoothed[MAX_AMP], smoothed_out[MAX_AMP];
-    float  weights[MAX_AMP];
-    float  enormdB;
-
-    frame_energy(model, &enormdB);
-
-    for(m=0; m<MAX_AMP; m++) {
-       sparse_pe_in[m] = 0.0;
-       sparse_pe_out[m] = 0.0;
-    }
-
-    /* set up sparse array */
-
-    for(m=1; m<=model->L; m++) {
-       assert(model->A[m] > 0.0);
-
-       index = MAX_AMP*m*model->Wo/PI;
-       assert(index < MAX_AMP);
-       sparse_pe_out[index] = sparse_pe_in[index] = 20.0*log10(model->A[m]) - 
enormdB;
-    }
-
-    /* now combine samples at high frequencies to reduce dimension */
-
-    step=4;
-    for(i=MAX_AMP/2,v=0; i<MAX_AMP; i+=step,v++) {
-
-       /* average over one band */
-
-       av = 0.0; nav = 0;
-       en = i+step;
-       if (en > (MAX_AMP-1))
-           en = MAX_AMP-1;
-       for(j=i; j<en; j++) {
-           if (sparse_pe_in[j] != 0.0) {
-               av += sparse_pe_in[j];
-               nav++;
-           }
-       }
-       if (nav) {
-           av /= nav;
-           smoothed[v] = av;
-           weights[v] = pow(10.0,av/20.0);
-           //weights[v] = 1.0;
-       }
-       else
-           smoothed[v] = 0.0;
-
-    }
-
-    if (mode == 1) {
-       for(i=0; i<v; i++)
-           printf("%5.2f ", smoothed[i]);
-       printf("\n");
-    }
-
-    if (mode == 2) {
-       for(i=0; i<v; i++)
-           smoothed_out[i] = 0;
-       split_vq(smoothed_out, aexp, aexp->vq1, weights, smoothed);
-       for(i=0; i<v; i++)
-           smoothed[i] = smoothed_out[i];
-    }
-
-    /* set all samples to smoothed average */
-
-    step = 4;
-    for(i=MAX_AMP/2,v=0; i<MAX_AMP; i+=step,v++) {
-       en = i+step;
-       if (en > (MAX_AMP-1))
-           en = MAX_AMP-1;
-       for(j=i; j<en; j++)
-           sparse_pe_out[j] = smoothed[v];
-    }
-
-    /* convert back to Am */
-
-    for(m=1; m<=model->L; m++) {
-       index = MAX_AMP*m*model->Wo/PI;
-       assert(index < MAX_AMP);
-       amp_dB = sparse_pe_out[index] + enormdB;
-       //printf("%d %4.2f %4.2f\n", m, 10.0*log10(model->A[m]), amp_dB);
-       model->A[m] = pow(10.0, amp_dB/20.0);
-    }
-
-}
-
-#define MAX_BINS 40
-static float bins[] = {
-    /*1000.0, 1200.0, 1400.0, 1600.0, 1800,*/
-    2000.0, 2400.0, 2800.0,
-    3000.0, 3400.0, 3600.0, 4000.0};
-
-void smooth_amp(struct AEXP *aexp, MODEL *model) {
-    int    m, i;
-    int    nbins;
-    int    b;
-    float  f;
-    float  av[MAX_BINS];
-    int    nav[MAX_BINS];
-
-    nbins = sizeof(bins)/sizeof(float);
-
-    /* clear all bins */
-
-    for(i=0; i<MAX_BINS; i++) {
-       av[i] = 0.0;
-       nav[i] = 0;
-    }
-
-    /* add amps into each bin */
-
-    for(m=1; m<=model->L; m++) {
-       f = m*model->Wo*FS/TWO_PI;
-       if (f > bins[0]) {
-
-           /* find bin  */
-
-           for(i=0; i<nbins; i++)
-               if ((f > bins[i]) && (f <= bins[i+1]))
-                   b = i;
-           assert(b < MAX_BINS);
-
-           av[b] += model->A[m]*model->A[m];
-           nav[b]++;
-       }
-
-    }
-
-    /* use averages to est amps */
-
-    for(m=1; m<=model->L; m++) {
-       f = m*model->Wo*FS/TWO_PI;
-       if (f > bins[0]) {
-
-           /* find bin */
-
-           for(i=0; i<nbins; i++)
-               if ((f > bins[i]) && (f <= bins[i+1]))
-                   b = i;
-           assert(b < MAX_BINS);
-
-           /* add predicted phase error to this bin */
-
-           printf("L %d m %d f %4.f b %d\n", model->L, m, f, b);
-
-           printf(" %d: %4.3f -> ", m, 20*log10(model->A[m]));
-           model->A[m] = sqrt(av[b]/nav[b]);
-           printf("%4.3f\n", 20*log10(model->A[m]));
-       }
-    }
-    printf("\n");
-}
-
-/*---------------------------------------------------------------------------* 
\
-
-  amp_experiment()
-
-  Amplitude quantisation experiments.
-
-\*---------------------------------------------------------------------------*/
-
-void amp_experiment(struct AEXP *aexp, MODEL *model, char *arg) {
-    int m,i;
-
-    memcpy(&aexp->model_uq[2], model, sizeof(MODEL));
-
-    if (strcmp(arg, "qn") == 0) {
-       add_quant_noise(aexp, model, 1, model->L, 1);
-       update_snr_calc(aexp, &aexp->model_uq[2], model);
-   }
-
-    /* print training samples that can be > train.txt for training VQ */
-
-    if (strcmp(arg, "train") == 0)
-       print_sparse_amp_error(aexp, model, 00.0);
-
-    /* VQ of amplitudes, no interpolation (ie 10ms rate) */
-
-    if (strcmp(arg, "vq") == 0) {
-       sparse_vq_amp(aexp, model);
-       vq_interp(aexp, model, 0);
-       update_snr_calc(aexp, &aexp->model_uq[1], model);
-    }
-
-    /* VQ of amplitudes, interpolation (ie 20ms rate) */
-
-    if (strcmp(arg, "vqi") == 0) {
-       sparse_vq_amp(aexp, model);
-       vq_interp(aexp, model, 1);
-       update_snr_calc(aexp, &aexp->model_uq[1], model);
-    }
-
-    /* gain/shape VQ of amplitudes, 10ms rate (doesn't work that well) */
-
-    if (strcmp(arg, "gsvq") == 0) {
-       gain_shape_sparse_vq_amp(aexp, model);
-       vq_interp(aexp, model, 0);
-       update_snr_calc(aexp, &aexp->model_uq[1], model);
-    }
-
-    if (strcmp(arg, "smooth") == 0) {
-       smooth_samples(aexp, model, 0);
-       update_snr_calc(aexp, &aexp->model_uq[2], model);
-    }
-
-    if (strcmp(arg, "smoothtrain") == 0) {
-       smooth_samples(aexp, model, 1);
-       //update_snr_calc(aexp, &aexp->model_uq[2], model);
-    }
-
-    if (strcmp(arg, "smoothvq") == 0) {
-       smooth_samples(aexp, model, 2);
-       update_snr_calc(aexp, &aexp->model_uq[2], model);
-    }
-
-    if (strcmp(arg, "smoothamp") == 0) {
-       smooth_amp(aexp, model);
-       update_snr_calc(aexp, &aexp->model_uq[2], model);
-    }
-
-    /* update states */
-
-    for(m=1; m<=model->L; m++)
-       aexp->A_prev[m] = model->A[m];
-    aexp->frames++;
-    for(i=0; i<3; i++)
-       aexp->model_uq[i] = aexp->model_uq[i+1];
-}
-
diff --git a/gr-vocoder/lib/codec2/ampexp.h b/gr-vocoder/lib/codec2/ampexp.h
deleted file mode 100644
index 8954ea2..0000000
--- a/gr-vocoder/lib/codec2/ampexp.h
+++ /dev/null
@@ -1,39 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: ampexp.h
-  AUTHOR......: David Rowe
-  DATE CREATED: & August 2012
-
-  Functions for experimenting with amplitude quantisation.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2012 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not,see <http://www.gnu.org/licenses/>.
-*/
-
-#ifndef __AMPEX__
-#define __AMPEXP__
-
-#include "defines.h"
-
-struct AEXP;
-
-struct AEXP *amp_experiment_create();
-void amp_experiment_destroy(struct AEXP *aexp);
-void amp_experiment(struct AEXP *aexp, MODEL *model, char *arg);
-
-#endif
diff --git a/gr-vocoder/lib/codec2/c2dec.c b/gr-vocoder/lib/codec2/c2dec.c
deleted file mode 100644
index ec44f0a..0000000
--- a/gr-vocoder/lib/codec2/c2dec.c
+++ /dev/null
@@ -1,291 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: c2dec.c
-  AUTHOR......: David Rowe
-  DATE CREATED: 23/8/2010
-
-  Decodes a file of bits to a file of raw speech samples using codec2.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2010 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#include "codec2.h"
-#include "dump.h"
-
-#include <assert.h>
-#include <stdio.h>
-#include <stdlib.h>
-#include <string.h>
-#include <errno.h>
-#include <getopt.h>
-
-#define NONE          0  /* no bit errors                          */
-#define UNIFORM       1  /* random bit errors                      */
-#define TWO_STATE     2  /* Two state error model                  */
-#define UNIFORM_RANGE 3  /* random bit errors over a certain range */
-
-void print_help(const struct option *long_options, int num_opts, char* argv[]);
-
-int main(int argc, char *argv[])
-{
-    int            mode;
-    void          *codec2;
-    FILE          *fin;
-    FILE          *fout;
-    FILE          *fber = NULL;
-    short         *buf;
-    unsigned char *bits, *prev_bits;
-    int            nsam, nbit, nbyte, i, byte, frames, bits_proc, bit_errors, 
error_mode;
-    int            nstart_bit, nend_bit, bit_rate;
-    int            state, next_state;
-    float          ber, r, burst_length, burst_period, burst_timer, ber_est;
-    unsigned char  mask;
-    int            natural, dump;
-
-    char* opt_string = "h:";
-    struct option long_options[] = {
-        { "ber", required_argument, NULL, 0 },
-        { "startbit", required_argument, NULL, 0 },
-        { "endbit", required_argument, NULL, 0 },
-        { "berfile", required_argument, NULL, 0 },
-        { "natural", no_argument, &natural, 1 },
-        #ifdef DUMP
-        { "dump", required_argument, &dump, 1 },
-        #endif
-        { "help", no_argument, NULL, 'h' },
-        { NULL, no_argument, NULL, 0 }
-    };
-    int num_opts=sizeof(long_options)/sizeof(struct option);
-
-    if (argc < 4)
-        print_help(long_options, num_opts, argv);
-
-    if (strcmp(argv[1],"3200") == 0)
-       mode = CODEC2_MODE_3200;
-    else if (strcmp(argv[1],"2400") == 0)
-       mode = CODEC2_MODE_2400;
-    else if (strcmp(argv[1],"1600") == 0)
-       mode = CODEC2_MODE_1600;
-    else if (strcmp(argv[1],"1400") == 0)
-       mode = CODEC2_MODE_1400;
-    else if (strcmp(argv[1],"1300") == 0)
-       mode = CODEC2_MODE_1300;
-    else if (strcmp(argv[1],"1200") == 0)
-       mode = CODEC2_MODE_1200;
-    else {
-       fprintf(stderr, "Error in mode: %s.  Must be 3200, 2400, 1600, 1400, 
1300 or 1200\n", argv[1]);
-       exit(1);
-    }
-    bit_rate = atoi(argv[1]);
-
-    if (strcmp(argv[2], "-")  == 0) fin = stdin;
-    else if ( (fin = fopen(argv[2],"rb")) == NULL ) {
-       fprintf(stderr, "Error opening input bit file: %s: %s.\n",
-         argv[2], strerror(errno));
-       exit(1);
-    }
-
-    if (strcmp(argv[3], "-") == 0) fout = stdout;
-    else if ( (fout = fopen(argv[3],"wb")) == NULL ) {
-       fprintf(stderr, "Error opening output speech file: %s: %s.\n",
-         argv[3], strerror(errno));
-       exit(1);
-    }
-
-    error_mode = NONE;
-    ber = 0.0;
-    burst_length = burst_period = 0.0;
-    burst_timer = 0.0;
-    dump = natural = 0;
-
-    codec2 = codec2_create(mode);
-    nsam = codec2_samples_per_frame(codec2);
-    nbit = codec2_bits_per_frame(codec2);
-    buf = (short*)malloc(nsam*sizeof(short));
-    nbyte = (nbit + 7) / 8;
-    bits = (unsigned char*)malloc(nbyte*sizeof(char));
-    prev_bits = (unsigned char*)malloc(nbyte*sizeof(char));
-    frames = bit_errors = bits_proc = 0;
-    nstart_bit = 0;
-    nend_bit = nbit-1;
-
-    while(1) {
-        int option_index = 0;
-        int opt = getopt_long(argc, argv, opt_string,
-                    long_options, &option_index);
-        if (opt == -1)
-            break;
-
-        switch (opt) {
-        case 0:
-            if(strcmp(long_options[option_index].name, "ber") == 0) {
-                ber = atof(optarg);
-                error_mode = UNIFORM;
-            } else if(strcmp(long_options[option_index].name, "startbit") == 
0) {
-               nstart_bit = atoi(optarg);
-            } else if(strcmp(long_options[option_index].name, "endbit") == 0) {
-               nend_bit = atoi(optarg);
-             } else if(strcmp(long_options[option_index].name, "berfile") == 
0) {
-               if ((fber = fopen(optarg,"wt")) == NULL) {
-                   fprintf(stderr, "Error opening BER file: %s %s.\n",
-                            optarg, strerror(errno));
-                    exit(1);
-                }
-
-            }
-            #ifdef DUMP
-            else if(strcmp(long_options[option_index].name, "dump") == 0) {
-                if (dump)
-                   dump_on(optarg);
-            }
-            #endif
-            break;
-
-        case 'h':
-            print_help(long_options, num_opts, argv);
-            break;
-
-        default:
-            /* This will never be reached */
-            break;
-        }
-    }
-    assert(nend_bit <= nbit);
-    codec2_set_natural_or_gray(codec2, !natural);
-    //printf("%d %d\n", nstart_bit, nend_bit);
-
-    while(fread(bits, sizeof(char), nbyte, fin) == (size_t)nbyte) {
-       frames++;
-
-        // apply bit errors, MSB of byte 0 is bit 0 in frame */
-
-       if ((error_mode == UNIFORM) || (error_mode == UNIFORM_RANGE)) {
-           for(i=nstart_bit; i<nend_bit+1; i++) {
-               r = (float)rand()/RAND_MAX;
-               if (r < ber) {
-                   byte = i/8;
-                   //printf("nbyte %d nbit %d i %d byte %d bits[%d] 0x%0x ", 
nbyte, nbit, i, byte, byte, bits[byte]);
-                   mask = 1 << (7 - i + byte*8);
-                    bits[byte] ^= mask;
-                   //printf("shift: %d mask: 0x%0x bits[%d] 0x%0x\n", 7 - i + 
byte*8, mask, byte, bits[byte] );
-                   bit_errors++;
-               }
-                bits_proc++;
-           }
-       }
-
-       if (error_mode == TWO_STATE) {
-            burst_timer += (float)nbit/bit_rate;
-            fprintf(stderr, "burst_timer: %f  state: %d\n", burst_timer, 
state);
-
-            next_state = state;
-            switch(state) {
-            case 0:
-
-                /* clear channel state - no bit errors */
-
-                if (burst_timer > (burst_period - burst_length))
-                    next_state = 1;
-                break;
-
-            case 1:
-
-                /* burst error state - 50% bit error rate */
-
-                for(i=nstart_bit; i<nend_bit+1; i++) {
-                    r = (float)rand()/RAND_MAX;
-                    if (r < 0.5) {
-                        byte = i/8;
-                        bits[byte] ^= 1 << (7 - i + byte*8);
-                        bit_errors++;
-                    }
-                    bits_proc++;
-               }
-
-                if (burst_timer > burst_period) {
-                    burst_timer = 0.0;
-                    next_state = 0;
-                }
-                break;
-
-           }
-
-            state = next_state;
-        }
-
-        if (fber != NULL) {
-            if (fread(&ber_est, sizeof(float), 1, fber) != 1) {
-                fprintf(stderr, "ran out of BER estimates!\n");
-                exit(1);
-            }
-            //fprintf(stderr, "ber_est: %f\n", ber_est);
-        }
-        else
-            ber_est = 0.0;
-
-       codec2_decode_ber(codec2, buf, bits, ber_est);
-       fwrite(buf, sizeof(short), nsam, fout);
-       //if this is in a pipeline, we probably don't want the usual
-        //buffering to occur
-        if (fout == stdout) fflush(stdout);
-        if (fin == stdin) fflush(stdin);
-
-        memcpy(prev_bits, bits, nbyte);
-    }
-
-    if (error_mode)
-       fprintf(stderr, "actual BER: %1.3f\n", (float)bit_errors/bits_proc);
-
-    codec2_destroy(codec2);
-
-    free(buf);
-    free(bits);
-    fclose(fin);
-    fclose(fout);
-
-    return 0;
-}
-
-void print_help(const struct option* long_options, int num_opts, char* argv[])
-{
-       int i;
-       char *option_parameters;
-       fprintf(stderr, "\nc2dec - Codec 2 decoder and bit error simulation 
program\n"
-               "usage: %s 3200|2400|1400}1300|1200 InputFile OutputRawFile 
[OPTIONS]\n\n"
-                "Options:\n", argv[0]);
-        for(i=0; i<num_opts-1; i++) {
-               if(long_options[i].has_arg == no_argument) {
-                       option_parameters="";
-               } else if (strcmp("ber", long_options[i].name) == 0) {
-                       option_parameters = " BER";
-               } else if (strcmp("startbit", long_options[i].name) == 0) {
-                       option_parameters = " startBit";
-               } else if (strcmp("endbit", long_options[i].name) == 0) {
-                       option_parameters = " endBit";
-               } else if (strcmp("berfile", long_options[i].name) == 0) {
-                       option_parameters = " berFileName";
-               } else if (strcmp("dump", long_options[i].name) == 0) {
-                       option_parameters = " dumpFilePrefix";
-               } else {
-                       option_parameters = " <UNDOCUMENTED parameter>";
-               }
-               fprintf(stderr, "\t--%s%s\n", long_options[i].name, 
option_parameters);
-       }
-       exit(1);
-}
diff --git a/gr-vocoder/lib/codec2/c2demo.c b/gr-vocoder/lib/codec2/c2demo.c
deleted file mode 100644
index 9cd11d4..0000000
--- a/gr-vocoder/lib/codec2/c2demo.c
+++ /dev/null
@@ -1,101 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: c2demo.c
-  AUTHOR......: David Rowe
-  DATE CREATED: 15/11/2010
-
-  Encodes and decodes a file of raw speech samples using Codec 2.
-  Demonstrates use of Codec 2 function API.
-
-  Note to convert a wave file to raw and vice-versa:
-
-    $ sox file.wav -r 8000 -s -2 file.raw
-    $ sox -r 8000 -s -2 file.raw file.wav
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2010 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#include "codec2.h"
-#include "sine.h"
-#include "dump.h"
-
-#include <stdio.h>
-#include <stdlib.h>
-#include <string.h>
-#include <errno.h>
-
-int main(int argc, char *argv[])
-{
-    struct CODEC2 *codec2;
-    FILE          *fin;
-    FILE          *fout;
-    short         *buf;
-    unsigned char *bits;
-    int            nsam, nbit, i, r;
-
-    for(i=0; i<10; i++) {
-        r = codec2_rand();
-        printf("[%d] r = %d\n", i, r);
-    }
-
-    if (argc != 3) {
-       printf("usage: %s InputRawSpeechFile OutputRawSpeechFile\n", argv[0]);
-       exit(1);
-    }
-
-    if ( (fin = fopen(argv[1],"rb")) == NULL ) {
-       fprintf(stderr, "Error opening input speech file: %s: %s.\n",
-         argv[1], strerror(errno));
-       exit(1);
-    }
-
-    if ( (fout = fopen(argv[2],"wb")) == NULL ) {
-       fprintf(stderr, "Error opening output speech file: %s: %s.\n",
-         argv[2], strerror(errno));
-       exit(1);
-    }
-
-    #ifdef DUMP
-    dump_on("c2demo");
-    #endif
-
-    /* Note only one set of Codec 2 states is required for an encoder
-       and decoder pair. */
-
-    codec2 = codec2_create(CODEC2_MODE_1300);
-    nsam = codec2_samples_per_frame(codec2);
-    buf = (short*)malloc(nsam*sizeof(short));
-    nbit = codec2_bits_per_frame(codec2);
-    bits = (unsigned char*)malloc(nbit*sizeof(char));
-
-    while(fread(buf, sizeof(short), nsam, fin) == (size_t)nsam) {
-       codec2_encode(codec2, bits, buf);
-       codec2_decode(codec2, buf, bits);
-       fwrite(buf, sizeof(short), nsam, fout);
-    }
-
-    free(buf);
-    free(bits);
-    codec2_destroy(codec2);
-
-    fclose(fin);
-    fclose(fout);
-
-    return 0;
-}
diff --git a/gr-vocoder/lib/codec2/c2enc.c b/gr-vocoder/lib/codec2/c2enc.c
deleted file mode 100644
index 1e2760a..0000000
--- a/gr-vocoder/lib/codec2/c2enc.c
+++ /dev/null
@@ -1,117 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: c2enc.c
-  AUTHOR......: David Rowe
-  DATE CREATED: 23/8/2010
-
-  Encodes a file of raw speech samples using codec2 and outputs a file
-  of bits.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2010 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#include "codec2.h"
-
-#include <stdio.h>
-#include <stdlib.h>
-#include <string.h>
-#include <errno.h>
-
-int main(int argc, char *argv[])
-{
-    int            mode;
-    void          *codec2;
-    FILE          *fin;
-    FILE          *fout;
-    short         *buf;
-    unsigned char *bits;
-    int            nsam, nbit, nbyte, gray;
-
-    if (argc < 4) {
-       printf("usage: c2enc 3200|2400|1600|1400|1300|1200 InputRawspeechFile 
OutputBitFile [--natural]\n");
-       printf("e.g    c2enc 1400 ../raw/hts1a.raw hts1a.c2\n");
-       printf("e.g    c2enc 1300 ../raw/hts1a.raw hts1a.c2 --natural\n");
-       exit(1);
-    }
-
-    if (strcmp(argv[1],"3200") == 0)
-       mode = CODEC2_MODE_3200;
-    else if (strcmp(argv[1],"2400") == 0)
-       mode = CODEC2_MODE_2400;
-    else if (strcmp(argv[1],"1600") == 0)
-       mode = CODEC2_MODE_1600;
-    else if (strcmp(argv[1],"1400") == 0)
-       mode = CODEC2_MODE_1400;
-    else if (strcmp(argv[1],"1300") == 0)
-       mode = CODEC2_MODE_1300;
-    else if (strcmp(argv[1],"1200") == 0)
-       mode = CODEC2_MODE_1200;
-    else {
-       fprintf(stderr, "Error in mode: %s.  Must be 3200, 2400, 1600, 1400, 
1300 or 1200\n", argv[1]);
-       exit(1);
-    }
-
-    if (strcmp(argv[2], "-")  == 0) fin = stdin;
-    else if ( (fin = fopen(argv[2],"rb")) == NULL ) {
-       fprintf(stderr, "Error opening input speech file: %s: %s.\n",
-         argv[2], strerror(errno));
-       exit(1);
-    }
-
-    if (strcmp(argv[3], "-") == 0) fout = stdout;
-    else if ( (fout = fopen(argv[3],"wb")) == NULL ) {
-       fprintf(stderr, "Error opening output compressed bit file: %s: %s.\n",
-         argv[3], strerror(errno));
-       exit(1);
-    }
-
-    codec2 = codec2_create(mode);
-    nsam = codec2_samples_per_frame(codec2);
-    nbit = codec2_bits_per_frame(codec2);
-    buf = (short*)malloc(nsam*sizeof(short));
-    nbyte = (nbit + 7) / 8;
-
-    bits = (unsigned char*)malloc(nbyte*sizeof(char));
-
-    if (argc == 5) {
-        if (strcmp(argv[4], "--natural") == 0)
-            gray = 0;
-        else
-            gray = 1;
-        codec2_set_natural_or_gray(codec2, gray);
-    }
-
-    while(fread(buf, sizeof(short), nsam, fin) == (size_t)nsam) {
-       codec2_encode(codec2, bits, buf);
-       fwrite(bits, sizeof(char), nbyte, fout);
-       // if this is in a pipeline, we probably don't want the usual
-        // buffering to occur
-        if (fout == stdout) fflush(stdout);
-        if (fin == stdin) fflush(stdin);
-    }
-
-    codec2_destroy(codec2);
-
-    free(buf);
-    free(bits);
-    fclose(fin);
-    fclose(fout);
-
-    return 0;
-}
diff --git a/gr-vocoder/lib/codec2/c2sim.c b/gr-vocoder/lib/codec2/c2sim.c
deleted file mode 100644
index e68f2ac..0000000
--- a/gr-vocoder/lib/codec2/c2sim.c
+++ /dev/null
@@ -1,934 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: c2sim.c
-  AUTHOR......: David Rowe
-  DATE CREATED: 20/8/2010
-
-  Codec2 simulation.  Combines encoder and decoder and allows
-  switching in and out various algorithms and quantisation steps. Used
-  for algorithm development.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2009 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#include <assert.h>
-#include <stdio.h>
-#include <stdlib.h>
-#include <string.h>
-#include <errno.h>
-#include <math.h>
-#include <unistd.h>
-#include <getopt.h>
-
-#include "defines.h"
-#include "sine.h"
-#include "nlp.h"
-#include "dump.h"
-#include "lpc.h"
-#include "lsp.h"
-#include "quantise.h"
-#include "phase.h"
-#include "postfilter.h"
-#include "interp.h"
-#include "ampexp.h"
-#include "phaseexp.h"
-
-void synth_one_frame(kiss_fft_cfg fft_inv_cfg, short buf[], MODEL *model, 
float Sn_[], float Pn[], int prede, float *de_mem, float gain);
-void print_help(const struct option *long_options, int num_opts, char* argv[]);
-
-
-/*---------------------------------------------------------------------------*\
-
-                               MAIN
-
-\*---------------------------------------------------------------------------*/
-
-int main(int argc, char *argv[])
-{
-    FILE *fout = NULL; /* output speech file                    */
-    FILE *fin;         /* input speech file                     */
-    short buf[N];      /* input/output buffer                   */
-    float Sn[M];       /* float input speech samples            */
-    float Sn_pre[M];   /* pre-emphasised input speech samples   */
-    COMP  Sw[FFT_ENC]; /* DFT of Sn[]                           */
-    kiss_fft_cfg  fft_fwd_cfg;
-    kiss_fft_cfg  fft_inv_cfg;
-    float w[M];                /* time domain hamming window            */
-    COMP  W[FFT_ENC];  /* DFT of w[]                            */
-    MODEL model;
-    float Pn[2*N];     /* trapezoidal synthesis window          */
-    float Sn_[2*N];    /* synthesised speech */
-    int   i;           /* loop variable                         */
-    int   frames;
-    float prev_Wo, prev__Wo, uq_Wo, prev_uq_Wo;
-    float pitch;
-    int   voiced1 = 0;
-    char  out_file[MAX_STR];
-    char  ampexp_arg[MAX_STR];
-    char  phaseexp_arg[MAX_STR];
-    float snr;
-    float sum_snr;
-
-    int lpc_model = 0, order = LPC_ORD;
-    int lsp = 0, lspd = 0, lspvq = 0;
-    int lspres = 0;
-    int lspdt = 0, lspdt_mode = LSPDT_ALL;
-    int dt = 0, lspjvm = 0, lspanssi = 0, lspjnd = 0, lspmel = 0;
-    int prede = 0;
-    float pre_mem = 0.0, de_mem = 0.0;
-    float ak[LPC_MAX];
-    COMP  Sw_[FFT_ENC];
-    COMP  Ew[FFT_ENC];
-
-    int phase0 = 0;
-    float ex_phase[MAX_AMP+1];
-
-    int   postfilt;
-    float bg_est;
-
-    int   hand_voicing = 0, phaseexp = 0, ampexp = 0, hi = 0, simlpcpf = 0;
-    int   lpcpf = 0;
-    FILE *fvoicing = 0;
-
-    MODEL prev_model, interp_model;
-    int decimate = 0;
-    float lsps[LPC_MAX];
-    float prev_lsps[LPC_MAX], prev_lsps_[LPC_MAX];
-    float lsps__prev[LPC_MAX];
-    float lsps__prev2[LPC_MAX];
-    float e, prev_e;
-    float ak_interp[LPC_MAX];
-    int   lsp_indexes[LPC_MAX];
-    float lsps_[LPC_MAX];
-    float Woe_[2];
-
-    void *nlp_states;
-    float hpf_states[2];
-    int   scalar_quant_Wo_e = 0;
-    int   vector_quant_Wo_e = 0;
-    int   dump_pitch_e = 0;
-    FILE *fjvm = NULL;
-    #ifdef DUMP
-    int   dump;
-    #endif
-    struct PEXP *pexp = NULL;
-    struct AEXP *aexp = NULL;
-    float gain = 1.0;
-
-    char* opt_string = "ho:";
-    struct option long_options[] = {
-        { "lpc", required_argument, &lpc_model, 1 },
-        { "lspjnd", no_argument, &lspjnd, 1 },
-        { "lspmel", no_argument, &lspmel, 1 },
-        { "lsp", no_argument, &lsp, 1 },
-        { "lspd", no_argument, &lspd, 1 },
-        { "lspvq", no_argument, &lspvq, 1 },
-        { "lspres", no_argument, &lspres, 1 },
-        #ifdef __EXPERIMENTAL__
-        { "lspdt", no_argument, &lspdt, 1 },
-        { "lspdt_mode", required_argument, NULL, 0 },
-        #endif
-        { "lspjvm", no_argument, &lspjvm, 1 },
-        #ifdef __EXPERIMENTAL__
-        { "lspanssi", no_argument, &lspanssi, 1 },
-        #endif
-        { "phase0", no_argument, &phase0, 1 },
-        { "phaseexp", required_argument, &phaseexp, 1 },
-        { "ampexp", required_argument, &ampexp, 1 },
-        { "postfilter", no_argument, &postfilt, 1 },
-        { "hand_voicing", required_argument, &hand_voicing, 1 },
-        { "dec", no_argument, &decimate, 1 },
-        { "dt", no_argument, &dt, 1 },
-        { "hi", no_argument, &hi, 1 },
-        { "simlpcpf", no_argument, &simlpcpf, 1 },
-        { "lpcpf", no_argument, &lpcpf, 1 },
-        { "prede", no_argument, &prede, 1 },
-        { "dump_pitch_e", required_argument, &dump_pitch_e, 1 },
-        { "sq_pitch_e", no_argument, &scalar_quant_Wo_e, 1 },
-        { "vq_pitch_e", no_argument, &vector_quant_Wo_e, 1 },
-        { "rate", required_argument, NULL, 0 },
-        { "gain", required_argument, NULL, 0 },
-        #ifdef DUMP
-        { "dump", required_argument, &dump, 1 },
-        #endif
-        { "help", no_argument, NULL, 'h' },
-        { NULL, no_argument, NULL, 0 }
-    };
-    int num_opts=sizeof(long_options)/sizeof(struct option);
-
-    for(i=0; i<M; i++) {
-       Sn[i] = 1.0;
-       Sn_pre[i] = 1.0;
-    }
-    for(i=0; i<2*N; i++)
-       Sn_[i] = 0;
-
-    prev_uq_Wo = prev_Wo = prev__Wo = TWO_PI/P_MAX;
-
-    prev_model.Wo = TWO_PI/P_MIN;
-    prev_model.L = floor(PI/prev_model.Wo);
-    for(i=1; i<=prev_model.L; i++) {
-       prev_model.A[i] = 0.0;
-       prev_model.phi[i] = 0.0;
-    }
-    for(i=1; i<=MAX_AMP; i++) {
-       //ex_phase[i] = (PI/3)*(float)rand()/RAND_MAX;
-       ex_phase[i] = 0.0;
-    }
-    for(i=0; i<LPC_ORD; i++) {
-       lsps_[i] = prev_lsps[i] = prev_lsps_[i] = i*PI/(LPC_ORD+1);
-       lsps__prev[i] = lsps__prev2[i] = i*PI/(LPC_ORD+1);
-    }
-    e = prev_e = 1;
-    hpf_states[0] = hpf_states[1] = 0.0;
-
-    nlp_states = nlp_create(M);
-
-    if (argc < 2) {
-        print_help(long_options, num_opts, argv);
-    }
-
-    /*----------------------------------------------------------------*\
-
-                     Interpret Command Line Arguments
-
-    \*----------------------------------------------------------------*/
-
-    while(1) {
-        int option_index = 0;
-        int opt = getopt_long(argc, argv, opt_string,
-                    long_options, &option_index);
-        if (opt == -1)
-            break;
-        switch (opt) {
-         case 0:
-            if(strcmp(long_options[option_index].name, "lpc") == 0) {
-                order = atoi(optarg);
-                if((order < 4) || (order > 20)) {
-                    fprintf(stderr, "Error in LPC order: %s\n", optarg);
-                    exit(1);
-                }
-            #ifdef DUMP
-            } else if(strcmp(long_options[option_index].name, "dump") == 0) {
-                if (dump)
-                   dump_on(optarg);
-            #endif
-            } else if(strcmp(long_options[option_index].name, "lsp") == 0
-                  || strcmp(long_options[option_index].name, "lspd") == 0
-                  || strcmp(long_options[option_index].name, "lspvq") == 0) {
-               assert(order == LPC_ORD);
-            } else if(strcmp(long_options[option_index].name, "lspdt_mode") == 
0) {
-               if (strcmp(optarg,"all") == 0)
-                   lspdt_mode = LSPDT_ALL;
-               else if (strcmp(optarg,"low") == 0)
-                   lspdt_mode = LSPDT_LOW;
-               else if (strcmp(optarg,"high") == 0)
-                   lspdt_mode = LSPDT_HIGH;
-               else {
-                   fprintf(stderr, "Error in lspdt_mode: %s\n", optarg);
-                   exit(1);
-               }
-            } else if(strcmp(long_options[option_index].name, "hand_voicing") 
== 0) {
-               if ((fvoicing = fopen(optarg,"rt")) == NULL) {
-                   fprintf(stderr, "Error opening voicing file: %s: %s.\n",
-                       optarg, strerror(errno));
-                    exit(1);
-                }
-           } else if(strcmp(long_options[option_index].name, "dump_pitch_e") 
== 0) {
-               if ((fjvm = fopen(optarg,"wt")) == NULL) {
-                   fprintf(stderr, "Error opening pitch & energy dump file: 
%s: %s.\n",
-                       optarg, strerror(errno));
-                    exit(1);
-                }
-           } else if(strcmp(long_options[option_index].name, "phaseexp") == 0) 
{
-               strcpy(phaseexp_arg, optarg);
-           } else if(strcmp(long_options[option_index].name, "ampexp") == 0) {
-               strcpy(ampexp_arg, optarg);
-           } else if(strcmp(long_options[option_index].name, "gain") == 0) {
-               gain = atof(optarg);
-           } else if(strcmp(long_options[option_index].name, "rate") == 0) {
-                if(strcmp(optarg,"3200") == 0) {
-                   lpc_model = 1; order = 10;
-                   scalar_quant_Wo_e = 1;
-                   lspd = 1;
-                   phase0 = 1;
-                   postfilt = 1;
-                   decimate = 1;
-                   lpcpf = 1;
-               } else if(strcmp(optarg,"2400") == 0) {
-                   lpc_model = 1; order = 10;
-                   vector_quant_Wo_e = 1;
-                   lsp = 1;
-                   phase0 = 1;
-                   postfilt = 1;
-                   decimate = 1;
-                   lpcpf = 1;
-               } else if(strcmp(optarg,"1400") == 0) {
-                   lpc_model = 1; order = 10;
-                   vector_quant_Wo_e = 1;
-                   lsp = 1; lspdt = 1;
-                   phase0 = 1;
-                   postfilt = 1;
-                   decimate = 1;
-                   dt = 1;
-                   lpcpf = 1;
-                } else if(strcmp(optarg,"1200") == 0) {
-                   lpc_model = 1; order = 10;
-                   scalar_quant_Wo_e = 1;
-                   lspjvm = 1; lspdt = 1;
-                   phase0 = 1;
-                   postfilt = 1;
-                   decimate = 1;
-                   dt = 1;
-                   lpcpf = 1;
-                } else {
-                    fprintf(stderr, "Error: invalid output rate %s\n", optarg);
-                    exit(1);
-                }
-            }
-            break;
-
-         case 'h':
-            print_help(long_options, num_opts, argv);
-            break;
-
-         case 'o':
-            if (strcmp(optarg, "-") == 0) fout = stdout;
-            else if ((fout = fopen(optarg,"wb")) == NULL) {
-               fprintf(stderr, "Error opening output speech file: %s: %s.\n",
-                   optarg, strerror(errno));
-               exit(1);
-            }
-            strcpy(out_file,optarg);
-            break;
-
-         default:
-            /* This will never be reached */
-            break;
-        }
-    }
-
-    /* Input file */
-
-     if ((fin = fopen(argv[optind],"rb")) == NULL) {
-       fprintf(stderr, "Error opening input speech file: %s: %s.\n",
-               argv[optind], strerror(errno));
-       exit(1);
-    }
-
-    ex_phase[0] = 0;
-    bg_est = 0.0;
-    Woe_[0] = Woe_[1] = 1.0;
-
-    /*
-      printf("lspd: %d lspdt: %d lspdt_mode: %d  phase0: %d postfilt: %d "
-          "decimate: %d dt: %d\n",lspd,lspdt,lspdt_mode,phase0,postfilt,
-          decimate,dt);
-    */
-
-    /* Initialise 
------------------------------------------------------------*/
-
-    fft_fwd_cfg = kiss_fft_alloc(FFT_ENC, 0, NULL, NULL); /* fwd FFT,used in 
several places   */
-    fft_inv_cfg = kiss_fft_alloc(FFT_DEC, 1, NULL, NULL); /* inverse FFT, used 
just for synth */
-    make_analysis_window(fft_fwd_cfg, w, W);
-    make_synthesis_window(Pn);
-    quantise_init();
-    if (phaseexp)
-       pexp = phase_experiment_create();
-    if (ampexp)
-       aexp = amp_experiment_create();
-
-    /*----------------------------------------------------------------*\
-
-                            Main Loop
-
-    \*----------------------------------------------------------------*/
-
-    frames = 0;
-    sum_snr = 0;
-    while(fread(buf,sizeof(short),N,fin)) {
-       frames++;
-       //printf("frame: %d ", frames);
-
-       /* Read input speech */
-
-       for(i=0; i<M-N; i++) {
-           Sn[i] = Sn[i+N];
-           Sn_pre[i] = Sn_pre[i+N];
-       }
-       for(i=0; i<N; i++)
-           Sn[i+M-N] = buf[i];
-
-       pre_emp(&Sn_pre[M-N], &Sn[M-N], &pre_mem, N);
-
-
-       /*------------------------------------------------------------*\
-
-                      Estimate Sinusoidal Model Parameters
-
-       \*------------------------------------------------------------*/
-
-       nlp(nlp_states,Sn,N,P_MIN,P_MAX,&pitch,Sw,W,&prev_uq_Wo);
-       model.Wo = TWO_PI/pitch;
-
-       dft_speech(fft_fwd_cfg, Sw, Sn, w);
-       two_stage_pitch_refinement(&model, Sw);
-       estimate_amplitudes(&model, Sw, W, 1);
-       uq_Wo = model.Wo;
-
-        #ifdef DUMP
-       dump_Sn(Sn); dump_Sw(Sw); dump_model(&model);
-        #endif
-
-       if (ampexp)
-           amp_experiment(aexp, &model, ampexp_arg);
-
-       if (phaseexp) {
-            #ifdef DUMP
-           dump_phase(&model.phi[0], model.L);
-            #endif
-           phase_experiment(pexp, &model, phaseexp_arg);
-            #ifdef DUMP
-           dump_phase_(&model.phi[0], model.L);
-            #endif
-       }
-
-       if (hi) {
-           int m;
-           for(m=1; m<model.L/2; m++)
-               model.A[m] = 0.0;
-           for(m=3*model.L/4; m<=model.L; m++)
-               model.A[m] = 0.0;
-       }
-
-       /*------------------------------------------------------------*\
-
-                            Zero-phase modelling
-
-       \*------------------------------------------------------------*/
-
-       if (phase0) {
-           float Wn[M];                        /* windowed speech samples */
-           float Rk[LPC_MAX+1];                /* autocorrelation coeffs  */
-
-            #ifdef DUMP
-           dump_phase(&model.phi[0], model.L);
-            #endif
-
-           /* find aks here, these are overwritten if LPC modelling is enabled 
*/
-
-           if (prede) {
-               for(i=0; i<M; i++)
-                   Wn[i] = Sn_pre[i]*w[i];
-           }
-           else {
-
-               for(i=0; i<M; i++)
-                   Wn[i] = Sn[i]*w[i];
-           }
-           autocorrelate(Wn,Rk,M,order);
-           levinson_durbin(Rk,ak,order);
-
-           /* determine voicing */
-
-           snr = est_voicing_mbe(&model, Sw, W, Sw_, Ew, prev_uq_Wo);
-
-           if (dump_pitch_e)
-               fprintf(fjvm, "%f %f %d ", model.Wo, snr, model.voiced);
-
-           //printf("snr %3.2f v: %d Wo: %f prev_Wo: %f\n", snr, model.voiced,
-           //     model.Wo, prev_uq_Wo);
-            #ifdef DUMP
-           dump_Sw_(Sw_);
-           dump_Ew(Ew);
-           dump_snr(snr);
-            #endif
-
-           /* just to make sure we are not cheating - kill all phases */
-
-           for(i=0; i<=MAX_AMP; i++)
-               model.phi[i] = 0;
-
-           if (hand_voicing) {
-               fscanf(fvoicing,"%d\n",&model.voiced);
-           }
-       }
-
-       /*------------------------------------------------------------*\
-
-               LPC model amplitudes and LSP quantisation
-
-       \*------------------------------------------------------------*/
-
-       if (lpc_model) {
-
-           if (prede)
-               e = speech_to_uq_lsps(lsps, ak, Sn_pre, w, order);
-           else
-               e = speech_to_uq_lsps(lsps, ak, Sn, w, order);
-
-            #ifdef DUMP
-           dump_ak(ak, LPC_ORD);
-            #endif
-
-           /* tracking down -ve energy values with BW expansion */
-           /*
-           if (e < 0.0) {
-               int i;
-               FILE*f=fopen("x.txt","wt");
-               for(i=0; i<M; i++)
-                   fprintf(f,"%f\n", Sn[i]);
-               fclose(f);
-               printf("e = %f frames = %d\n", e, frames);
-               for(i=0; i<order; i++)
-                   printf("%f ", ak[i]);
-               exit(0);
-           }
-           */
-
-           if (dump_pitch_e)
-               fprintf(fjvm, "%f\n", e);
-
-            #ifdef DUMP
-           /* dump order is different if we are decimating */
-           if (!decimate)
-               dump_lsp(lsps);
-           for(i=0; i<LPC_ORD; i++)
-               prev_lsps[i] = lsps[i];
-            #endif
-
-           /* various LSP quantisation schemes */
-
-           if (lsp) {
-               encode_lsps_scalar(lsp_indexes, lsps, LPC_ORD);
-               decode_lsps_scalar(lsps_, lsp_indexes, LPC_ORD);
-               bw_expand_lsps(lsps_, LPC_ORD, 50.0, 100.0);
-               lsp_to_lpc(lsps_, ak, LPC_ORD);
-           }
-
-           if (lspd) {
-               encode_lspds_scalar(lsp_indexes, lsps, LPC_ORD);
-               decode_lspds_scalar(lsps_, lsp_indexes, LPC_ORD);
-               lsp_to_lpc(lsps_, ak, LPC_ORD);
-           }
-
-#ifdef __EXPERIMENTAL__
-           if (lspvq) {
-               lspvq_quantise(lsps, lsps_, LPC_ORD);
-               bw_expand_lsps(lsps_, LPC_ORD, 50.0, 100.0);
-               lsp_to_lpc(lsps_, ak, LPC_ORD);
-           }
-#endif
-
-           if (lspjvm) {
-               /* Jean-Marc's multi-stage, split VQ */
-               lspjvm_quantise(lsps, lsps_, LPC_ORD);
-               {
-                   float lsps_bw[LPC_ORD];
-                   memcpy(lsps_bw, lsps_, sizeof(float)*LPC_ORD);
-                   bw_expand_lsps(lsps_bw, LPC_ORD, 50.0, 100.0);
-                   lsp_to_lpc(lsps_bw, ak, LPC_ORD);
-               }
-           }
-
-#ifdef __EXPERIMENTAL__
-           if (lspanssi) {
-               /*  multi-stage VQ from Anssi Ramo OH3GDD */
-
-               lspanssi_quantise(lsps, lsps_, LPC_ORD, 5);
-               bw_expand_lsps(lsps_, LPC_ORD, 50.0, 100.0);
-               lsp_to_lpc(lsps_, ak, LPC_ORD);
-           }
-#endif
-
-           /* experimenting with non-linear LSP spacing to see if
-              it's just noticable */
-
-           if (lspjnd) {
-               for(i=0; i<LPC_ORD; i++)
-                   lsps_[i] = lsps[i];
-               locate_lsps_jnd_steps(lsps_, LPC_ORD);
-               lsp_to_lpc(lsps_, ak, LPC_ORD);
-           }
-
-           /* Another experiment with non-linear LSP spacing, this
-              time using a scaled version of mel frequency axis
-              warping.  The scaling is such that the integer output
-              can be directly sent over the channel.
-           */
-
-           if (lspmel) {
-               float f, f_;
-               int mel[LPC_ORD];
-
-               for(i=0; i<LPC_ORD; i++) {
-                   f = (4000.0/PI)*lsps[i];
-                   mel[i] = floor(100.0*log10(1.0 + f/700.0) + 0.5);
-               }
-
-               for(i=1; i<LPC_ORD; i++) {
-                   if (mel[i] == mel[i-1])
-                       mel[i]++;
-               }
-
-                #ifdef DUMP
-                dump_mel(mel);
-                #endif
-
-               for(i=0; i<LPC_ORD; i++) {
-                   f_ = 700.0*( pow(10.0, (float)mel[i]/100.0) - 1.0);
-                   lsps_[i] = f_*(PI/4000.0);
-               }
-                /*
-                for(i=5; i<10; i++) {
-                   lsps_[i] = lsps[i];
-               }
-                */
-
-               lsp_to_lpc(lsps_, ak, LPC_ORD);
-           }
-
-           /* we need lsp__prev[] for lspdt and decimate.  If no
-              other LSP quantisation is used we use original LSPs as
-              there is no quantised version available. TODO: this is
-              mess, we should have structures and standard
-              nomenclature for previous frames values, lsp_[]
-              shouldn't be overwritten as we may want to dump it for
-              analysis.  Re-design some time.
-           */
-
-           if (!lsp && !lspd && !lspvq && !lspres && !lspjvm && !lspanssi && 
!lspjnd && !lspmel)
-               for(i=0; i<LPC_ORD; i++)
-                   lsps_[i] = lsps[i];
-
-           /* Odd frames are generated by quantising the difference
-              between the previous frames LSPs and this frames */
-
-#ifdef __EXPERIMENTAL__
-           if (lspdt && !decimate) {
-               if (frames%2) {
-                   lspdt_quantise(lsps, lsps_, lsps__prev, lspdt_mode);
-                   bw_expand_lsps(lsps_, LPC_ORD, 50.0, 100.0);
-                   lsp_to_lpc(lsps_, ak, LPC_ORD);
-               }
-               for(i=0; i<LPC_ORD; i++)
-                   lsps__prev[i] = lsps_[i];
-           }
-#endif
-
-           /*
-              When decimation is enabled we only send LSPs to the
-              decoder on odd frames.  In the Delta-time LSPs case we
-              encode every second odd frame (i.e. every 3rd frame out
-              of 4) by quantising the difference between the 1st
-              frames LSPs and the 3rd frames:
-
-              10ms, frame 1: discard (interpolate at decoder)
-              20ms, frame 2: send "full" LSP frame
-              30ms, frame 3: discard (interpolate at decoder)
-              40ms, frame 4: send LSPs differences between frame 4 and frame 2
-           */
-
-           if (lspdt && decimate) {
-               /* print previous LSPs to make sure we are using the right set 
*/
-               if ((frames%4) == 0) {
-                   //printf("  lspdt ");
-                    //#define LSPDT
-                    #ifdef LSPDT
-                   lspdt_quantise(lsps, lsps_, lsps__prev2, lspdt_mode);
-                    #else
-                   for(i=0; i<LPC_ORD; i++)
-                       lsps_[i] = lsps__prev2[i];
-                    #endif
-                   bw_expand_lsps(lsps_, LPC_ORD, 50.0, 100.0);
-                   lsp_to_lpc(lsps_, ak, LPC_ORD);
-               }
-
-               for(i=0; i<LPC_ORD; i++) {
-                   lsps__prev2[i] = lsps__prev[i];
-                   lsps__prev[i] = lsps_[i];
-               }
-           }
-            #ifdef DUMP
-           /* if using decimated (20ms) frames we dump interp
-              LSPs below */
-           if (!decimate)
-               dump_lsp_(lsps_);
-            #endif
-
-           if (scalar_quant_Wo_e) {
-
-               e = decode_energy(encode_energy(e));
-
-               if (!decimate) {
-                   /* we send params every 10ms, delta-time every 20ms */
-                   if (dt && (frames % 2))
-                       model.Wo = decode_Wo_dt(encode_Wo_dt(model.Wo, 
prev_Wo),prev_Wo);
-                   else
-                       model.Wo = decode_Wo(encode_Wo(model.Wo));
-               }
-
-               if (decimate) {
-                   /* we send params every 20ms */
-                   if (dt && ((frames % 4) == 0)) {
-                       /* delta-time every 40ms */
-                       model.Wo = decode_Wo_dt(encode_Wo_dt(model.Wo, 
prev__Wo),prev__Wo);
-                   }
-                   else
-                       model.Wo = decode_Wo(encode_Wo(model.Wo));
-               }
-
-               model.L  = PI/model.Wo; /* if we quantise Wo re-compute L */
-           }
-
-           if (vector_quant_Wo_e) {
-
-               /* JVM's experimental joint Wo & LPC energy quantiser */
-
-               //printf("\nWo %f e %f\n", model.Wo, e);
-               quantise_WoE(&model, &e, Woe_);
-               //printf("Wo %f e %f\n", model.Wo, e);
-
-           }
-
-           aks_to_M2(fft_fwd_cfg, ak, order, &model, e, &snr, 1, simlpcpf, 
lpcpf, 1, LPCPF_BETA, LPCPF_GAMMA);
-           apply_lpc_correction(&model);
-
-            #ifdef DUMP
-           dump_ak_(ak, LPC_ORD);
-            #endif
-
-           /* note SNR on interpolated frames can't be measured properly
-              by comparing Am as L has changed.  We can dump interp lsps
-              and compare them,
-           */
-            #ifdef DUMP
-           dump_lpc_snr(snr);
-            #endif
-           sum_snr += snr;
-            #ifdef DUMP
-           dump_quantised_model(&model);
-            #endif
-       }
-
-       /*------------------------------------------------------------*\
-
-                         Decimation to 20ms frame rate
-
-       \*------------------------------------------------------------*/
-
-       if (decimate) {
-           float lsps_interp[LPC_ORD];
-
-           if (!phase0) {
-               printf("needs --phase0 to resample phase for interpolated 
Wo\n");
-               exit(0);
-           }
-           if (!lpc_model) {
-               printf("needs --lpc 10 to resample amplitudes\n");
-               exit(0);
-           }
-
-           /*
-              Each 20ms we synthesise two 10ms frames:
-
-              frame 1: discard except for voicing bit
-              frame 2: interpolate frame 1 LSPs from frame 2 and frame 0
-                       synthesise frame 1 and frame 2 speech
-              frame 3: discard except for voicing bit
-              frame 4: interpolate frame 3 LSPs from frame 4 and frame 2
-                       synthesise frame 3 and frame 4 speech
-           */
-
-           if ((frames%2) == 0) {
-               //printf("frame: %d\n", frames);
-
-               /* decode interpolated frame */
-
-               interp_model.voiced = voiced1;
-
-               interpolate_lsp(fft_fwd_cfg, &interp_model, &prev_model, &model,
-                               prev_lsps_, prev_e, lsps_, e, ak_interp, 
lsps_interp);
-               apply_lpc_correction(&interp_model);
-
-               /* used to compare with c2enc/c2dec version
-
-               printf("  Wo: %1.5f  L: %d v1: %d prev_e: %f\n",
-                      interp_model.Wo, interp_model.L, interp_model.voiced, 
prev_e);
-               printf("  lsps_interp: ");
-               for(i=0; i<LPC_ORD; i++)
-                   printf("%5.3f  ", lsps_interp[i]);
-               printf("\n  A..........: ");
-               for(i=0; i<10; i++)
-                   printf("%5.3f  ",interp_model.A[i]);
-
-               printf("\n  Wo: %1.5f  L: %d e: %3.2f v2: %d\n",
-                      model.Wo, model.L, e, model.voiced);
-               printf("  lsps_......: ");
-               for(i=0; i<LPC_ORD; i++)
-                   printf("%5.3f  ", lsps_[i]);
-               printf("\n  A..........: ");
-               for(i=0; i<10; i++)
-                   printf("%5.3f  ",model.A[i]);
-               printf("\n");
-               */
-
-                #ifdef DUMP
-               /* do dumping here so we get lsp dump file in correct order */
-               dump_lsp(prev_lsps);
-               dump_lsp(lsps_interp);
-               dump_lsp(lsps);
-               dump_lsp(lsps_);
-                #endif
-
-               if (phase0)
-                   phase_synth_zero_order(fft_fwd_cfg, &interp_model, 
ak_interp, ex_phase,
-                                          order);
-               if (postfilt)
-                   postfilter(&interp_model, &bg_est);
-               synth_one_frame(fft_inv_cfg, buf, &interp_model, Sn_, Pn, 
prede, &de_mem, gain);
-               //printf("  buf[0] %d\n", buf[0]);
-               if (fout != NULL)
-                   fwrite(buf,sizeof(short),N,fout);
-
-               /* decode this frame */
-
-               if (phase0)
-                   phase_synth_zero_order(fft_fwd_cfg, &model, ak, ex_phase, 
order);
-               if (postfilt)
-                   postfilter(&model, &bg_est);
-               synth_one_frame(fft_inv_cfg, buf, &model, Sn_, Pn, prede, 
&de_mem, gain);
-               //printf("  buf[0] %d\n", buf[0]);
-               if (fout != NULL)
-                   fwrite(buf,sizeof(short),N,fout);
-
-               /* update states for next time */
-
-               prev_model = model;
-               for(i=0; i<LPC_ORD; i++)
-                   prev_lsps_[i] = lsps_[i];
-               prev_e = e;
-           }
-           else {
-               voiced1 = model.voiced;
-           }
-       }
-       else {
-           /* no decimation - sythesise each 10ms frame immediately */
-
-           if (phase0)
-               phase_synth_zero_order(fft_fwd_cfg, &model, ak, ex_phase, 
order);
-
-           if (postfilt)
-               postfilter(&model, &bg_est);
-           synth_one_frame(fft_inv_cfg, buf, &model, Sn_, Pn, prede, &de_mem, 
gain);
-           if (fout != NULL) fwrite(buf,sizeof(short),N,fout);
-       }
-
-       prev__Wo = prev_Wo;
-       prev_Wo = model.Wo;
-       prev_uq_Wo = uq_Wo;
-       //if (frames == 8) {
-       //    exit(0);
-       //}
-    }
-
-    /*----------------------------------------------------------------*\
-
-                            End Main Loop
-
-    \*----------------------------------------------------------------*/
-
-    fclose(fin);
-
-    if (fout != NULL)
-       fclose(fout);
-
-    if (lpc_model)
-       printf("SNR av = %5.2f dB\n", sum_snr/frames);
-
-    if (phaseexp)
-       phase_experiment_destroy(pexp);
-    if (ampexp)
-       amp_experiment_destroy(aexp);
-    #ifdef DUMP
-    if (dump)
-       dump_off();
-    #endif
-
-    if (hand_voicing)
-       fclose(fvoicing);
-
-    nlp_destroy(nlp_states);
-
-    return 0;
-}
-
-void synth_one_frame(kiss_fft_cfg fft_inv_cfg, short buf[], MODEL *model, 
float Sn_[], float Pn[], int prede, float *de_mem, float gain)
-{
-    int     i;
-
-    synthesise(fft_inv_cfg, Sn_, model, Pn, 1);
-    if (prede)
-        de_emp(Sn_, Sn_, de_mem, N);
-
-    for(i=0; i<N; i++) {
-       Sn_[i] *= gain;
-       if (Sn_[i] > 32767.0)
-           buf[i] = 32767;
-       else if (Sn_[i] < -32767.0)
-           buf[i] = -32767;
-       else
-           buf[i] = Sn_[i];
-    }
-
-}
-
-void print_help(const struct option* long_options, int num_opts, char* argv[])
-{
-       int i;
-       char *option_parameters;
-
-       fprintf(stderr, "\nCodec2 - low bit rate speech codec - Simulation 
Program\n"
-               "\thttp://rowetel.com/codec2.html\n\n";
-               "usage: %s [OPTIONS] <InputFile>\n\n"
-                "Options:\n"
-                "\t-o <OutputFile>\n", argv[0]);
-        for(i=0; i<num_opts-1; i++) {
-               if(long_options[i].has_arg == no_argument) {
-                       option_parameters="";
-               } else if (strcmp("lpc", long_options[i].name) == 0) {
-                       option_parameters = " <Order>";
-               } else if (strcmp("lspdt_mode", long_options[i].name) == 0) {
-                       option_parameters = " <all|high|low>";
-               } else if (strcmp("hand_voicing", long_options[i].name) == 0) {
-                       option_parameters = " <VoicingFile>";
-               } else if (strcmp("dump_pitch_e", long_options[i].name) == 0) {
-                       option_parameters = " <Dump File>";
-               } else if (strcmp("rate", long_options[i].name) == 0) {
-                       option_parameters = " <4800|2400|1400|1200>";
-               } else if (strcmp("dump", long_options[i].name) == 0) {
-                       option_parameters = " <DumpFilePrefix>";
-               } else {
-                       option_parameters = " <UNDOCUMENTED parameter>";
-               }
-               fprintf(stderr, "\t--%s%s\n", long_options[i].name, 
option_parameters);
-       }
-       exit(1);
-}
diff --git a/gr-vocoder/lib/codec2/codebook/dlsp1.txt 
b/gr-vocoder/lib/codec2/codebook/dlsp1.txt
deleted file mode 100644
index 058d048..0000000
--- a/gr-vocoder/lib/codec2/codebook/dlsp1.txt
+++ /dev/null
@@ -1,35 +0,0 @@
-1 32
-25
-50
-75
-100
-125
-150
-175
-200
-225
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-750
-775
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-
-
diff --git a/gr-vocoder/lib/codec2/codebook/dlsp10.txt 
b/gr-vocoder/lib/codec2/codebook/dlsp10.txt
deleted file mode 100644
index 058d048..0000000
--- a/gr-vocoder/lib/codec2/codebook/dlsp10.txt
+++ /dev/null
@@ -1,35 +0,0 @@
-1 32
-25
-50
-75
-100
-125
-150
-175
-200
-225
-250
-275
-300
-325
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-400
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-525
-550
-575
-600
-625
-650
-675
-700
-725
-750
-775
-800
-
-
diff --git a/gr-vocoder/lib/codec2/codebook/dlsp2.txt 
b/gr-vocoder/lib/codec2/codebook/dlsp2.txt
deleted file mode 100644
index 058d048..0000000
--- a/gr-vocoder/lib/codec2/codebook/dlsp2.txt
+++ /dev/null
@@ -1,35 +0,0 @@
-1 32
-25
-50
-75
-100
-125
-150
-175
-200
-225
-250
-275
-300
-325
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-550
-575
-600
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-650
-675
-700
-725
-750
-775
-800
-
-
diff --git a/gr-vocoder/lib/codec2/codebook/dlsp3.txt 
b/gr-vocoder/lib/codec2/codebook/dlsp3.txt
deleted file mode 100644
index 058d048..0000000
--- a/gr-vocoder/lib/codec2/codebook/dlsp3.txt
+++ /dev/null
@@ -1,35 +0,0 @@
-1 32
-25
-50
-75
-100
-125
-150
-175
-200
-225
-250
-275
-300
-325
-350
-375
-400
-425
-450
-475
-500
-525
-550
-575
-600
-625
-650
-675
-700
-725
-750
-775
-800
-
-
diff --git a/gr-vocoder/lib/codec2/codebook/dlsp4.txt 
b/gr-vocoder/lib/codec2/codebook/dlsp4.txt
deleted file mode 100644
index 4a5e990..0000000
--- a/gr-vocoder/lib/codec2/codebook/dlsp4.txt
+++ /dev/null
@@ -1,35 +0,0 @@
-1 32
-25
-50
-75
-100
-125
-150
-175
-200
-250
-300
-350
-400
-450
-500
-550
-600
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-700
-750
-800
-850
-900
-950
-1000
-1050
-1100
-1150
-1200
-1250
-1300
-1350
-1400
-
-
diff --git a/gr-vocoder/lib/codec2/codebook/dlsp5.txt 
b/gr-vocoder/lib/codec2/codebook/dlsp5.txt
deleted file mode 100644
index 4a5e990..0000000
--- a/gr-vocoder/lib/codec2/codebook/dlsp5.txt
+++ /dev/null
@@ -1,35 +0,0 @@
-1 32
-25
-50
-75
-100
-125
-150
-175
-200
-250
-300
-350
-400
-450
-500
-550
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-700
-750
-800
-850
-900
-950
-1000
-1050
-1100
-1150
-1200
-1250
-1300
-1350
-1400
-
-
diff --git a/gr-vocoder/lib/codec2/codebook/dlsp6.txt 
b/gr-vocoder/lib/codec2/codebook/dlsp6.txt
deleted file mode 100644
index 4a5e990..0000000
--- a/gr-vocoder/lib/codec2/codebook/dlsp6.txt
+++ /dev/null
@@ -1,35 +0,0 @@
-1 32
-25
-50
-75
-100
-125
-150
-175
-200
-250
-300
-350
-400
-450
-500
-550
-600
-650
-700
-750
-800
-850
-900
-950
-1000
-1050
-1100
-1150
-1200
-1250
-1300
-1350
-1400
-
-
diff --git a/gr-vocoder/lib/codec2/codebook/dlsp7.txt 
b/gr-vocoder/lib/codec2/codebook/dlsp7.txt
deleted file mode 100644
index 058d048..0000000
--- a/gr-vocoder/lib/codec2/codebook/dlsp7.txt
+++ /dev/null
@@ -1,35 +0,0 @@
-1 32
-25
-50
-75
-100
-125
-150
-175
-200
-225
-250
-275
-300
-325
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-450
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-500
-525
-550
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-600
-625
-650
-675
-700
-725
-750
-775
-800
-
-
diff --git a/gr-vocoder/lib/codec2/codebook/dlsp8.txt 
b/gr-vocoder/lib/codec2/codebook/dlsp8.txt
deleted file mode 100644
index 058d048..0000000
--- a/gr-vocoder/lib/codec2/codebook/dlsp8.txt
+++ /dev/null
@@ -1,35 +0,0 @@
-1 32
-25
-50
-75
-100
-125
-150
-175
-200
-225
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-700
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-750
-775
-800
-
-
diff --git a/gr-vocoder/lib/codec2/codebook/dlsp9.txt 
b/gr-vocoder/lib/codec2/codebook/dlsp9.txt
deleted file mode 100644
index 058d048..0000000
--- a/gr-vocoder/lib/codec2/codebook/dlsp9.txt
+++ /dev/null
@@ -1,35 +0,0 @@
-1 32
-25
-50
-75
-100
-125
-150
-175
-200
-225
-250
-275
-300
-325
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-375
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-550
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-600
-625
-650
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-700
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-750
-775
-800
-
-
diff --git a/gr-vocoder/lib/codec2/codebook/gecb.txt 
b/gr-vocoder/lib/codec2/codebook/gecb.txt
deleted file mode 100644
index bd3bb08..0000000
--- a/gr-vocoder/lib/codec2/codebook/gecb.txt
+++ /dev/null
@@ -1,257 +0,0 @@
-2 256
-2.709998 12.018395
-0.046750 -2.738813
-0.120993 8.388947
--1.580275 -0.892307
-1.193065 -1.915609
-0.187101 -3.276788
-0.332251 -7.664550
--1.479436 31.246122
-1.527612 27.709463
--0.524379 5.250122
-0.553330 7.438797
--0.843451 -1.952987
-2.263885 8.610286
-0.143143 2.365493
-0.616506 1.284268
--1.711327 22.096672
-1.008128 17.396519
--0.106718 1.418905
--0.136246 14.273605
--1.709087 -20.531881
-1.657866 -3.391068
-0.138049 -4.957845
-0.536729 -1.943748
-0.196307 36.851948
-1.272479 22.556494
--0.670219 -1.906045
-0.382092 6.401132
--0.756911 -4.901017
-1.829313 4.613800
-0.318794 0.736830
-0.612815 -2.075045
--0.410151 24.787077
-1.776016 13.190924
-0.106457 -0.104492
-0.192206 10.183844
--1.824423 -7.715654
-0.931346 4.348355
-0.308813 -4.086001
-0.397143 -11.808859
--0.048715 41.227314
-0.877342 35.850311
--0.759794 0.476634
-0.978593 7.674673
--1.195056 3.038826
-2.639894 -3.411063
-0.191127 3.603507
-0.402932 1.084298
--2.152022 18.107616
-1.546802 8.322713
--0.143089 -4.075922
--0.150142 5.866741
--1.408444 -3.250696
-1.566148 -10.413164
-0.178171 -10.226697
-0.362164 -0.028556
--0.070125 24.390722
-0.594752 17.482765
--0.286980 -6.904069
-0.464818 10.205451
--1.006841 -14.357209
-2.329569 -3.691613
-0.335745 2.407139
-1.019658 -3.155647
--1.259455 7.991899
-2.383695 19.680567
--0.094947 -2.413742
-0.209330 6.664768
--2.221034 1.379860
-1.292387 2.046333
-0.243626 -0.890741
-0.428773 -7.193658
--1.113744 41.341354
-2.609799 31.140514
--0.446468 2.534188
-0.490104 4.627575
--1.117226 -3.241744
-1.791562 8.414926
-0.156012 0.183336
-0.532447 3.154545
--0.764484 18.513958
-0.952395 11.771298
--0.332567 0.346987
-0.202165 14.716752
--2.129240 -15.558954
-1.353583 -1.926790
--0.010963 -16.336386
-0.399053 -2.790569
-0.750657 31.148336
-0.655743 24.481859
--0.453210 -0.735879
-0.286900 6.546703
--0.715673 -12.357815
-1.548488 3.872171
-0.271874 0.802339
-0.502073 -4.854850
--0.497037 17.761904
-1.191161 13.954446
-0.015630 1.331566
-0.341867 8.935369
--2.316009 -5.395058
-0.758610 1.964505
-0.241320 -3.237686
-0.267151 -11.234388
--0.273126 32.624771
-1.753523 40.431995
--0.784011 3.045757
-0.705987 5.661178
--1.386400 1.353557
-2.376458 1.674851
-0.242973 4.732178
-0.491227 0.354061
--1.606762 8.658955
-1.167111 5.987103
--0.137601 -12.041750
--0.251375 10.397204
--1.431514 -8.904108
-0.988280 -13.208963
-0.261484 -6.354970
-0.395932 -0.702529
-0.283704 26.899563
-0.420959 15.441778
--0.355804 -13.727784
-0.527372 12.398515
--1.169559 -15.998457
-1.906688 -5.816055
-0.354492 3.851572
-0.825760 -4.162642
--0.490190 13.057229
-2.255773 13.526449
--0.004956 -3.237127
-0.026709 7.866448
--1.810372 -0.451183
-1.083827 -0.183620
-0.135836 -2.266582
-0.375812 -5.512248
--1.966443 38.682854
-1.977988 24.565481
--0.704656 6.358810
-0.480786 7.051749
--0.976417 -2.422727
-2.502148 6.759346
-0.083588 3.258795
-0.543629 0.910013
--1.231959 23.091507
-0.785492 14.807000
--0.213554 1.688002
-0.004748 18.171820
--1.547192 -16.116837
-1.501045 -3.281141
-0.080133 -4.634724
-0.476592 -2.180929
-0.442470 40.303989
-1.072766 27.592009
--0.594738 -4.166807
-0.422480 7.616091
--0.927521 -7.274406
-1.991623 1.296359
-0.291307 2.398781
-0.721081 -1.950625
--0.804256 24.929474
-1.648388 19.119692
-0.060852 -0.590639
-0.266085 9.103249
--1.957399 -2.884607
-1.116929 2.672397
-0.354580 -2.748541
-0.330733 -14.156131
--0.527851 39.575626
-0.991152 43.194984
--0.589619 1.269186
-0.787401 8.730713
--1.013800 1.025075
-2.825403 1.895381
-0.240890 2.745566
-0.427195 2.544456
--1.953109 12.243958
-1.448616 12.060747
--0.210492 -3.379058
--0.056713 10.204020
--1.652370 -5.102737
-1.294748 -12.270802
-0.111608 -8.675921
-0.326634 -1.167627
-0.021781 31.125782
-0.455335 21.468430
--0.375440 -3.371207
-0.393620 11.301987
--0.851456 -19.414892
-2.107030 -2.228865
-0.373233 1.924056
-0.884438 -1.720581
--0.975127 9.840128
-2.003303 17.395407
--0.036915 -1.111372
-0.148456 5.399970
--1.914412 4.773819
-1.447907 0.537122
-0.194979 -1.038179
-0.495771 -9.955025
--1.058987 32.947052
-2.011222 32.454418
--0.309650 4.719106
-0.436082 4.635524
--1.237105 -1.254284
-2.022740 9.428345
-0.190342 1.460767
-0.479017 2.484788
--1.078483 16.221748
-1.207642 9.654212
--0.258087 -1.672358
-0.071852 13.415978
--1.877228 -16.072031
-1.289568 -4.871185
-0.067713 -13.442700
-0.435551 -4.165503
-0.466140 30.589535
-0.904895 21.597990
--0.518369 -2.532048
-0.337363 5.637264
--0.554975 -17.400511
-1.691879 1.145742
-0.227934 0.889297
-0.587303 -5.729732
--0.262133 18.666620
-1.395048 17.002878
--0.019090 4.308379
-0.304235 12.669943
--2.074059 -6.460845
-0.920546 1.212957
-0.284927 -1.785466
-0.209724 -16.023964
--0.636067 31.576820
-1.349887 34.677502
--0.971625 5.300859
-0.590249 4.449709
--1.567867 3.602385
-2.145497 4.516663
-0.296022 4.120170
-0.445299 0.868772
--1.441931 14.128431
-1.355752 6.007401
--0.012814 -7.496573
--0.430000 8.500124
--1.204693 -7.113256
-1.101018 -6.836818
-0.196463 -6.234002
-0.436747 -1.129788
-0.141052 22.854876
-0.290821 18.811443
--0.529536 -7.732510
-0.634280 10.789847
--1.334721 -20.325773
-1.815645 -1.903316
-0.394778 3.797577
-0.732682 -8.183819
--0.741244 11.768337
diff --git a/gr-vocoder/lib/codec2/codebook/lsp1.txt 
b/gr-vocoder/lib/codec2/codebook/lsp1.txt
deleted file mode 100644
index d126be7..0000000
--- a/gr-vocoder/lib/codec2/codebook/lsp1.txt
+++ /dev/null
@@ -1,17 +0,0 @@
-1 16
-225
-250
-275
-300
-325
-350
-375
-400
-425
-450
-475
-500
-525
-550
-575
-600
diff --git a/gr-vocoder/lib/codec2/codebook/lsp10.txt 
b/gr-vocoder/lib/codec2/codebook/lsp10.txt
deleted file mode 100644
index 39aab7c..0000000
--- a/gr-vocoder/lib/codec2/codebook/lsp10.txt
+++ /dev/null
@@ -1,6 +0,0 @@
-1 4
-2900
-3100
-3300
-3500
-
diff --git a/gr-vocoder/lib/codec2/codebook/lsp2.txt 
b/gr-vocoder/lib/codec2/codebook/lsp2.txt
deleted file mode 100644
index 597f149..0000000
--- a/gr-vocoder/lib/codec2/codebook/lsp2.txt
+++ /dev/null
@@ -1,17 +0,0 @@
-1 16
-325
-350
-375
-400
-425
-450
-475
-500
-525
-550
-575
-600
-625
-650
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-700
diff --git a/gr-vocoder/lib/codec2/codebook/lsp3.txt 
b/gr-vocoder/lib/codec2/codebook/lsp3.txt
deleted file mode 100644
index 36a64b1..0000000
--- a/gr-vocoder/lib/codec2/codebook/lsp3.txt
+++ /dev/null
@@ -1,17 +0,0 @@
-1 16
-500
-550
-600
-650
-700
-750
-800
-850
-900
-950
-1000
-1050
-1100
-1150
-1200
-1250
diff --git a/gr-vocoder/lib/codec2/codebook/lsp4.txt 
b/gr-vocoder/lib/codec2/codebook/lsp4.txt
deleted file mode 100644
index 53a90bd..0000000
--- a/gr-vocoder/lib/codec2/codebook/lsp4.txt
+++ /dev/null
@@ -1,17 +0,0 @@
-1 16
-700
-800
-900
-1000
-1100
-1200
-1300
-1400
-1500
-1600
-1700
-1800
-1900
-2000
-2100
-2200
diff --git a/gr-vocoder/lib/codec2/codebook/lsp45678910.txt 
b/gr-vocoder/lib/codec2/codebook/lsp45678910.txt
deleted file mode 100644
index 291d3cd..0000000
--- a/gr-vocoder/lib/codec2/codebook/lsp45678910.txt
+++ /dev/null
@@ -1,4097 +0,0 @@
-6 4096
-1.081234  1.578844  1.855572  1.937313  2.532441  2.649806
-1.062804  1.450009  1.839560  1.956503  2.488847  2.653463
-1.101587  1.361019  1.833584  1.932414  2.505176  2.629812
-1.079058  1.376855  1.872688  1.955078  2.541337  2.633780
-1.095536  1.631036  1.866273  2.066987  2.506661  2.570431
-1.093059  1.561358  1.772473  2.123863  2.547475  2.618258
-1.093649  1.500206  1.786047  2.077115  2.483767  2.572542
-1.035022  1.485983  1.678652  2.079363  2.402344  2.513315
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diff --git a/gr-vocoder/lib/codec2/codebook/lsp5.txt 
b/gr-vocoder/lib/codec2/codebook/lsp5.txt
deleted file mode 100644
index 94739b5..0000000
--- a/gr-vocoder/lib/codec2/codebook/lsp5.txt
+++ /dev/null
@@ -1,19 +0,0 @@
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b/gr-vocoder/lib/codec2/codebook/lsp6.txt
deleted file mode 100644
index 992ea25..0000000
--- a/gr-vocoder/lib/codec2/codebook/lsp6.txt
+++ /dev/null
@@ -1,19 +0,0 @@
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b/gr-vocoder/lib/codec2/codebook/lsp7.txt
deleted file mode 100644
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--- a/gr-vocoder/lib/codec2/codebook/lsp7.txt
+++ /dev/null
@@ -1,19 +0,0 @@
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b/gr-vocoder/lib/codec2/codebook/lsp8.txt
deleted file mode 100644
index d9880c9..0000000
--- a/gr-vocoder/lib/codec2/codebook/lsp8.txt
+++ /dev/null
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diff --git a/gr-vocoder/lib/codec2/codebook/lsp9.txt 
b/gr-vocoder/lib/codec2/codebook/lsp9.txt
deleted file mode 100644
index 7e159af..0000000
--- a/gr-vocoder/lib/codec2/codebook/lsp9.txt
+++ /dev/null
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diff --git a/gr-vocoder/lib/codec2/codebook/lspdt1.txt 
b/gr-vocoder/lib/codec2/codebook/lspdt1.txt
deleted file mode 100644
index ba30880..0000000
--- a/gr-vocoder/lib/codec2/codebook/lspdt1.txt
+++ /dev/null
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b/gr-vocoder/lib/codec2/codebook/lspdt10.txt
deleted file mode 100644
index e72c16c..0000000
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+++ /dev/null
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b/gr-vocoder/lib/codec2/codebook/lspdt2.txt
deleted file mode 100644
index ba30880..0000000
--- a/gr-vocoder/lib/codec2/codebook/lspdt2.txt
+++ /dev/null
@@ -1,9 +0,0 @@
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b/gr-vocoder/lib/codec2/codebook/lspdt3.txt
deleted file mode 100644
index 7ebefd9..0000000
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+++ /dev/null
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b/gr-vocoder/lib/codec2/codebook/lspdt4.txt
deleted file mode 100644
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+++ /dev/null
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b/gr-vocoder/lib/codec2/codebook/lspdt5.txt
deleted file mode 100644
index 7ebefd9..0000000
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+++ /dev/null
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b/gr-vocoder/lib/codec2/codebook/lspdt6.txt
deleted file mode 100644
index 7ebefd9..0000000
--- a/gr-vocoder/lib/codec2/codebook/lspdt6.txt
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b/gr-vocoder/lib/codec2/codebook/lspdt7.txt
deleted file mode 100644
index e72c16c..0000000
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+++ /dev/null
@@ -1,3 +0,0 @@
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b/gr-vocoder/lib/codec2/codebook/lspdt8.txt
deleted file mode 100644
index e72c16c..0000000
--- a/gr-vocoder/lib/codec2/codebook/lspdt8.txt
+++ /dev/null
@@ -1,3 +0,0 @@
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diff --git a/gr-vocoder/lib/codec2/codebook/lspdt9.txt 
b/gr-vocoder/lib/codec2/codebook/lspdt9.txt
deleted file mode 100644
index e72c16c..0000000
--- a/gr-vocoder/lib/codec2/codebook/lspdt9.txt
+++ /dev/null
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diff --git a/gr-vocoder/lib/codec2/codebook/lspjnd5-10.txt 
b/gr-vocoder/lib/codec2/codebook/lspjnd5-10.txt
deleted file mode 100644
index e4e500c..0000000
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diff --git a/gr-vocoder/lib/codec2/codebook/lspjvm1.txt 
b/gr-vocoder/lib/codec2/codebook/lspjvm1.txt
deleted file mode 100644
index 9cd10ed..0000000
--- a/gr-vocoder/lib/codec2/codebook/lspjvm1.txt
+++ /dev/null
@@ -1,513 +0,0 @@
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diff --git a/gr-vocoder/lib/codec2/codebook/lspjvm2.txt 
b/gr-vocoder/lib/codec2/codebook/lspjvm2.txt
deleted file mode 100644
index 2b7cabf..0000000
--- a/gr-vocoder/lib/codec2/codebook/lspjvm2.txt
+++ /dev/null
@@ -1,513 +0,0 @@
-5 512
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diff --git a/gr-vocoder/lib/codec2/codebook/lspjvm3.txt 
b/gr-vocoder/lib/codec2/codebook/lspjvm3.txt
deleted file mode 100644
index 72767df..0000000
--- a/gr-vocoder/lib/codec2/codebook/lspjvm3.txt
+++ /dev/null
@@ -1,513 +0,0 @@
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diff --git a/gr-vocoder/lib/codec2/codebook/lspvqanssi1.txt 
b/gr-vocoder/lib/codec2/codebook/lspvqanssi1.txt
deleted file mode 100644
index 0b9dd90..0000000
--- a/gr-vocoder/lib/codec2/codebook/lspvqanssi1.txt
+++ /dev/null
@@ -1,257 +0,0 @@
-10 256
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diff --git a/gr-vocoder/lib/codec2/codebook/lspvqanssi2.txt 
b/gr-vocoder/lib/codec2/codebook/lspvqanssi2.txt
deleted file mode 100644
index 607cb47..0000000
--- a/gr-vocoder/lib/codec2/codebook/lspvqanssi2.txt
+++ /dev/null
@@ -1,129 +0,0 @@
-10 128
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--0.0305 -0.0485 -0.0572 0.0275 -0.0271 -0.0436 0.1217 0.0700 0.1253 0.0990
--0.0079 -0.0204 -0.0325 0.0491 0.0158 -0.0365 -0.1309 -0.1812 0.1428 0.1148
-0.0680 0.0547 0.0309 0.0079 -0.0332 0.0391 -0.0287 0.1258 0.1123 0.1016
--0.0264 -0.0409 -0.0538 -0.0192 -0.0393 -0.0713 -0.0618 -0.1078 -0.1850 0.0532
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--0.0023 -0.0184 -0.0358 0.1279 0.0847 0.0530 0.0230 -0.0212 0.1245 0.0965
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-0.0020 -0.0071 -0.0262 -0.0496 -0.0750 -0.1273 -0.1785 0.0606 -0.0223 -0.0583
--0.0202 0.0669 0.0081 0.0335 -0.0218 -0.1073 -0.0146 -0.0673 0.0490 0.0210
--0.0108 -0.0230 -0.0614 -0.0986 0.0629 0.0006 0.1496 0.1099 0.0316 0.0098
--0.0368 -0.0685 0.0138 -0.0213 -0.0009 0.0344 -0.0249 0.0311 0.0803 0.0759
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--0.0083 0.0698 0.0406 -0.0348 0.0200 0.0833 0.0186 -0.0145 -0.0725 -0.0872
--0.0506 -0.0673 0.0776 -0.0172 -0.0444 -0.0531 -0.0799 0.0005 -0.0359 -0.0446
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--0.0309 -0.0561 0.0950 -0.0125 -0.1028 -0.0133 0.0920 0.0965 0.0668 0.0409
--0.0898 0.0036 -0.0353 -0.0024 -0.0365 -0.0259 -0.0485 -0.0843 -0.0063 -0.0167
--0.0255 -0.0407 -0.0456 -0.0931 -0.0892 -0.0293 -0.0510 0.0183 -0.0104 0.0472
--0.0172 -0.0399 -0.0731 0.0546 0.0320 -0.0283 0.0415 -0.0107 -0.1237 -0.1102
-0.0210 0.0294 -0.0038 -0.0090 -0.0551 -0.0922 0.0261 -0.0334 -0.1181 -0.1536
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--0.0038 -0.0269 -0.0737 0.1138 0.0263 -0.0031 -0.1188 0.1621 0.0831 0.0526
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-0.0120 0.0124 -0.0286 -0.1319 0.0219 0.0311 -0.0398 -0.0465 -0.0008 -0.0375
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--0.0586 0.0772 0.0128 0.1060 0.0715 0.0374 -0.0074 -0.0365 -0.0543 -0.0489
--0.0392 0.0871 -0.0069 -0.1084 0.0264 -0.0495 0.0396 0.0005 -0.0293 -0.0240
--0.0327 0.0605 0.0662 0.0100 -0.0007 -0.0525 -0.0812 -0.0686 -0.0873 -0.0830
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-0.0652 0.0587 0.0013 -0.0700 0.1262 0.0975 0.0680 0.0598 0.0048 -0.0305
--0.0185 -0.0440 0.1178 0.0656 0.0052 -0.0534 -0.1151 0.1116 0.0659 0.0344
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--0.0165 -0.0322 -0.0526 -0.1057 0.0927 0.0293 -0.1026 -0.1671 0.0470 0.0355
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-0.0005 -0.0199 -0.0260 -0.0511 -0.1110 0.0670 -0.0413 0.1571 0.0498 0.0191
-0.0037 -0.0085 -0.0796 0.0086 -0.0852 0.0850 0.0115 -0.0065 0.1161 0.0727
-0.0023 0.0483 0.0285 -0.0642 -0.0477 0.0175 0.0346 0.0452 0.0655 0.0284
--0.0986 0.0463 0.0326 -0.0055 0.0702 0.0194 -0.0423 -0.0107 0.0338 0.0619
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-0.0124 -0.0090 0.0322 0.0930 0.0281 -0.0403 -0.0781 0.0125 -0.0670 -0.1058
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--0.0045 -0.0194 -0.0193 -0.0480 -0.0640 -0.0695 -0.1597 -0.0030 0.1728 0.1231
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-0.0073 0.0914 0.0367 -0.0236 0.0232 0.0304 -0.0787 -0.1099 0.0460 0.0082
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--0.0290 -0.0629 0.0598 0.0013 0.0064 0.1431 0.0920 0.0468 -0.0311 -0.0614
--0.0152 -0.0311 -0.0500 -0.0672 -0.1257 -0.0134 -0.0220 -0.0612 -0.1131 -0.1417
-0.0371 0.0153 -0.0817 -0.0007 0.0837 0.0481 0.0460 0.0678 0.0524 0.0432
-0.0126 -0.0069 -0.0092 -0.0693 -0.0250 0.1510 0.0098 -0.0683 -0.0566 -0.0769
--0.0199 -0.0423 0.0806 0.0562 0.0009 -0.0563 -0.1358 -0.1578 -0.0456 0.0032
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--0.0024 -0.0135 0.0392 0.0028 0.0792 0.0404 0.0867 0.1610 0.0954 0.0846
--0.0004 -0.0220 -0.0282 -0.1022 -0.0799 0.1278 0.0765 0.0402 0.0850 0.0611
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--0.0706 0.1151 0.0722 -0.0175 -0.0927 -0.0559 0.0316 0.0186 0.0105 0.0314
--0.0145 -0.0263 -0.0564 0.0248 -0.0181 -0.0817 -0.0938 0.0366 -0.0315 0.1253
-0.0307 0.0039 0.1290 0.0402 -0.0439 -0.0384 0.0044 -0.0177 -0.0172 -0.0310
-0.0447 0.0298 0.0287 0.0273 -0.0350 -0.0708 -0.1829 -0.0317 0.0643 0.0057
--0.0820 -0.0326 0.0209 -0.0711 0.0084 0.0111 0.0426 0.0262 -0.0061 0.0005
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--0.0053 -0.0049 -0.0255 -0.0578 -0.0237 -0.0721 -0.1487 -0.1636 0.0046 -0.0355
-0.0309 0.0107 0.0163 0.0132 -0.0536 -0.0009 -0.0706 -0.1350 -0.0514 -0.0960
-0.0306 0.0003 0.0494 0.0701 0.0027 -0.0458 0.0780 0.0327 0.0937 0.0605
--0.0017 -0.0275 0.0797 -0.0268 -0.1014 0.0593 -0.0528 -0.1103 0.0682 0.0322
--0.0507 -0.0806 -0.0646 -0.0052 -0.0576 0.0451 0.0489 0.0150 0.0029 -0.0189
-0.0270 0.0143 -0.0375 -0.0071 -0.0607 -0.1157 -0.0345 -0.1115 0.0201 -0.0104
--0.0807 -0.1088 0.0845 0.0720 0.0441 0.0301 0.0043 0.0052 0.0016 0.0201
--0.0290 -0.0532 0.0036 -0.0201 -0.0723 -0.1321 0.0867 0.0479 -0.0556 -0.0850
--0.0271 0.0126 0.1283 0.0533 -0.0030 -0.0352 -0.0326 -0.0553 0.1402 0.1121
--0.0358 -0.0518 -0.1080 0.0134 0.0950 0.0384 -0.0040 -0.0254 0.0026 -0.0217
--0.0152 -0.0375 -0.0827 0.0916 0.0188 0.1306 0.0983 0.0606 0.0381 0.0080
--0.0107 -0.0269 -0.0573 -0.1189 0.0258 0.1009 0.0565 0.0270 -0.0557 -0.0778
--0.0193 -0.0242 -0.0784 -0.0816 0.0287 -0.0484 0.0292 -0.0414 0.1124 0.0767
-0.0177 -0.0148 0.0472 -0.0808 0.0623 -0.0636 0.0750 -0.0107 0.0673 0.0425
--0.0220 0.0577 -0.0769 -0.0247 -0.0321 0.0341 -0.0108 0.0109 -0.0142 0.0122
-0.0194 0.0248 -0.0096 -0.0205 -0.0460 -0.1160 0.0492 -0.0188 -0.1535 0.0816
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-0.0115 -0.0111 0.0246 -0.0639 0.0325 -0.0313 0.0808 0.0435 -0.0777 -0.1108
--0.0079 -0.0334 -0.0144 -0.0539 0.1564 0.1175 0.0549 0.0340 0.0319 0.0027
--0.0155 -0.0275 -0.0739 -0.0932 0.0108 -0.0698 0.0036 -0.0213 -0.0486 -0.0670
--0.0234 -0.0567 0.0020 0.0908 -0.0151 0.0460 -0.0175 -0.0523 0.0098 -0.0237
-0.0057 -0.0066 -0.0418 0.0418 -0.0449 0.1069 0.0629 -0.0016 -0.1068 -0.1492
--0.0791 0.0403 -0.0009 0.0285 -0.0065 0.0963 0.0550 0.0634 0.0693 0.0694
--0.0068 -0.0197 -0.0919 0.0071 -0.0551 -0.1173 0.0926 0.0413 0.0127 -0.0158
-0.0540 0.0389 -0.0195 -0.0800 -0.1383 0.0440 -0.0139 -0.0405 0.0147 -0.0183
-0.0380 0.0248 0.0520 -0.0609 0.0339 -0.0070 -0.0974 0.1182 0.0221 -0.0310
-0.0043 0.0046 -0.0274 -0.0502 0.0326 -0.0143 -0.0586 -0.0866 -0.1673 -0.1624
-0.0428 0.0385 -0.0228 0.0704 0.0069 -0.0145 -0.0623 -0.0639 -0.1479 0.0212
--0.0078 -0.0297 0.0025 -0.0239 -0.0793 0.0896 0.0315 -0.0546 -0.1309 0.1080
diff --git a/gr-vocoder/lib/codec2/codebook/lspvqanssi3.txt 
b/gr-vocoder/lib/codec2/codebook/lspvqanssi3.txt
deleted file mode 100644
index a28c3e7..0000000
--- a/gr-vocoder/lib/codec2/codebook/lspvqanssi3.txt
+++ /dev/null
@@ -1,65 +0,0 @@
-10 64
--0.0291 0.0272 -0.0364 -0.0313 -0.0487 -0.0205 0.0501 0.0225 0.0178 0.0080
--0.0406 -0.0383 0.0013 -0.0155 -0.0261 -0.0598 0.0003 -0.0242 0.0151 -0.0140
--0.0445 0.0356 0.0180 -0.0272 -0.0018 -0.0177 -0.0703 0.0471 0.0128 -0.0068
--0.0033 -0.0285 -0.0560 -0.0186 -0.0499 -0.0070 0.0068 -0.0126 0.0388 -0.0097
--0.0071 -0.0114 -0.0308 -0.0094 -0.0541 -0.0272 -0.0756 0.0477 -0.0234 0.0678
-0.0048 0.0307 -0.0174 -0.0593 0.0097 -0.0134 0.0034 -0.0212 -0.0418 0.0869
--0.0189 0.0165 -0.0269 0.0744 0.0344 -0.0177 -0.0603 0.0212 -0.0104 0.0345
--0.0130 -0.0352 -0.0086 -0.0257 -0.0286 0.0409 0.0656 0.0106 -0.0598 0.0252
-0.0041 0.0097 -0.0032 -0.0154 -0.0405 0.0670 -0.0164 0.0451 0.0774 0.0504
-0.0010 -0.0091 -0.0345 0.0511 0.0016 0.0011 0.0684 0.0167 0.0601 0.0512
-0.0204 -0.0038 -0.0426 0.0185 -0.0191 -0.0630 0.0295 -0.0153 -0.0559 0.0560
--0.0461 -0.0041 0.0515 0.0219 0.0322 0.0093 0.0044 0.0106 -0.0329 -0.0521
-0.0304 0.0017 0.0209 -0.0002 0.0689 0.0136 0.0216 -0.0268 -0.0682 0.0333
--0.0175 -0.0425 0.0153 -0.0050 -0.0113 0.0297 -0.0659 -0.0344 0.0302 -0.0272
--0.0217 -0.0362 0.0426 0.0233 -0.0393 0.0052 0.0138 0.0657 0.0427 0.0220
--0.0039 -0.0011 -0.0002 -0.0453 -0.0835 0.0144 -0.0268 -0.0589 -0.0185 0.0133
-0.0081 -0.0032 0.0638 0.0032 0.0060 0.0002 -0.0303 -0.0823 0.0124 -0.0308
-0.0108 0.0011 0.0059 0.0396 0.0392 0.0351 -0.0045 -0.0323 -0.0512 -0.0975
--0.0144 -0.0306 -0.0302 -0.0070 0.0123 -0.0042 -0.0083 -0.0514 0.0120 0.1116
--0.0046 -0.0131 0.0472 0.0144 -0.0296 -0.0518 0.0337 -0.0145 -0.0733 0.0793
--0.0064 -0.0162 -0.0327 -0.0711 0.0108 -0.0131 0.0025 -0.0254 -0.0277 -0.0680
--0.0306 0.0055 0.0272 -0.0189 -0.0173 0.0221 0.0773 0.0043 0.0458 -0.0169
--0.0006 0.0299 0.0259 0.0227 -0.0530 -0.0596 -0.0271 -0.0091 0.0181 -0.0233
--0.0116 -0.0398 0.0089 0.0708 -0.0028 -0.0084 -0.0206 -0.0354 -0.0275 -0.0037
-0.0259 -0.0064 -0.0380 0.0572 0.0083 0.0286 -0.0565 0.0158 0.0396 -0.0123
-0.0552 0.0331 -0.0052 -0.0346 -0.0180 -0.0194 -0.0237 0.0184 0.0056 -0.0199
-0.0143 0.0131 -0.0166 0.0196 0.0154 0.0310 -0.0048 0.0901 -0.0333 0.0761
-0.0118 -0.0107 0.0099 0.0078 0.0002 -0.0716 -0.0233 0.0793 0.0516 0.0300
-0.0204 0.0243 0.0192 0.0181 0.0001 -0.0243 -0.0764 -0.0622 -0.0324 0.0640
-0.0132 0.0016 -0.0187 -0.0425 0.0627 0.0094 -0.0786 0.0304 0.0294 -0.0146
--0.0221 -0.0154 0.0285 -0.0709 0.0406 0.0114 0.0073 -0.0199 0.0081 0.0268
-0.0227 0.0055 0.0163 -0.0447 0.0246 0.0795 0.0239 0.0211 -0.0145 -0.0576
--0.0119 0.0637 0.0278 0.0202 -0.0086 0.0389 0.0320 -0.0049 -0.0272 -0.0274
-0.0040 -0.0211 0.0426 0.0480 0.0415 0.0659 0.0408 0.0198 0.0327 0.0029
-0.0430 0.0311 0.0083 0.0353 0.0250 0.0143 0.0106 -0.0305 0.0633 0.0227
--0.0277 0.0302 0.0337 0.0176 0.0191 -0.0156 0.0231 0.0118 0.0465 0.0875
-0.0221 0.0146 0.0147 -0.0211 -0.0317 -0.0179 -0.0049 -0.0297 -0.1078 -0.0413
--0.0531 0.0180 -0.0066 0.0365 -0.0033 0.0090 -0.0158 -0.0698 0.0315 -0.0048
-0.0289 0.0053 0.0082 0.0077 -0.0664 0.0474 0.0407 -0.0096 0.0028 -0.0526
--0.0106 -0.0129 -0.0315 0.0335 -0.0217 -0.0427 0.0582 0.0193 -0.0288 -0.0777
--0.0003 -0.0141 -0.0102 0.0007 -0.0077 -0.0517 -0.0909 0.0128 -0.0349 -0.0769
--0.0227 -0.0159 -0.0327 0.0011 0.0312 0.0100 -0.0180 -0.0537 -0.0997 0.0122
-0.0190 -0.0139 0.0341 -0.0131 -0.0368 -0.0138 -0.0074 -0.0415 0.0791 0.0503
-0.0182 0.0027 0.0032 -0.0325 -0.0309 -0.0898 0.0509 -0.0170 0.0301 -0.0137
-0.0233 0.0100 0.0231 0.0730 0.0212 -0.0299 0.0440 0.0041 -0.0101 -0.0251
-0.0074 -0.0033 -0.0285 -0.0350 0.0101 0.0735 0.0036 -0.0659 0.0429 -0.0052
-0.0148 -0.0035 -0.0233 0.0079 -0.0142 -0.0402 -0.0358 -0.0985 -0.0080 -0.0549
-0.0203 0.0057 -0.0604 0.0098 0.0402 0.0151 0.0500 0.0058 -0.0086 -0.0401
-0.0056 -0.0381 0.0420 -0.0125 0.0157 -0.0268 0.0433 0.0123 -0.0176 -0.0685
-0.0030 0.0502 0.0067 -0.0222 0.0405 -0.0226 0.0020 -0.0401 -0.0026 -0.0521
-0.0317 0.0089 0.0620 0.0251 0.0066 0.0089 -0.0565 0.0414 0.0005 -0.0365
--0.0058 0.0086 -0.0291 -0.0164 -0.0134 -0.0490 -0.0427 -0.0451 0.0869 0.0334
-0.0024 0.0328 -0.0415 0.0003 -0.0287 0.0193 -0.0547 -0.0222 -0.0196 -0.0571
--0.0271 -0.0397 -0.0431 -0.0043 0.0332 0.0093 0.0082 0.0585 0.0282 0.0004
--0.0251 -0.0167 -0.0289 0.0196 -0.0363 0.0850 0.0028 0.0319 -0.0202 -0.0512
-0.0389 0.0226 0.0401 -0.0091 -0.0152 0.0001 0.0738 0.0402 0.0097 0.0310
--0.0126 0.0130 -0.0046 -0.0216 0.0298 -0.0344 0.0713 0.0547 -0.0470 -0.0294
-0.0125 0.0044 -0.0028 0.0209 -0.0200 0.0854 0.0018 -0.0386 -0.0703 0.0778
--0.0036 -0.0347 0.0309 -0.0184 0.0290 -0.0025 -0.0644 0.0347 -0.0523 0.0644
-0.0064 0.0295 -0.0017 0.0282 0.0176 0.0027 0.0246 0.0967 0.0401 -0.0231
-0.0054 -0.0109 0.0055 -0.0479 -0.0490 -0.0136 -0.0245 0.0839 0.0026 -0.0493
-0.0128 -0.0050 -0.0219 -0.0621 0.0313 0.0019 0.0696 0.0459 0.0574 0.0299
--0.0091 -0.0290 -0.0068 0.0276 0.0645 -0.0150 0.0015 -0.0374 0.0415 -0.0124
--0.0171 0.0177 -0.0138 0.0034 0.0840 0.0584 0.0233 0.0100 0.0122 0.0047
diff --git a/gr-vocoder/lib/codec2/codebook/lspvqanssi4.txt 
b/gr-vocoder/lib/codec2/codebook/lspvqanssi4.txt
deleted file mode 100644
index 01867d4..0000000
--- a/gr-vocoder/lib/codec2/codebook/lspvqanssi4.txt
+++ /dev/null
@@ -1,65 +0,0 @@
-10 64
-0.0221 -0.0035 -0.0032 -0.0177 -0.0327 0.0518 -0.0110 -0.0150 -0.0136 -0.0327
-0.0099 -0.0059 0.0031 -0.0174 0.0464 -0.0240 0.0251 -0.0270 0.0454 -0.0082
--0.0029 0.0025 -0.0267 -0.0318 -0.0157 0.0173 0.0253 0.0063 -0.0481 0.0419
--0.0332 -0.0179 -0.0042 0.0241 0.0044 -0.0098 -0.0081 0.0024 -0.0414 0.0339
--0.0060 0.0182 -0.0051 -0.0479 0.0016 -0.0179 0.0316 0.0222 -0.0029 -0.0351
-0.0074 0.0015 0.0337 -0.0082 -0.0008 0.0129 0.0001 0.0650 0.0175 0.0309
--0.0212 -0.0261 0.0196 -0.0309 0.0093 -0.0272 0.0260 0.0169 0.0132 0.0116
--0.0010 0.0202 0.0228 -0.0227 -0.0141 0.0192 -0.0423 -0.0097 -0.0342 0.0338
--0.0149 -0.0110 -0.0156 0.0290 0.0028 0.0123 -0.0350 -0.0501 0.0272 -0.0245
--0.0005 -0.0194 0.0460 -0.0001 -0.0280 0.0216 -0.0028 -0.0162 0.0177 -0.0254
--0.0109 -0.0026 0.0038 -0.0150 -0.0421 -0.0422 0.0164 -0.0436 0.0054 -0.0098
-0.0061 -0.0106 0.0062 0.0207 -0.0329 0.0177 -0.0578 0.0408 0.0077 -0.0260
-0.0001 -0.0098 0.0106 -0.0003 -0.0292 0.0032 0.0560 0.0311 -0.0282 -0.0445
-0.0033 0.0345 -0.0022 -0.0029 -0.0228 0.0242 0.0197 -0.0286 0.0194 -0.0328
-0.0094 -0.0010 0.0121 0.0229 0.0161 0.0363 -0.0124 0.0179 -0.0626 0.0020
--0.0070 -0.0272 -0.0171 -0.0249 -0.0039 0.0254 0.0317 -0.0324 0.0276 -0.0090
--0.0002 0.0057 -0.0204 0.0512 -0.0170 0.0113 0.0157 0.0427 -0.0024 0.0162
--0.0064 -0.0144 0.0216 0.0053 -0.0361 0.0287 0.0230 -0.0161 -0.0189 0.0589
-0.0091 -0.0059 -0.0308 0.0171 -0.0137 -0.0033 -0.0505 -0.0155 -0.0527 0.0133
--0.0121 -0.0051 0.0219 0.0136 0.0476 -0.0090 -0.0460 0.0208 0.0072 -0.0076
-0.0098 -0.0328 -0.0211 0.0054 -0.0146 -0.0263 0.0248 0.0045 -0.0183 0.0301
-0.0101 0.0139 -0.0073 0.0234 0.0083 -0.0194 -0.0365 0.0307 0.0580 0.0153
--0.0111 0.0019 0.0265 -0.0150 0.0311 0.0362 0.0244 -0.0213 -0.0224 -0.0299
-0.0061 0.0082 -0.0181 0.0081 -0.0344 0.0133 -0.0095 -0.0411 0.0462 0.0371
-0.0089 -0.0157 0.0179 -0.0256 -0.0118 -0.0302 -0.0329 0.0212 -0.0463 -0.0162
--0.0313 0.0096 -0.0040 0.0186 0.0248 -0.0126 0.0472 -0.0079 0.0115 -0.0270
-0.0055 0.0044 0.0172 0.0079 -0.0089 -0.0202 -0.0233 -0.0397 -0.0305 -0.0620
--0.0282 -0.0104 -0.0071 -0.0242 -0.0255 0.0204 -0.0187 -0.0103 -0.0227 -0.0424
--0.0056 0.0065 0.0151 -0.0376 0.0039 0.0009 -0.0507 -0.0040 0.0393 -0.0201
-0.0128 -0.0228 0.0115 -0.0446 0.0316 0.0266 -0.0036 0.0117 -0.0009 0.0048
--0.0088 0.0226 0.0125 0.0090 0.0008 -0.0341 0.0243 -0.0178 -0.0589 0.0278
-0.0151 0.0021 -0.0349 -0.0365 -0.0098 -0.0179 -0.0212 -0.0313 0.0109 -0.0164
--0.0211 -0.0112 -0.0446 0.0014 -0.0034 -0.0179 0.0110 0.0176 0.0286 0.0045
-0.0034 -0.0151 0.0380 0.0331 -0.0034 -0.0439 0.0145 0.0120 0.0036 0.0017
--0.0348 0.0192 0.0167 0.0069 -0.0266 -0.0085 -0.0076 0.0260 0.0234 0.0075
--0.0237 0.0150 -0.0094 -0.0201 0.0234 -0.0041 -0.0160 -0.0549 -0.0021 0.0239
--0.0019 0.0173 0.0295 0.0443 0.0081 0.0181 -0.0039 -0.0270 0.0155 0.0107
-0.0065 -0.0055 -0.0368 0.0232 0.0370 0.0367 0.0046 -0.0167 0.0047 0.0173
-0.0116 0.0053 -0.0229 0.0382 0.0160 -0.0453 0.0057 -0.0267 0.0020 -0.0051
--0.0140 0.0302 -0.0208 0.0106 0.0101 -0.0049 -0.0319 0.0227 -0.0206 -0.0371
--0.0007 -0.0109 -0.0053 0.0078 0.0410 -0.0001 0.0543 0.0328 -0.0196 0.0332
--0.0043 -0.0028 -0.0246 0.0285 -0.0248 0.0153 0.0303 -0.0310 -0.0335 -0.0315
--0.0417 0.1029 0.0377 0.0069 0.0012 0.0065 0.0007 -0.0144 -0.0083 0.0004
-0.0295 0.0099 -0.0144 -0.0145 0.0141 -0.0013 0.0362 -0.0142 -0.0428 -0.0161
--0.0095 -0.0206 0.0116 0.0132 0.0164 0.0158 0.0012 -0.0024 0.0640 0.0364
-0.0005 -0.0022 -0.0165 -0.0057 0.0263 0.0339 0.0014 0.0541 0.0164 -0.0411
-0.0039 -0.0143 -0.0107 0.0032 -0.0160 -0.0502 0.0010 0.0272 0.0161 -0.0500
-0.0083 0.0292 -0.0076 -0.0201 0.0313 0.0213 0.0120 0.0087 0.0285 0.0332
-0.0170 0.0018 0.0001 0.0205 0.0106 -0.0064 -0.0082 -0.0083 -0.0082 0.0886
-0.0075 -0.0078 -0.0038 -0.0337 -0.0491 0.0048 0.0069 0.0300 0.0369 0.0088
--0.0091 -0.0327 0.0041 0.0376 0.0170 0.0154 0.0126 0.0153 -0.0024 -0.0353
-0.0289 -0.0080 0.0063 0.0274 -0.0061 0.0208 0.0390 -0.0060 0.0294 -0.0088
--0.0037 -0.0195 0.0058 0.0023 -0.0149 -0.0360 -0.0587 -0.0248 0.0288 0.0203
--0.0031 0.0081 -0.0112 -0.0221 0.0067 -0.0505 -0.0233 0.0353 -0.0131 0.0417
-0.0243 0.0231 -0.0013 0.0049 -0.0423 -0.0245 -0.0029 0.0184 -0.0162 -0.0010
-0.0045 0.0101 -0.0042 0.0014 -0.0133 -0.0321 0.0642 0.0153 0.0377 0.0277
-0.0275 0.0083 0.0286 -0.0243 -0.0084 -0.0236 0.0027 -0.0289 0.0201 0.0235
-0.0281 0.0078 0.0038 0.0069 0.0302 0.0170 -0.0423 -0.0340 0.0104 -0.0181
-0.0334 -0.0034 -0.0257 -0.0061 0.0140 -0.0099 -0.0195 0.0529 0.0019 0.0010
--0.0114 0.0012 -0.0038 -0.0016 -0.0140 0.0697 0.0372 0.0243 0.0172 0.0066
-0.0192 0.0149 0.0285 0.0077 0.0246 -0.0135 0.0145 0.0317 -0.0074 -0.0438
--0.0034 -0.0175 -0.0245 -0.0153 0.0357 -0.0102 -0.0062 -0.0053 -0.0308 -0.0499
-0.0025 -0.0253 0.0148 0.0031 0.0189 -0.0023 -0.0085 -0.0596 -0.0337 0.0175
--0.0091 -0.0171 -0.0217 -0.0189 0.0056 0.0249 -0.0499 0.0236 0.0042 0.0449
diff --git a/gr-vocoder/lib/codec2/codec2.c b/gr-vocoder/lib/codec2/codec2.c
deleted file mode 100644
index 5bf9980..0000000
--- a/gr-vocoder/lib/codec2/codec2.c
+++ /dev/null
@@ -1,1539 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: codec2.c
-  AUTHOR......: David Rowe
-  DATE CREATED: 21/8/2010
-
-  Codec2 fully quantised encoder and decoder functions.  If you want use
-  codec2, the codec2_xxx functions are for you.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2010 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#include <assert.h>
-#include <stdio.h>
-#include <stdlib.h>
-#include <string.h>
-#include <math.h>
-
-#include "defines.h"
-#include "sine.h"
-#include "nlp.h"
-#include "dump.h"
-#include "lpc.h"
-#include "quantise.h"
-#include "phase.h"
-#include "interp.h"
-#include "postfilter.h"
-#include "codec2.h"
-#include "lsp.h"
-#include "codec2_internal.h"
-#include "machdep.h"
-
-/*---------------------------------------------------------------------------*\
-
-                             FUNCTION HEADERS
-
-\*---------------------------------------------------------------------------*/
-
-void analyse_one_frame(struct CODEC2 *c2, MODEL *model, short speech[]);
-void synthesise_one_frame(struct CODEC2 *c2, short speech[], MODEL *model,
-                         float ak[]);
-void codec2_encode_3200(struct CODEC2 *c2, unsigned char * bits, short 
speech[]);
-void codec2_decode_3200(struct CODEC2 *c2, short speech[], const unsigned char 
* bits);
-void codec2_encode_2400(struct CODEC2 *c2, unsigned char * bits, short 
speech[]);
-void codec2_decode_2400(struct CODEC2 *c2, short speech[], const unsigned char 
* bits);
-void codec2_encode_1600(struct CODEC2 *c2, unsigned char * bits, short 
speech[]);
-void codec2_decode_1600(struct CODEC2 *c2, short speech[], const unsigned char 
* bits);
-void codec2_encode_1400(struct CODEC2 *c2, unsigned char * bits, short 
speech[]);
-void codec2_decode_1400(struct CODEC2 *c2, short speech[], const unsigned char 
* bits);
-void codec2_encode_1300(struct CODEC2 *c2, unsigned char * bits, short 
speech[]);
-void codec2_decode_1300(struct CODEC2 *c2, short speech[], const unsigned char 
* bits, float ber_est);
-void codec2_encode_1200(struct CODEC2 *c2, unsigned char * bits, short 
speech[]);
-void codec2_decode_1200(struct CODEC2 *c2, short speech[], const unsigned char 
* bits);
-static void ear_protection(float in_out[], int n);
-
-/*---------------------------------------------------------------------------*\
-
-                                FUNCTIONS
-
-\*---------------------------------------------------------------------------*/
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: codec2_create
-  AUTHOR......: David Rowe
-  DATE CREATED: 21/8/2010
-
-  Create and initialise an instance of the codec.  Returns a pointer
-  to the codec states or NULL on failure.  One set of states is
-  sufficient for a full duuplex codec (i.e. an encoder and decoder).
-  You don't need separate states for encoders and decoders.  See
-  c2enc.c and c2dec.c for examples.
-
-\*---------------------------------------------------------------------------*/
-
-struct CODEC2 * CODEC2_WIN32SUPPORT codec2_create(int mode)
-{
-    struct CODEC2 *c2;
-    int            i,l;
-
-    c2 = (struct CODEC2*)malloc(sizeof(struct CODEC2));
-    if (c2 == NULL)
-       return NULL;
-
-    assert(
-          (mode == CODEC2_MODE_3200) ||
-          (mode == CODEC2_MODE_2400) ||
-          (mode == CODEC2_MODE_1600) ||
-          (mode == CODEC2_MODE_1400) ||
-          (mode == CODEC2_MODE_1300) ||
-          (mode == CODEC2_MODE_1200)
-          );
-    c2->mode = mode;
-    for(i=0; i<M; i++)
-       c2->Sn[i] = 1.0;
-    c2->hpf_states[0] = c2->hpf_states[1] = 0.0;
-    for(i=0; i<2*N; i++)
-       c2->Sn_[i] = 0;
-    c2->fft_fwd_cfg = kiss_fft_alloc(FFT_ENC, 0, NULL, NULL);
-    make_analysis_window(c2->fft_fwd_cfg, c2->w,c2->W);
-    make_synthesis_window(c2->Pn);
-    c2->fft_inv_cfg = kiss_fft_alloc(FFT_DEC, 1, NULL, NULL);
-    quantise_init();
-    c2->prev_Wo_enc = 0.0;
-    c2->bg_est = 0.0;
-    c2->ex_phase = 0.0;
-
-    for(l=1; l<=MAX_AMP; l++)
-       c2->prev_model_dec.A[l] = 0.0;
-    c2->prev_model_dec.Wo = TWO_PI/P_MAX;
-    c2->prev_model_dec.L = PI/c2->prev_model_dec.Wo;
-    c2->prev_model_dec.voiced = 0;
-
-    for(i=0; i<LPC_ORD; i++) {
-      c2->prev_lsps_dec[i] = i*PI/(LPC_ORD+1);
-    }
-    c2->prev_e_dec = 1;
-
-    c2->nlp = nlp_create(M);
-    if (c2->nlp == NULL) {
-       free (c2);
-       return NULL;
-    }
-
-    c2->gray = 1;
-
-    c2->lpc_pf = 1; c2->bass_boost = 1; c2->beta = LPCPF_BETA; c2->gamma = 
LPCPF_GAMMA;
-
-    c2->xq_enc[0] = c2->xq_enc[1] = 0.0;
-    c2->xq_dec[0] = c2->xq_dec[1] = 0.0;
-
-    c2->smoothing = 0;
-
-    return c2;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: codec2_destroy
-  AUTHOR......: David Rowe
-  DATE CREATED: 21/8/2010
-
-  Destroy an instance of the codec.
-
-\*---------------------------------------------------------------------------*/
-
-void CODEC2_WIN32SUPPORT codec2_destroy(struct CODEC2 *c2)
-{
-    assert(c2 != NULL);
-    nlp_destroy(c2->nlp);
-    KISS_FFT_FREE(c2->fft_fwd_cfg);
-    KISS_FFT_FREE(c2->fft_inv_cfg);
-    free(c2);
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: codec2_bits_per_frame
-  AUTHOR......: David Rowe
-  DATE CREATED: Nov 14 2011
-
-  Returns the number of bits per frame.
-
-\*---------------------------------------------------------------------------*/
-
-int CODEC2_WIN32SUPPORT codec2_bits_per_frame(struct CODEC2 *c2) {
-    if (c2->mode == CODEC2_MODE_3200)
-       return 64;
-    if (c2->mode == CODEC2_MODE_2400)
-       return 48;
-    if  (c2->mode == CODEC2_MODE_1600)
-       return 64;
-    if  (c2->mode == CODEC2_MODE_1400)
-       return 56;
-    if  (c2->mode == CODEC2_MODE_1300)
-       return 52;
-    if  (c2->mode == CODEC2_MODE_1200)
-       return 48;
-
-    return 0; /* shouldn't get here */
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: codec2_samples_per_frame
-  AUTHOR......: David Rowe
-  DATE CREATED: Nov 14 2011
-
-  Returns the number of bits per frame.
-
-\*---------------------------------------------------------------------------*/
-
-int CODEC2_WIN32SUPPORT codec2_samples_per_frame(struct CODEC2 *c2) {
-    if (c2->mode == CODEC2_MODE_3200)
-       return 160;
-    if (c2->mode == CODEC2_MODE_2400)
-       return 160;
-    if  (c2->mode == CODEC2_MODE_1600)
-       return 320;
-    if  (c2->mode == CODEC2_MODE_1400)
-       return 320;
-    if  (c2->mode == CODEC2_MODE_1300)
-       return 320;
-    if  (c2->mode == CODEC2_MODE_1200)
-       return 320;
-
-    return 0; /* shouldnt get here */
-}
-
-void CODEC2_WIN32SUPPORT codec2_encode(struct CODEC2 *c2, unsigned char *bits, 
short speech[])
-{
-    assert(c2 != NULL);
-    assert(
-          (c2->mode == CODEC2_MODE_3200) ||
-          (c2->mode == CODEC2_MODE_2400) ||
-          (c2->mode == CODEC2_MODE_1600) ||
-          (c2->mode == CODEC2_MODE_1400) ||
-          (c2->mode == CODEC2_MODE_1300) ||
-          (c2->mode == CODEC2_MODE_1200)
-          );
-
-    if (c2->mode == CODEC2_MODE_3200)
-       codec2_encode_3200(c2, bits, speech);
-    if (c2->mode == CODEC2_MODE_2400)
-       codec2_encode_2400(c2, bits, speech);
-    if (c2->mode == CODEC2_MODE_1600)
-       codec2_encode_1600(c2, bits, speech);
-    if (c2->mode == CODEC2_MODE_1400)
-       codec2_encode_1400(c2, bits, speech);
-    if (c2->mode == CODEC2_MODE_1300)
-       codec2_encode_1300(c2, bits, speech);
-    if (c2->mode == CODEC2_MODE_1200)
-       codec2_encode_1200(c2, bits, speech);
-}
-
-void CODEC2_WIN32SUPPORT codec2_decode(struct CODEC2 *c2, short speech[], 
const unsigned char *bits)
-{
-    codec2_decode_ber(c2, speech, bits, 0.0);
-}
-
-void CODEC2_WIN32SUPPORT codec2_decode_ber(struct CODEC2 *c2, short speech[], 
const unsigned char *bits, float ber_est)
-{
-    assert(c2 != NULL);
-    assert(
-          (c2->mode == CODEC2_MODE_3200) ||
-          (c2->mode == CODEC2_MODE_2400) ||
-          (c2->mode == CODEC2_MODE_1600) ||
-          (c2->mode == CODEC2_MODE_1400) ||
-          (c2->mode == CODEC2_MODE_1300) ||
-          (c2->mode == CODEC2_MODE_1200)
-          );
-
-    if (c2->mode == CODEC2_MODE_3200)
-       codec2_decode_3200(c2, speech, bits);
-    if (c2->mode == CODEC2_MODE_2400)
-       codec2_decode_2400(c2, speech, bits);
-    if (c2->mode == CODEC2_MODE_1600)
-       codec2_decode_1600(c2, speech, bits);
-    if (c2->mode == CODEC2_MODE_1400)
-       codec2_decode_1400(c2, speech, bits);
-    if (c2->mode == CODEC2_MODE_1300)
-       codec2_decode_1300(c2, speech, bits, ber_est);
-    if (c2->mode == CODEC2_MODE_1200)
-       codec2_decode_1200(c2, speech, bits);
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: codec2_encode_3200
-  AUTHOR......: David Rowe
-  DATE CREATED: 13 Sep 2012
-
-  Encodes 160 speech samples (20ms of speech) into 64 bits.
-
-  The codec2 algorithm actually operates internally on 10ms (80
-  sample) frames, so we run the encoding algorithm twice.  On the
-  first frame we just send the voicing bits.  On the second frame we
-  send all model parameters.  Compared to 2400 we use a larger number
-  of bits for the LSPs and non-VQ pitch and energy.
-
-  The bit allocation is:
-
-    Parameter                      bits/frame
-    --------------------------------------
-    Harmonic magnitudes (LSPs)     50
-    Pitch (Wo)                      7
-    Energy                          5
-    Voicing (10ms update)           2
-    TOTAL                          64
-
-\*---------------------------------------------------------------------------*/
-
-void codec2_encode_3200(struct CODEC2 *c2, unsigned char * bits, short 
speech[])
-{
-    MODEL   model;
-    float   ak[LPC_ORD+1];
-    float   lsps[LPC_ORD];
-    float   e;
-    int     Wo_index, e_index;
-    int     lspd_indexes[LPC_ORD];
-    int     i;
-    unsigned int nbit = 0;
-
-    assert(c2 != NULL);
-
-    memset(bits, '\0', ((codec2_bits_per_frame(c2) + 7) / 8));
-
-    /* first 10ms analysis frame - we just want voicing */
-
-    analyse_one_frame(c2, &model, speech);
-    pack(bits, &nbit, model.voiced, 1);
-
-    /* second 10ms analysis frame */
-
-    analyse_one_frame(c2, &model, &speech[N]);
-    pack(bits, &nbit, model.voiced, 1);
-    Wo_index = encode_Wo(model.Wo);
-    pack(bits, &nbit, Wo_index, WO_BITS);
-
-    e = speech_to_uq_lsps(lsps, ak, c2->Sn, c2->w, LPC_ORD);
-    e_index = encode_energy(e);
-    pack(bits, &nbit, e_index, E_BITS);
-
-    encode_lspds_scalar(lspd_indexes, lsps, LPC_ORD);
-    for(i=0; i<LSPD_SCALAR_INDEXES; i++) {
-       pack(bits, &nbit, lspd_indexes[i], lspd_bits(i));
-    }
-    assert(nbit == (unsigned)codec2_bits_per_frame(c2));
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: codec2_decode_3200
-  AUTHOR......: David Rowe
-  DATE CREATED: 13 Sep 2012
-
-  Decodes a frame of 64 bits into 160 samples (20ms) of speech.
-
-\*---------------------------------------------------------------------------*/
-
-void codec2_decode_3200(struct CODEC2 *c2, short speech[], const unsigned char 
* bits)
-{
-    MODEL   model[2];
-    int     lspd_indexes[LPC_ORD];
-    float   lsps[2][LPC_ORD];
-    int     Wo_index, e_index;
-    float   e[2];
-    float   snr;
-    float   ak[2][LPC_ORD+1];
-    int     i,j;
-    unsigned int nbit = 0;
-
-    assert(c2 != NULL);
-
-    /* only need to zero these out due to (unused) snr calculation */
-
-    for(i=0; i<2; i++)
-       for(j=1; j<=MAX_AMP; j++)
-           model[i].A[j] = 0.0;
-
-    /* unpack bits from channel ------------------------------------*/
-
-    /* this will partially fill the model params for the 2 x 10ms
-       frames */
-
-    model[0].voiced = unpack(bits, &nbit, 1);
-    model[1].voiced = unpack(bits, &nbit, 1);
-
-    Wo_index = unpack(bits, &nbit, WO_BITS);
-    model[1].Wo = decode_Wo(Wo_index);
-    model[1].L  = PI/model[1].Wo;
-
-    e_index = unpack(bits, &nbit, E_BITS);
-    e[1] = decode_energy(e_index);
-
-    for(i=0; i<LSPD_SCALAR_INDEXES; i++) {
-       lspd_indexes[i] = unpack(bits, &nbit, lspd_bits(i));
-    }
-    decode_lspds_scalar(&lsps[1][0], lspd_indexes, LPC_ORD);
-
-    /* interpolate ------------------------------------------------*/
-
-    /* Wo and energy are sampled every 20ms, so we interpolate just 1
-       10ms frame between 20ms samples */
-
-    interp_Wo(&model[0], &c2->prev_model_dec, &model[1]);
-    e[0] = interp_energy(c2->prev_e_dec, e[1]);
-
-    /* LSPs are sampled every 20ms so we interpolate the frame in
-       between, then recover spectral amplitudes */
-
-    interpolate_lsp_ver2(&lsps[0][0], c2->prev_lsps_dec, &lsps[1][0], 0.5);
-    for(i=0; i<2; i++) {
-       lsp_to_lpc(&lsps[i][0], &ak[i][0], LPC_ORD);
-       aks_to_M2(c2->fft_fwd_cfg, &ak[i][0], LPC_ORD, &model[i], e[i], &snr, 
0, 0,
-                  c2->lpc_pf, c2->bass_boost, c2->beta, c2->gamma);
-       apply_lpc_correction(&model[i]);
-    }
-
-    /* synthesise ------------------------------------------------*/
-
-    for(i=0; i<2; i++)
-       synthesise_one_frame(c2, &speech[N*i], &model[i], &ak[i][0]);
-
-    /* update memories for next frame ----------------------------*/
-
-    c2->prev_model_dec = model[1];
-    c2->prev_e_dec = e[1];
-    for(i=0; i<LPC_ORD; i++)
-       c2->prev_lsps_dec[i] = lsps[1][i];
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: codec2_encode_2400
-  AUTHOR......: David Rowe
-  DATE CREATED: 21/8/2010
-
-  Encodes 160 speech samples (20ms of speech) into 48 bits.
-
-  The codec2 algorithm actually operates internally on 10ms (80
-  sample) frames, so we run the encoding algorithm twice.  On the
-  first frame we just send the voicing bit.  On the second frame we
-  send all model parameters.
-
-  The bit allocation is:
-
-    Parameter                      bits/frame
-    --------------------------------------
-    Harmonic magnitudes (LSPs)     36
-    Joint VQ of Energy and Wo       8
-    Voicing (10ms update)           2
-    Spare                           2
-    TOTAL                          48
-
-\*---------------------------------------------------------------------------*/
-
-void codec2_encode_2400(struct CODEC2 *c2, unsigned char * bits, short 
speech[])
-{
-    MODEL   model;
-    float   ak[LPC_ORD+1];
-    float   lsps[LPC_ORD];
-    float   e;
-    int     WoE_index;
-    int     lsp_indexes[LPC_ORD];
-    int     i;
-    int     spare = 0;
-    unsigned int nbit = 0;
-
-    assert(c2 != NULL);
-
-    memset(bits, '\0', ((codec2_bits_per_frame(c2) + 7) / 8));
-
-    /* first 10ms analysis frame - we just want voicing */
-
-    analyse_one_frame(c2, &model, speech);
-    pack(bits, &nbit, model.voiced, 1);
-
-    /* second 10ms analysis frame */
-
-    analyse_one_frame(c2, &model, &speech[N]);
-    pack(bits, &nbit, model.voiced, 1);
-
-    e = speech_to_uq_lsps(lsps, ak, c2->Sn, c2->w, LPC_ORD);
-    WoE_index = encode_WoE(&model, e, c2->xq_enc);
-    pack(bits, &nbit, WoE_index, WO_E_BITS);
-
-    encode_lsps_scalar(lsp_indexes, lsps, LPC_ORD);
-    for(i=0; i<LSP_SCALAR_INDEXES; i++) {
-       pack(bits, &nbit, lsp_indexes[i], lsp_bits(i));
-    }
-    pack(bits, &nbit, spare, 2);
-
-    assert(nbit == (unsigned)codec2_bits_per_frame(c2));
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: codec2_decode_2400
-  AUTHOR......: David Rowe
-  DATE CREATED: 21/8/2010
-
-  Decodes frames of 48 bits into 160 samples (20ms) of speech.
-
-\*---------------------------------------------------------------------------*/
-
-void codec2_decode_2400(struct CODEC2 *c2, short speech[], const unsigned char 
* bits)
-{
-    MODEL   model[2];
-    int     lsp_indexes[LPC_ORD];
-    float   lsps[2][LPC_ORD];
-    int     WoE_index;
-    float   e[2];
-    float   snr;
-    float   ak[2][LPC_ORD+1];
-    int     i,j;
-    unsigned int nbit = 0;
-
-    assert(c2 != NULL);
-
-    /* only need to zero these out due to (unused) snr calculation */
-
-    for(i=0; i<2; i++)
-       for(j=1; j<=MAX_AMP; j++)
-           model[i].A[j] = 0.0;
-
-    /* unpack bits from channel ------------------------------------*/
-
-    /* this will partially fill the model params for the 2 x 10ms
-       frames */
-
-    model[0].voiced = unpack(bits, &nbit, 1);
-
-    model[1].voiced = unpack(bits, &nbit, 1);
-    WoE_index = unpack(bits, &nbit, WO_E_BITS);
-    decode_WoE(&model[1], &e[1], c2->xq_dec, WoE_index);
-
-    for(i=0; i<LSP_SCALAR_INDEXES; i++) {
-       lsp_indexes[i] = unpack(bits, &nbit, lsp_bits(i));
-    }
-    decode_lsps_scalar(&lsps[1][0], lsp_indexes, LPC_ORD);
-    check_lsp_order(&lsps[1][0], LPC_ORD);
-    bw_expand_lsps(&lsps[1][0], LPC_ORD, 50.0, 100.0);
-
-    /* interpolate ------------------------------------------------*/
-
-    /* Wo and energy are sampled every 20ms, so we interpolate just 1
-       10ms frame between 20ms samples */
-
-    interp_Wo(&model[0], &c2->prev_model_dec, &model[1]);
-    e[0] = interp_energy(c2->prev_e_dec, e[1]);
-
-    /* LSPs are sampled every 20ms so we interpolate the frame in
-       between, then recover spectral amplitudes */
-
-    interpolate_lsp_ver2(&lsps[0][0], c2->prev_lsps_dec, &lsps[1][0], 0.5);
-    for(i=0; i<2; i++) {
-       lsp_to_lpc(&lsps[i][0], &ak[i][0], LPC_ORD);
-       aks_to_M2(c2->fft_fwd_cfg, &ak[i][0], LPC_ORD, &model[i], e[i], &snr, 
0, 0,
-                  c2->lpc_pf, c2->bass_boost, c2->beta, c2->gamma);
-       apply_lpc_correction(&model[i]);
-    }
-
-    /* synthesise ------------------------------------------------*/
-
-    for(i=0; i<2; i++)
-       synthesise_one_frame(c2, &speech[N*i], &model[i], &ak[i][0]);
-
-    /* update memories for next frame ----------------------------*/
-
-    c2->prev_model_dec = model[1];
-    c2->prev_e_dec = e[1];
-    for(i=0; i<LPC_ORD; i++)
-       c2->prev_lsps_dec[i] = lsps[1][i];
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: codec2_encode_1600
-  AUTHOR......: David Rowe
-  DATE CREATED: Feb 28 2013
-
-  Encodes 320 speech samples (40ms of speech) into 64 bits.
-
-  The codec2 algorithm actually operates internally on 10ms (80
-  sample) frames, so we run the encoding algorithm 4 times:
-
-  frame 0: voicing bit
-  frame 1: voicing bit, Wo and E
-  frame 2: voicing bit
-  frame 3: voicing bit, Wo and E, scalar LSPs
-
-  The bit allocation is:
-
-    Parameter                      frame 2  frame 4   Total
-    -------------------------------------------------------
-    Harmonic magnitudes (LSPs)      0       36        36
-    Pitch (Wo)                      7        7        14
-    Energy                          5        5        10
-    Voicing (10ms update)           2        2         4
-    TOTAL                          14       50        64
-
-\*---------------------------------------------------------------------------*/
-
-void codec2_encode_1600(struct CODEC2 *c2, unsigned char * bits, short 
speech[])
-{
-    MODEL   model;
-    float   lsps[LPC_ORD];
-    float   ak[LPC_ORD+1];
-    float   e;
-    int     lsp_indexes[LPC_ORD];
-    int     Wo_index, e_index;
-    int     i;
-    unsigned int nbit = 0;
-
-    assert(c2 != NULL);
-
-    memset(bits, '\0',  ((codec2_bits_per_frame(c2) + 7) / 8));
-
-    /* frame 1: - voicing ---------------------------------------------*/
-
-    analyse_one_frame(c2, &model, speech);
-    pack(bits, &nbit, model.voiced, 1);
-
-    /* frame 2: - voicing, scalar Wo & E -------------------------------*/
-
-    analyse_one_frame(c2, &model, &speech[N]);
-    pack(bits, &nbit, model.voiced, 1);
-
-    Wo_index = encode_Wo(model.Wo);
-    pack(bits, &nbit, Wo_index, WO_BITS);
-
-    /* need to run this just to get LPC energy */
-    e = speech_to_uq_lsps(lsps, ak, c2->Sn, c2->w, LPC_ORD);
-    e_index = encode_energy(e);
-    pack(bits, &nbit, e_index, E_BITS);
-
-    /* frame 3: - voicing ---------------------------------------------*/
-
-    analyse_one_frame(c2, &model, &speech[2*N]);
-    pack(bits, &nbit, model.voiced, 1);
-
-    /* frame 4: - voicing, scalar Wo & E, scalar LSPs ------------------*/
-
-    analyse_one_frame(c2, &model, &speech[3*N]);
-    pack(bits, &nbit, model.voiced, 1);
-
-    Wo_index = encode_Wo(model.Wo);
-    pack(bits, &nbit, Wo_index, WO_BITS);
-
-    e = speech_to_uq_lsps(lsps, ak, c2->Sn, c2->w, LPC_ORD);
-    e_index = encode_energy(e);
-    pack(bits, &nbit, e_index, E_BITS);
-
-    encode_lsps_scalar(lsp_indexes, lsps, LPC_ORD);
-    for(i=0; i<LSP_SCALAR_INDEXES; i++) {
-       pack(bits, &nbit, lsp_indexes[i], lsp_bits(i));
-    }
-
-    assert(nbit == (unsigned)codec2_bits_per_frame(c2));
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: codec2_decode_1600
-  AUTHOR......: David Rowe
-  DATE CREATED: 11 May 2012
-
-  Decodes frames of 64 bits into 320 samples (40ms) of speech.
-
-\*---------------------------------------------------------------------------*/
-
-void codec2_decode_1600(struct CODEC2 *c2, short speech[], const unsigned char 
* bits)
-{
-    MODEL   model[4];
-    int     lsp_indexes[LPC_ORD];
-    float   lsps[4][LPC_ORD];
-    int     Wo_index, e_index;
-    float   e[4];
-    float   snr;
-    float   ak[4][LPC_ORD+1];
-    int     i,j;
-    unsigned int nbit = 0;
-    float   weight;
-
-    assert(c2 != NULL);
-
-    /* only need to zero these out due to (unused) snr calculation */
-
-    for(i=0; i<4; i++)
-       for(j=1; j<=MAX_AMP; j++)
-           model[i].A[j] = 0.0;
-
-    /* unpack bits from channel ------------------------------------*/
-
-    /* this will partially fill the model params for the 4 x 10ms
-       frames */
-
-    model[0].voiced = unpack(bits, &nbit, 1);
-
-    model[1].voiced = unpack(bits, &nbit, 1);
-    Wo_index = unpack(bits, &nbit, WO_BITS);
-    model[1].Wo = decode_Wo(Wo_index);
-    model[1].L  = PI/model[1].Wo;
-
-    e_index = unpack(bits, &nbit, E_BITS);
-    e[1] = decode_energy(e_index);
-
-    model[2].voiced = unpack(bits, &nbit, 1);
-
-    model[3].voiced = unpack(bits, &nbit, 1);
-    Wo_index = unpack(bits, &nbit, WO_BITS);
-    model[3].Wo = decode_Wo(Wo_index);
-    model[3].L  = PI/model[3].Wo;
-
-    e_index = unpack(bits, &nbit, E_BITS);
-    e[3] = decode_energy(e_index);
-
-    for(i=0; i<LSP_SCALAR_INDEXES; i++) {
-       lsp_indexes[i] = unpack(bits, &nbit, lsp_bits(i));
-    }
-    decode_lsps_scalar(&lsps[3][0], lsp_indexes, LPC_ORD);
-    check_lsp_order(&lsps[3][0], LPC_ORD);
-    bw_expand_lsps(&lsps[3][0], LPC_ORD, 50.0, 100.0);
-
-    /* interpolate ------------------------------------------------*/
-
-    /* Wo and energy are sampled every 20ms, so we interpolate just 1
-       10ms frame between 20ms samples */
-
-    interp_Wo(&model[0], &c2->prev_model_dec, &model[1]);
-    e[0] = interp_energy(c2->prev_e_dec, e[1]);
-    interp_Wo(&model[2], &model[1], &model[3]);
-    e[2] = interp_energy(e[1], e[3]);
-
-    /* LSPs are sampled every 40ms so we interpolate the 3 frames in
-       between, then recover spectral amplitudes */
-
-    for(i=0, weight=0.25; i<3; i++, weight += 0.25) {
-       interpolate_lsp_ver2(&lsps[i][0], c2->prev_lsps_dec, &lsps[3][0], 
weight);
-    }
-    for(i=0; i<4; i++) {
-       lsp_to_lpc(&lsps[i][0], &ak[i][0], LPC_ORD);
-       aks_to_M2(c2->fft_fwd_cfg, &ak[i][0], LPC_ORD, &model[i], e[i], &snr, 
0, 0,
-                  c2->lpc_pf, c2->bass_boost, c2->beta, c2->gamma);
-       apply_lpc_correction(&model[i]);
-    }
-
-    /* synthesise ------------------------------------------------*/
-
-    for(i=0; i<4; i++)
-       synthesise_one_frame(c2, &speech[N*i], &model[i], &ak[i][0]);
-
-    /* update memories for next frame ----------------------------*/
-
-    c2->prev_model_dec = model[3];
-    c2->prev_e_dec = e[3];
-    for(i=0; i<LPC_ORD; i++)
-       c2->prev_lsps_dec[i] = lsps[3][i];
-
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: codec2_encode_1400
-  AUTHOR......: David Rowe
-  DATE CREATED: May 11 2012
-
-  Encodes 320 speech samples (40ms of speech) into 56 bits.
-
-  The codec2 algorithm actually operates internally on 10ms (80
-  sample) frames, so we run the encoding algorithm 4 times:
-
-  frame 0: voicing bit
-  frame 1: voicing bit, joint VQ of Wo and E
-  frame 2: voicing bit
-  frame 3: voicing bit, joint VQ of Wo and E, scalar LSPs
-
-  The bit allocation is:
-
-    Parameter                      frame 2  frame 4   Total
-    -------------------------------------------------------
-    Harmonic magnitudes (LSPs)      0       36        36
-    Energy+Wo                       8        8        16
-    Voicing (10ms update)           2        2         4
-    TOTAL                          10       46        56
-
-\*---------------------------------------------------------------------------*/
-
-void codec2_encode_1400(struct CODEC2 *c2, unsigned char * bits, short 
speech[])
-{
-    MODEL   model;
-    float   lsps[LPC_ORD];
-    float   ak[LPC_ORD+1];
-    float   e;
-    int     lsp_indexes[LPC_ORD];
-    int     WoE_index;
-    int     i;
-    unsigned int nbit = 0;
-
-    assert(c2 != NULL);
-
-    memset(bits, '\0',  ((codec2_bits_per_frame(c2) + 7) / 8));
-
-    /* frame 1: - voicing ---------------------------------------------*/
-
-    analyse_one_frame(c2, &model, speech);
-    pack(bits, &nbit, model.voiced, 1);
-
-    /* frame 2: - voicing, joint Wo & E -------------------------------*/
-
-    analyse_one_frame(c2, &model, &speech[N]);
-    pack(bits, &nbit, model.voiced, 1);
-
-    /* need to run this just to get LPC energy */
-    e = speech_to_uq_lsps(lsps, ak, c2->Sn, c2->w, LPC_ORD);
-
-    WoE_index = encode_WoE(&model, e, c2->xq_enc);
-    pack(bits, &nbit, WoE_index, WO_E_BITS);
-
-    /* frame 3: - voicing ---------------------------------------------*/
-
-    analyse_one_frame(c2, &model, &speech[2*N]);
-    pack(bits, &nbit, model.voiced, 1);
-
-    /* frame 4: - voicing, joint Wo & E, scalar LSPs ------------------*/
-
-    analyse_one_frame(c2, &model, &speech[3*N]);
-    pack(bits, &nbit, model.voiced, 1);
-
-    e = speech_to_uq_lsps(lsps, ak, c2->Sn, c2->w, LPC_ORD);
-    WoE_index = encode_WoE(&model, e, c2->xq_enc);
-    pack(bits, &nbit, WoE_index, WO_E_BITS);
-
-    encode_lsps_scalar(lsp_indexes, lsps, LPC_ORD);
-    for(i=0; i<LSP_SCALAR_INDEXES; i++) {
-       pack(bits, &nbit, lsp_indexes[i], lsp_bits(i));
-    }
-
-    assert(nbit == (unsigned)codec2_bits_per_frame(c2));
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: codec2_decode_1400
-  AUTHOR......: David Rowe
-  DATE CREATED: 11 May 2012
-
-  Decodes frames of 56 bits into 320 samples (40ms) of speech.
-
-\*---------------------------------------------------------------------------*/
-
-void codec2_decode_1400(struct CODEC2 *c2, short speech[], const unsigned char 
* bits)
-{
-    MODEL   model[4];
-    int     lsp_indexes[LPC_ORD];
-    float   lsps[4][LPC_ORD];
-    int     WoE_index;
-    float   e[4];
-    float   snr;
-    float   ak[4][LPC_ORD+1];
-    int     i,j;
-    unsigned int nbit = 0;
-    float   weight;
-
-    assert(c2 != NULL);
-
-    /* only need to zero these out due to (unused) snr calculation */
-
-    for(i=0; i<4; i++)
-       for(j=1; j<=MAX_AMP; j++)
-           model[i].A[j] = 0.0;
-
-    /* unpack bits from channel ------------------------------------*/
-
-    /* this will partially fill the model params for the 4 x 10ms
-       frames */
-
-    model[0].voiced = unpack(bits, &nbit, 1);
-
-    model[1].voiced = unpack(bits, &nbit, 1);
-    WoE_index = unpack(bits, &nbit, WO_E_BITS);
-    decode_WoE(&model[1], &e[1], c2->xq_dec, WoE_index);
-
-    model[2].voiced = unpack(bits, &nbit, 1);
-
-    model[3].voiced = unpack(bits, &nbit, 1);
-    WoE_index = unpack(bits, &nbit, WO_E_BITS);
-    decode_WoE(&model[3], &e[3], c2->xq_dec, WoE_index);
-
-    for(i=0; i<LSP_SCALAR_INDEXES; i++) {
-       lsp_indexes[i] = unpack(bits, &nbit, lsp_bits(i));
-    }
-    decode_lsps_scalar(&lsps[3][0], lsp_indexes, LPC_ORD);
-    check_lsp_order(&lsps[3][0], LPC_ORD);
-    bw_expand_lsps(&lsps[3][0], LPC_ORD, 50.0, 100.0);
-
-    /* interpolate ------------------------------------------------*/
-
-    /* Wo and energy are sampled every 20ms, so we interpolate just 1
-       10ms frame between 20ms samples */
-
-    interp_Wo(&model[0], &c2->prev_model_dec, &model[1]);
-    e[0] = interp_energy(c2->prev_e_dec, e[1]);
-    interp_Wo(&model[2], &model[1], &model[3]);
-    e[2] = interp_energy(e[1], e[3]);
-
-    /* LSPs are sampled every 40ms so we interpolate the 3 frames in
-       between, then recover spectral amplitudes */
-
-    for(i=0, weight=0.25; i<3; i++, weight += 0.25) {
-       interpolate_lsp_ver2(&lsps[i][0], c2->prev_lsps_dec, &lsps[3][0], 
weight);
-    }
-    for(i=0; i<4; i++) {
-       lsp_to_lpc(&lsps[i][0], &ak[i][0], LPC_ORD);
-       aks_to_M2(c2->fft_fwd_cfg, &ak[i][0], LPC_ORD, &model[i], e[i], &snr, 
0, 0,
-                  c2->lpc_pf, c2->bass_boost, c2->beta, c2->gamma);
-       apply_lpc_correction(&model[i]);
-    }
-
-    /* synthesise ------------------------------------------------*/
-
-    for(i=0; i<4; i++)
-       synthesise_one_frame(c2, &speech[N*i], &model[i], &ak[i][0]);
-
-    /* update memories for next frame ----------------------------*/
-
-    c2->prev_model_dec = model[3];
-    c2->prev_e_dec = e[3];
-    for(i=0; i<LPC_ORD; i++)
-       c2->prev_lsps_dec[i] = lsps[3][i];
-
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: codec2_encode_1300
-  AUTHOR......: David Rowe
-  DATE CREATED: March 14 2013
-
-  Encodes 320 speech samples (40ms of speech) into 52 bits.
-
-  The codec2 algorithm actually operates internally on 10ms (80
-  sample) frames, so we run the encoding algorithm 4 times:
-
-  frame 0: voicing bit
-  frame 1: voicing bit,
-  frame 2: voicing bit
-  frame 3: voicing bit, Wo and E, scalar LSPs
-
-  The bit allocation is:
-
-    Parameter                      frame 2  frame 4   Total
-    -------------------------------------------------------
-    Harmonic magnitudes (LSPs)      0       36        36
-    Pitch (Wo)                      0        7         7
-    Energy                          0        5         5
-    Voicing (10ms update)           2        2         4
-    TOTAL                           2       50        52
-
-\*---------------------------------------------------------------------------*/
-
-void codec2_encode_1300(struct CODEC2 *c2, unsigned char * bits, short 
speech[])
-{
-    MODEL   model;
-    float   lsps[LPC_ORD];
-    float   ak[LPC_ORD+1];
-    float   e;
-    int     lsp_indexes[LPC_ORD];
-    int     Wo_index, e_index;
-    int     i;
-    unsigned int nbit = 0;
-    #ifdef TIMER
-    unsigned int quant_start;
-    #endif
-
-    assert(c2 != NULL);
-
-    memset(bits, '\0',  ((codec2_bits_per_frame(c2) + 7) / 8));
-
-    /* frame 1: - voicing ---------------------------------------------*/
-
-    analyse_one_frame(c2, &model, speech);
-    pack_natural_or_gray(bits, &nbit, model.voiced, 1, c2->gray);
-
-    /* frame 2: - voicing ---------------------------------------------*/
-
-    analyse_one_frame(c2, &model, &speech[N]);
-    pack_natural_or_gray(bits, &nbit, model.voiced, 1, c2->gray);
-
-    /* frame 3: - voicing ---------------------------------------------*/
-
-    analyse_one_frame(c2, &model, &speech[2*N]);
-    pack_natural_or_gray(bits, &nbit, model.voiced, 1, c2->gray);
-
-    /* frame 4: - voicing, scalar Wo & E, scalar LSPs ------------------*/
-
-    analyse_one_frame(c2, &model, &speech[3*N]);
-    pack_natural_or_gray(bits, &nbit, model.voiced, 1, c2->gray);
-
-    Wo_index = encode_Wo(model.Wo);
-    pack_natural_or_gray(bits, &nbit, Wo_index, WO_BITS, c2->gray);
-
-    #ifdef TIMER
-    quant_start = machdep_timer_sample();
-    #endif
-    e = speech_to_uq_lsps(lsps, ak, c2->Sn, c2->w, LPC_ORD);
-    e_index = encode_energy(e);
-    pack_natural_or_gray(bits, &nbit, e_index, E_BITS, c2->gray);
-
-    encode_lsps_scalar(lsp_indexes, lsps, LPC_ORD);
-    for(i=0; i<LSP_SCALAR_INDEXES; i++) {
-       pack_natural_or_gray(bits, &nbit, lsp_indexes[i], lsp_bits(i), 
c2->gray);
-    }
-    #ifdef TIMER
-    machdep_timer_sample_and_log(quant_start, "    quant/packing");
-    #endif
-
-    assert(nbit == (unsigned)codec2_bits_per_frame(c2));
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: codec2_decode_1300
-  AUTHOR......: David Rowe
-  DATE CREATED: 11 May 2012
-
-  Decodes frames of 52 bits into 320 samples (40ms) of speech.
-
-\*---------------------------------------------------------------------------*/
-
-void codec2_decode_1300(struct CODEC2 *c2, short speech[], const unsigned char 
* bits, float ber_est)
-{
-    MODEL   model[4];
-    int     lsp_indexes[LPC_ORD];
-    float   lsps[4][LPC_ORD];
-    int     Wo_index, e_index;
-    float   e[4];
-    float   snr;
-    float   ak[4][LPC_ORD+1];
-    int     i,j;
-    unsigned int nbit = 0;
-    float   weight;
-    TIMER_VAR(recover_start);
-
-    assert(c2 != NULL);
-
-    /* only need to zero these out due to (unused) snr calculation */
-
-    for(i=0; i<4; i++)
-       for(j=1; j<=MAX_AMP; j++)
-           model[i].A[j] = 0.0;
-
-    /* unpack bits from channel ------------------------------------*/
-
-    /* this will partially fill the model params for the 4 x 10ms
-       frames */
-
-    model[0].voiced = unpack_natural_or_gray(bits, &nbit, 1, c2->gray);
-    model[1].voiced = unpack_natural_or_gray(bits, &nbit, 1, c2->gray);
-    model[2].voiced = unpack_natural_or_gray(bits, &nbit, 1, c2->gray);
-    model[3].voiced = unpack_natural_or_gray(bits, &nbit, 1, c2->gray);
-
-    Wo_index = unpack_natural_or_gray(bits, &nbit, WO_BITS, c2->gray);
-    model[3].Wo = decode_Wo(Wo_index);
-    model[3].L  = PI/model[3].Wo;
-
-    e_index = unpack_natural_or_gray(bits, &nbit, E_BITS, c2->gray);
-    e[3] = decode_energy(e_index);
-
-    for(i=0; i<LSP_SCALAR_INDEXES; i++) {
-       lsp_indexes[i] = unpack_natural_or_gray(bits, &nbit, lsp_bits(i), 
c2->gray);
-    }
-    decode_lsps_scalar(&lsps[3][0], lsp_indexes, LPC_ORD);
-    check_lsp_order(&lsps[3][0], LPC_ORD);
-    bw_expand_lsps(&lsps[3][0], LPC_ORD, 50.0, 100.0);
-
-    if (ber_est > 0.15) {
-        model[0].voiced =  model[1].voiced = model[2].voiced = model[3].voiced 
= 0;
-        e[3] = decode_energy(10);
-        bw_expand_lsps(&lsps[3][0], LPC_ORD, 200.0, 200.0);
-        fprintf(stderr, "soft mute\n");
-    }
-
-    /* interpolate ------------------------------------------------*/
-
-    /* Wo, energy, and LSPs are sampled every 40ms so we interpolate
-       the 3 frames in between */
-
-    TIMER_SAMPLE(recover_start);
-    for(i=0, weight=0.25; i<3; i++, weight += 0.25) {
-       interpolate_lsp_ver2(&lsps[i][0], c2->prev_lsps_dec, &lsps[3][0], 
weight);
-        interp_Wo2(&model[i], &c2->prev_model_dec, &model[3], weight);
-        e[i] = interp_energy2(c2->prev_e_dec, e[3],weight);
-    }
-
-    /* then recover spectral amplitudes */
-
-    for(i=0; i<4; i++) {
-       lsp_to_lpc(&lsps[i][0], &ak[i][0], LPC_ORD);
-       aks_to_M2(c2->fft_fwd_cfg, &ak[i][0], LPC_ORD, &model[i], e[i], &snr, 
0, 0,
-                  c2->lpc_pf, c2->bass_boost, c2->beta, c2->gamma);
-       apply_lpc_correction(&model[i]);
-    }
-    TIMER_SAMPLE_AND_LOG2(recover_start, "    recover");
-    #ifdef DUMP
-    dump_lsp_(&lsps[3][0]);
-    dump_ak_(&ak[3][0], LPC_ORD);
-    #endif
-
-    /* synthesise ------------------------------------------------*/
-
-    for(i=0; i<4; i++)
-       synthesise_one_frame(c2, &speech[N*i], &model[i], &ak[i][0]);
-
-    /* update memories for next frame ----------------------------*/
-
-    c2->prev_model_dec = model[3];
-    c2->prev_e_dec = e[3];
-    for(i=0; i<LPC_ORD; i++)
-       c2->prev_lsps_dec[i] = lsps[3][i];
-
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: codec2_encode_1200
-  AUTHOR......: David Rowe
-  DATE CREATED: Nov 14 2011
-
-  Encodes 320 speech samples (40ms of speech) into 48 bits.
-
-  The codec2 algorithm actually operates internally on 10ms (80
-  sample) frames, so we run the encoding algorithm four times:
-
-  frame 0: voicing bit
-  frame 1: voicing bit, joint VQ of Wo and E
-  frame 2: voicing bit
-  frame 3: voicing bit, joint VQ of Wo and E, VQ LSPs
-
-  The bit allocation is:
-
-    Parameter                      frame 2  frame 4   Total
-    -------------------------------------------------------
-    Harmonic magnitudes (LSPs)      0       27        27
-    Energy+Wo                       8        8        16
-    Voicing (10ms update)           2        2         4
-    Spare                           0        1         1
-    TOTAL                          10       38        48
-
-\*---------------------------------------------------------------------------*/
-
-void codec2_encode_1200(struct CODEC2 *c2, unsigned char * bits, short 
speech[])
-{
-    MODEL   model;
-    float   lsps[LPC_ORD];
-    float   lsps_[LPC_ORD];
-    float   ak[LPC_ORD+1];
-    float   e;
-    int     lsp_indexes[LPC_ORD];
-    int     WoE_index;
-    int     i;
-    int     spare = 0;
-    unsigned int nbit = 0;
-
-    assert(c2 != NULL);
-
-    memset(bits, '\0',  ((codec2_bits_per_frame(c2) + 7) / 8));
-
-    /* frame 1: - voicing ---------------------------------------------*/
-
-    analyse_one_frame(c2, &model, speech);
-    pack(bits, &nbit, model.voiced, 1);
-
-    /* frame 2: - voicing, joint Wo & E -------------------------------*/
-
-    analyse_one_frame(c2, &model, &speech[N]);
-    pack(bits, &nbit, model.voiced, 1);
-
-    /* need to run this just to get LPC energy */
-    e = speech_to_uq_lsps(lsps, ak, c2->Sn, c2->w, LPC_ORD);
-
-    WoE_index = encode_WoE(&model, e, c2->xq_enc);
-    pack(bits, &nbit, WoE_index, WO_E_BITS);
-
-    /* frame 3: - voicing ---------------------------------------------*/
-
-    analyse_one_frame(c2, &model, &speech[2*N]);
-    pack(bits, &nbit, model.voiced, 1);
-
-    /* frame 4: - voicing, joint Wo & E, scalar LSPs ------------------*/
-
-    analyse_one_frame(c2, &model, &speech[3*N]);
-    pack(bits, &nbit, model.voiced, 1);
-
-    e = speech_to_uq_lsps(lsps, ak, c2->Sn, c2->w, LPC_ORD);
-    WoE_index = encode_WoE(&model, e, c2->xq_enc);
-    pack(bits, &nbit, WoE_index, WO_E_BITS);
-
-    encode_lsps_vq(lsp_indexes, lsps, lsps_, LPC_ORD);
-    for(i=0; i<LSP_PRED_VQ_INDEXES; i++) {
-       pack(bits, &nbit, lsp_indexes[i], lsp_pred_vq_bits(i));
-    }
-    pack(bits, &nbit, spare, 1);
-
-    assert(nbit == (unsigned)codec2_bits_per_frame(c2));
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: codec2_decode_1200
-  AUTHOR......: David Rowe
-  DATE CREATED: 14 Feb 2012
-
-  Decodes frames of 48 bits into 320 samples (40ms) of speech.
-
-\*---------------------------------------------------------------------------*/
-
-void codec2_decode_1200(struct CODEC2 *c2, short speech[], const unsigned char 
* bits)
-{
-    MODEL   model[4];
-    int     lsp_indexes[LPC_ORD];
-    float   lsps[4][LPC_ORD];
-    int     WoE_index;
-    float   e[4];
-    float   snr;
-    float   ak[4][LPC_ORD+1];
-    int     i,j;
-    unsigned int nbit = 0;
-    float   weight;
-
-    assert(c2 != NULL);
-
-    /* only need to zero these out due to (unused) snr calculation */
-
-    for(i=0; i<4; i++)
-       for(j=1; j<=MAX_AMP; j++)
-           model[i].A[j] = 0.0;
-
-    /* unpack bits from channel ------------------------------------*/
-
-    /* this will partially fill the model params for the 4 x 10ms
-       frames */
-
-    model[0].voiced = unpack(bits, &nbit, 1);
-
-    model[1].voiced = unpack(bits, &nbit, 1);
-    WoE_index = unpack(bits, &nbit, WO_E_BITS);
-    decode_WoE(&model[1], &e[1], c2->xq_dec, WoE_index);
-
-    model[2].voiced = unpack(bits, &nbit, 1);
-
-    model[3].voiced = unpack(bits, &nbit, 1);
-    WoE_index = unpack(bits, &nbit, WO_E_BITS);
-    decode_WoE(&model[3], &e[3], c2->xq_dec, WoE_index);
-
-    for(i=0; i<LSP_PRED_VQ_INDEXES; i++) {
-       lsp_indexes[i] = unpack(bits, &nbit, lsp_pred_vq_bits(i));
-    }
-    decode_lsps_vq(lsp_indexes, &lsps[3][0], LPC_ORD);
-    check_lsp_order(&lsps[3][0], LPC_ORD);
-    bw_expand_lsps(&lsps[3][0], LPC_ORD, 50.0, 100.0);
-
-    /* interpolate ------------------------------------------------*/
-
-    /* Wo and energy are sampled every 20ms, so we interpolate just 1
-       10ms frame between 20ms samples */
-
-    interp_Wo(&model[0], &c2->prev_model_dec, &model[1]);
-    e[0] = interp_energy(c2->prev_e_dec, e[1]);
-    interp_Wo(&model[2], &model[1], &model[3]);
-    e[2] = interp_energy(e[1], e[3]);
-
-    /* LSPs are sampled every 40ms so we interpolate the 3 frames in
-       between, then recover spectral amplitudes */
-
-    for(i=0, weight=0.25; i<3; i++, weight += 0.25) {
-       interpolate_lsp_ver2(&lsps[i][0], c2->prev_lsps_dec, &lsps[3][0], 
weight);
-    }
-    for(i=0; i<4; i++) {
-       lsp_to_lpc(&lsps[i][0], &ak[i][0], LPC_ORD);
-       aks_to_M2(c2->fft_fwd_cfg, &ak[i][0], LPC_ORD, &model[i], e[i], &snr, 
0, 0,
-                  c2->lpc_pf, c2->bass_boost, c2->beta, c2->gamma);
-       apply_lpc_correction(&model[i]);
-    }
-
-    /* synthesise ------------------------------------------------*/
-
-    for(i=0; i<4; i++)
-       synthesise_one_frame(c2, &speech[N*i], &model[i], &ak[i][0]);
-
-    /* update memories for next frame ----------------------------*/
-
-    c2->prev_model_dec = model[3];
-    c2->prev_e_dec = e[3];
-    for(i=0; i<LPC_ORD; i++)
-       c2->prev_lsps_dec[i] = lsps[3][i];
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: synthesise_one_frame()
-  AUTHOR......: David Rowe
-  DATE CREATED: 23/8/2010
-
-  Synthesise 80 speech samples (10ms) from model parameters.
-
-\*---------------------------------------------------------------------------*/
-
-void synthesise_one_frame(struct CODEC2 *c2, short speech[], MODEL *model, 
float ak[])
-{
-    int     i;
-    TIMER_VAR(phase_start, pf_start, synth_start);
-
-    #ifdef DUMP
-    dump_quantised_model(model);
-    #endif
-
-    TIMER_SAMPLE(phase_start);
-
-    phase_synth_zero_order(c2->fft_fwd_cfg, model, ak, &c2->ex_phase, LPC_ORD);
-
-    TIMER_SAMPLE_AND_LOG(pf_start,phase_start, "    phase_synth");
-
-    postfilter(model, &c2->bg_est);
-
-    TIMER_SAMPLE_AND_LOG(synth_start, pf_start, "    postfilter");
-
-    synthesise(c2->fft_inv_cfg, c2->Sn_, model, c2->Pn, 1);
-
-    TIMER_SAMPLE_AND_LOG2(synth_start, "    synth");
-
-    ear_protection(c2->Sn_, N);
-
-    for(i=0; i<N; i++) {
-       if (c2->Sn_[i] > 32767.0)
-           speech[i] = 32767;
-       else if (c2->Sn_[i] < -32767.0)
-           speech[i] = -32767;
-       else
-           speech[i] = c2->Sn_[i];
-    }
-
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: analyse_one_frame()
-  AUTHOR......: David Rowe
-  DATE CREATED: 23/8/2010
-
-  Extract sinusoidal model parameters from 80 speech samples (10ms of
-  speech).
-
-\*---------------------------------------------------------------------------*/
-
-void analyse_one_frame(struct CODEC2 *c2, MODEL *model, short speech[])
-{
-    COMP    Sw[FFT_ENC];
-    COMP    Sw_[FFT_ENC];
-    COMP    Ew[FFT_ENC];
-    float   pitch;
-    int     i;
-    TIMER_VAR(dft_start, nlp_start, model_start, two_stage, estamps);
-
-    /* Read input speech */
-
-    for(i=0; i<M-N; i++)
-      c2->Sn[i] = c2->Sn[i+N];
-    for(i=0; i<N; i++)
-      c2->Sn[i+M-N] = speech[i];
-
-    TIMER_SAMPLE(dft_start);
-    dft_speech(c2->fft_fwd_cfg, Sw, c2->Sn, c2->w);
-    TIMER_SAMPLE_AND_LOG(nlp_start, dft_start, "    dft_speech");
-
-    /* Estimate pitch */
-
-    nlp(c2->nlp,c2->Sn,N,P_MIN,P_MAX,&pitch,Sw, c2->W, &c2->prev_Wo_enc);
-    TIMER_SAMPLE_AND_LOG(model_start, nlp_start, "    nlp");
-
-    model->Wo = TWO_PI/pitch;
-    model->L = PI/model->Wo;
-
-    /* estimate model parameters */
-
-    two_stage_pitch_refinement(model, Sw);
-    TIMER_SAMPLE_AND_LOG(two_stage, model_start, "    two_stage");
-    estimate_amplitudes(model, Sw, c2->W, 0);
-    TIMER_SAMPLE_AND_LOG(estamps, two_stage, "    est_amps");
-    est_voicing_mbe(model, Sw, c2->W, Sw_, Ew, c2->prev_Wo_enc);
-    c2->prev_Wo_enc = model->Wo;
-    TIMER_SAMPLE_AND_LOG2(estamps, "    est_voicing");
-    #ifdef DUMP
-    dump_model(model);
-    #endif
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: ear_protection()
-  AUTHOR......: David Rowe
-  DATE CREATED: Nov 7 2012
-
-  Limits output level to protect ears when there are bit errors or the input
-  is overdriven.  This doesn't correct or mask bit erros, just reduces the
-  worst of their damage.
-
-\*---------------------------------------------------------------------------*/
-
-static void ear_protection(float in_out[], int n) {
-    float max_sample, over, gain;
-    int   i;
-
-    /* find maximum sample in frame */
-
-    max_sample = 0.0;
-    for(i=0; i<n; i++)
-        if (in_out[i] > max_sample)
-            max_sample = in_out[i];
-
-    /* determine how far above set point */
-
-    over = max_sample/30000.0;
-
-    /* If we are x dB over set point we reduce level by 2x dB, this
-       attenuates major excursions in amplitude (likely to be caused
-       by bit errors) more than smaller ones */
-
-    if (over > 1.0) {
-        gain = 1.0/(over*over);
-        //fprintf(stderr, "gain: %f\n", gain);
-        for(i=0; i<n; i++)
-            in_out[i] *= gain;
-    }
-}
-
-void CODEC2_WIN32SUPPORT codec2_set_lpc_post_filter(struct CODEC2 *c2, int 
enable, int bass_boost, float beta, float gamma)
-{
-    assert((beta >= 0.0) && (beta <= 1.0));
-    assert((gamma >= 0.0) && (gamma <= 1.0));
-    c2->lpc_pf = enable;
-    c2->bass_boost = bass_boost;
-    c2->beta = beta;
-    c2->gamma = gamma;
-}
-
-/*
-   Allows optional stealing of one of the voicing bits for use as a
-   spare bit, only 1300 & 1400 & 1600 bit/s supported for now.
-   Experimental method of sending voice/data frames for FreeDV.
-*/
-
-int CODEC2_WIN32SUPPORT codec2_get_spare_bit_index(struct CODEC2 *c2)
-{
-    assert(c2 != NULL);
-
-    switch(c2->mode) {
-    case CODEC2_MODE_1300:
-        return 2; // bit 2 (3th bit) is v2 (third voicing bit)
-        break;
-    case CODEC2_MODE_1400:
-        return 10; // bit 10 (11th bit) is v2 (third voicing bit)
-        break;
-    case CODEC2_MODE_1600:
-        return 15; // bit 15 (16th bit) is v2 (third voicing bit)
-        break;
-    }
-
-    return -1;
-}
-
-/*
-   Reconstructs the spare voicing bit.  Note works on unpacked bits
-   for convenience.
-*/
-
-int CODEC2_WIN32SUPPORT codec2_rebuild_spare_bit(struct CODEC2 *c2, int 
unpacked_bits[])
-{
-    int v1,v3;
-
-    assert(c2 != NULL);
-
-    v1 = unpacked_bits[1];
-
-    switch(c2->mode) {
-    case CODEC2_MODE_1300:
-
-        v3 = unpacked_bits[1+1+1];
-
-        /* if either adjacent frame is voiced, make this one voiced */
-
-        unpacked_bits[2] = (v1 || v3);
-
-        return 0;
-
-        break;
-
-    case CODEC2_MODE_1400:
-
-        v3 = unpacked_bits[1+1+8+1];
-
-        /* if either adjacent frame is voiced, make this one voiced */
-
-        unpacked_bits[10] = (v1 || v3);
-
-        return 0;
-
-        break;
-
-    case CODEC2_MODE_1600:
-        v3 = unpacked_bits[1+1+8+5+1];
-
-        /* if either adjacent frame is voiced, make this one voiced */
-
-        unpacked_bits[15] = (v1 || v3);
-
-        return 0;
-
-        break;
-    }
-
-    return -1;
-}
-
-void CODEC2_WIN32SUPPORT codec2_set_natural_or_gray(struct CODEC2 *c2, int 
gray)
-{
-    assert(c2 != NULL);
-    c2->gray = gray;
-}
-
diff --git a/gr-vocoder/lib/codec2/codec2.h b/gr-vocoder/lib/codec2/codec2.h
deleted file mode 100644
index 1e870db..0000000
--- a/gr-vocoder/lib/codec2/codec2.h
+++ /dev/null
@@ -1,76 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: codec2.h
-  AUTHOR......: David Rowe
-  DATE CREATED: 21 August 2010
-
-  Codec 2 fully quantised encoder and decoder functions.  If you want use
-  Codec 2, these are the functions you need to call.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2010 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#ifdef __cplusplus
-  extern "C" {
-#endif
-
-#ifndef __CODEC2__
-#define  __CODEC2__
-
-/* set up the calling convention for DLL function import/export for
-   WIN32 cross compiling */
-
-#ifdef __CODEC2_WIN32__
-#ifdef __CODEC2_BUILDING_DLL__
-#define CODEC2_WIN32SUPPORT __declspec(dllexport) __stdcall
-#else
-#define CODEC2_WIN32SUPPORT __declspec(dllimport) __stdcall
-#endif
-#else
-#define CODEC2_WIN32SUPPORT
-#endif
-
-#define CODEC2_MODE_3200 0
-#define CODEC2_MODE_2400 1
-#define CODEC2_MODE_1600 2
-#define CODEC2_MODE_1400 3
-#define CODEC2_MODE_1300 4
-#define CODEC2_MODE_1200 5
-
-struct CODEC2;
-
-struct CODEC2 * CODEC2_WIN32SUPPORT codec2_create(int mode);
-void CODEC2_WIN32SUPPORT codec2_destroy(struct CODEC2 *codec2_state);
-void CODEC2_WIN32SUPPORT codec2_encode(struct CODEC2 *codec2_state, unsigned 
char * bits, short speech_in[]);
-void CODEC2_WIN32SUPPORT codec2_decode(struct CODEC2 *codec2_state, short 
speech_out[], const unsigned char *bits);
-void CODEC2_WIN32SUPPORT codec2_decode_ber(struct CODEC2 *codec2_state, short 
speech_out[], const unsigned char *bits, float ber_est);
-int  CODEC2_WIN32SUPPORT codec2_samples_per_frame(struct CODEC2 *codec2_state);
-int  CODEC2_WIN32SUPPORT codec2_bits_per_frame(struct CODEC2 *codec2_state);
-
-void CODEC2_WIN32SUPPORT codec2_set_lpc_post_filter(struct CODEC2 
*codec2_state, int enable, int bass_boost, float beta, float gamma);
-int  CODEC2_WIN32SUPPORT codec2_get_spare_bit_index(struct CODEC2 
*codec2_state);
-int  CODEC2_WIN32SUPPORT codec2_rebuild_spare_bit(struct CODEC2 *codec2_state, 
int unpacked_bits[]);
-void CODEC2_WIN32SUPPORT codec2_set_natural_or_gray(struct CODEC2 
*codec2_state, int gray);
-
-#endif
-
-#ifdef __cplusplus
-}
-#endif
-
diff --git a/gr-vocoder/lib/codec2/codec2_fdmdv.h 
b/gr-vocoder/lib/codec2/codec2_fdmdv.h
deleted file mode 100644
index b7da96f..0000000
--- a/gr-vocoder/lib/codec2/codec2_fdmdv.h
+++ /dev/null
@@ -1,124 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: codec2_fdmdv.h
-  AUTHOR......: David Rowe
-  DATE CREATED: April 14 2012
-
-  A 1400 bit/s (nominal) Frequency Division Multiplexed Digital Voice
-  (FDMDV) modem.  Used for digital audio over HF SSB. See
-  README_fdmdv.txt for more information, and fdmdv_mod.c and
-  fdmdv_demod.c for example usage.
-
-  The name codec2_fdmdv.h is used to make it unique when "make
-  installed".
-
-  References:
-
-    [1] http://n1su.com/fdmdv/FDMDV_Docs_Rel_1_4b.pdf
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2012 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#ifndef __FDMDV__
-#define __FDMDV__
-
-#ifdef __cplusplus
-extern "C" {
-#endif
-
-/* set up the calling convention for DLL function import/export for
-   WIN32 cross compiling */
-
-#ifdef __CODEC2_WIN32__
-#ifdef __CODEC2_BUILDING_DLL__
-#define CODEC2_WIN32SUPPORT __declspec(dllexport) __stdcall
-#else
-#define CODEC2_WIN32SUPPORT __declspec(dllimport) __stdcall
-#endif
-#else
-#define CODEC2_WIN32SUPPORT
-#endif
-
-#include "comp.h"
-
-#define FDMDV_NC                      14  /* default number of data carriers   
                             */
-#define FDMDV_NC_MAX                  20  /* maximum number of data carriers   
                             */
-#define FDMDV_BITS_PER_FRAME          28  /* 20ms frames, for nominal 1400 
bit/s                            */
-#define FDMDV_NOM_SAMPLES_PER_FRAME  160  /* modulator output samples/frame 
and nominal demod samples/frame */
-                                          /* at 8000 Hz sample rate            
                             */
-#define FDMDV_MAX_SAMPLES_PER_FRAME  200  /* max demod samples/frame, use this 
to allocate storage          */
-#define FDMDV_SCALE                 1000  /* suggested scaling for 16 bit 
shorts                            */
-#define FDMDV_FCENTRE               1500  /* Centre frequency, Nc/2 carriers 
below this, Nc/2 carriers above (Hz) */
-
-/* 8 to 48 kHz sample rate conversion */
-
-#define FDMDV_OS                 6         /* oversampling rate           */
-#define FDMDV_OS_TAPS           48         /* number of OS filter taps    */
-
-/* FFT points */
-
-#define FDMDV_NSPEC             512
-#define FDMDV_MAX_F_HZ          4000
-
-/* FDMDV states and stats structures */
-
-struct FDMDV;
-
-struct FDMDV_STATS {
-    int    Nc;
-    float  snr_est;                    /* estimated SNR of rx signal in dB (3 
kHz noise BW)  */
-    COMP   rx_symbols[FDMDV_NC_MAX+1]; /* latest received symbols, for scatter 
plot          */
-    int    sync;                       /* demod sync state                     
              */
-    float  foff;                       /* estimated freq offset in Hz          
              */
-    float  rx_timing;                  /* estimated optimum timing offset in 
samples         */
-    float  clock_offset;               /* Estimated tx/rx sample clock offset 
in ppm         */
-};
-
-struct FDMDV * CODEC2_WIN32SUPPORT fdmdv_create(int Nc);
-void           CODEC2_WIN32SUPPORT fdmdv_destroy(struct FDMDV *fdmdv_state);
-void           CODEC2_WIN32SUPPORT fdmdv_use_old_qpsk_mapping(struct FDMDV 
*fdmdv_state);
-int            CODEC2_WIN32SUPPORT fdmdv_bits_per_frame(struct FDMDV 
*fdmdv_state);
-float          CODEC2_WIN32SUPPORT fdmdv_get_fsep(struct FDMDV *fdmdv_state);
-void           CODEC2_WIN32SUPPORT fdmdv_set_fsep(struct FDMDV *fdmdv_state, 
float fsep);
-
-void           CODEC2_WIN32SUPPORT fdmdv_mod(struct FDMDV *fdmdv_state, COMP 
tx_fdm[], int tx_bits[], int *sync_bit);
-void           CODEC2_WIN32SUPPORT fdmdv_demod(struct FDMDV *fdmdv_state, int 
rx_bits[], int *reliable_sync_bit, COMP rx_fdm[], int *nin);
-
-void           CODEC2_WIN32SUPPORT fdmdv_get_test_bits(struct FDMDV 
*fdmdv_state, int tx_bits[]);
-int            CODEC2_WIN32SUPPORT fdmdv_error_pattern_size(struct FDMDV 
*fdmdv_state);
-void           CODEC2_WIN32SUPPORT fdmdv_put_test_bits(struct FDMDV *f, int 
*sync, short error_pattern[], int *bit_errors, int *ntest_bits, int rx_bits[]);
-
-void           CODEC2_WIN32SUPPORT fdmdv_get_demod_stats(struct FDMDV 
*fdmdv_state, struct FDMDV_STATS *fdmdv_stats);
-void           CODEC2_WIN32SUPPORT fdmdv_get_rx_spectrum(struct FDMDV 
*fdmdv_state, float mag_dB[], COMP rx_fdm[], int nin);
-
-void           CODEC2_WIN32SUPPORT fdmdv_8_to_48(float out48k[], float in8k[], 
int n);
-void           CODEC2_WIN32SUPPORT fdmdv_48_to_8(float out8k[], float in48k[], 
int n);
-
-void           CODEC2_WIN32SUPPORT fdmdv_freq_shift(COMP rx_fdm_fcorr[], COMP 
rx_fdm[], float foff, COMP *foff_rect, COMP *foff_phase_rect, int nin);
-
-/* debug/development function(s) */
-
-void CODEC2_WIN32SUPPORT fdmdv_dump_osc_mags(struct FDMDV *f);
-
-#ifdef __cplusplus
-}
-#endif
-
-#endif
-
diff --git a/gr-vocoder/lib/codec2/codec2_fifo.h 
b/gr-vocoder/lib/codec2/codec2_fifo.h
deleted file mode 100644
index 9140fd7..0000000
--- a/gr-vocoder/lib/codec2/codec2_fifo.h
+++ /dev/null
@@ -1,51 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: codec2_fifo.h
-  AUTHOR......: David Rowe
-  DATE CREATED: Oct 15 2012
-
-  A FIFO design useful in gluing the FDMDV modem and codec together in
-  integrated applications.
-
-  The name codec2_fifo.h is used to make it unique when "make
-  installed".
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2012 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#ifndef __FIFO__
-#define __FIFO__
-
-#ifdef __cplusplus
-extern "C" {
-#endif
-
-struct FIFO;
-
-struct FIFO *fifo_create(int nshort);
-void fifo_destroy(struct FIFO *fifo);
-int fifo_write(struct FIFO *fifo, short data[], int n);
-int fifo_read(struct FIFO *fifo, short data[], int n);
-int fifo_used(struct FIFO *fifo);
-
-#ifdef __cplusplus
-}
-#endif
-
-#endif
diff --git a/gr-vocoder/lib/codec2/codec2_internal.h 
b/gr-vocoder/lib/codec2/codec2_internal.h
deleted file mode 100644
index c4bb1fc..0000000
--- a/gr-vocoder/lib/codec2/codec2_internal.h
+++ /dev/null
@@ -1,63 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: codec2_internal.h
-  AUTHOR......: David Rowe
-  DATE CREATED: April 16 2012
-
-  Header file for Codec2 internal states, exposed via this header
-  file to assist in testing.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2012 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#ifndef __CODEC2_INTERNAL__
-#define __CODEC2_INTERNAL__
-
-struct CODEC2 {
-    int           mode;
-    kiss_fft_cfg  fft_fwd_cfg;             /* forward FFT config               
         */
-    float         w[M];                           /* time domain hamming 
window                */
-    COMP          W[FFT_ENC];             /* DFT of w[]                        
        */
-    float         Pn[2*N];                /* trapezoidal synthesis window      
        */
-    float         Sn[M];                   /* input speech                     
         */
-    float         hpf_states[2];           /* high pass filter states          
         */
-    void         *nlp;                     /* pitch predictor states           
         */
-    int           gray;                    /* non-zero for gray encoding       
         */
-
-    kiss_fft_cfg  fft_inv_cfg;             /* inverse FFT config               
         */
-    float         Sn_[2*N];               /* synthesised output speech         
        */
-    float         ex_phase;                /* excitation model phase track     
         */
-    float         bg_est;                  /* background noise estimate for 
post filter */
-    float         prev_Wo_enc;             /* previous frame's pitch estimate  
         */
-    MODEL         prev_model_dec;          /* previous frame's model 
parameters         */
-    float         prev_lsps_dec[LPC_ORD];  /* previous frame's LSPs            
         */
-    float         prev_e_dec;              /* previous frame's LPC energy      
         */
-
-    int           lpc_pf;                  /* LPC post filter on               
         */
-    int           bass_boost;              /* LPC post filter bass boost       
         */
-    float         beta;                    /* LPC post filter parameters       
         */
-    float         gamma;
-
-    float         xq_enc[2];               /* joint pitch and energy VQ states 
         */
-    float         xq_dec[2];
-
-    int           smoothing;               /* enable smoothing for channels 
with errors */
-};
-
-#endif
diff --git a/gr-vocoder/lib/codec2/comp.h b/gr-vocoder/lib/codec2/comp.h
deleted file mode 100644
index ffc20c1..0000000
--- a/gr-vocoder/lib/codec2/comp.h
+++ /dev/null
@@ -1,38 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: comp.h
-  AUTHOR......: David Rowe
-  DATE CREATED: 24/08/09
-
-  Complex number definition.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2009 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#ifndef __COMP__
-#define __COMP__
-
-/* Complex number */
-
-typedef struct {
-  float real;
-  float imag;
-} COMP;
-
-#endif
diff --git a/gr-vocoder/lib/codec2/defines.h b/gr-vocoder/lib/codec2/defines.h
deleted file mode 100644
index 4b81357..0000000
--- a/gr-vocoder/lib/codec2/defines.h
+++ /dev/null
@@ -1,94 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: defines.h
-  AUTHOR......: David Rowe
-  DATE CREATED: 23/4/93
-
-  Defines and structures used throughout the codec.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2009 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#ifndef __DEFINES__
-#define __DEFINES__
-
-/*---------------------------------------------------------------------------*\
-
-                               DEFINES
-
-\*---------------------------------------------------------------------------*/
-
-/* General defines */
-
-#define N          80          /* number of samples per frame          */
-#define MAX_AMP    80          /* maximum number of harmonics          */
-#define PI         3.141592654 /* mathematical constant                */
-#define TWO_PI     6.283185307 /* mathematical constant                */
-#define FS         8000                /* sample rate in Hz                    
*/
-#define MAX_STR    256          /* maximum string size                  */
-
-#define NW         279          /* analysis window size                 */
-#define FFT_ENC    512         /* size of FFT used for encoder         */
-#define FFT_DEC    512         /* size of FFT used in decoder          */
-#define TW         40          /* Trapezoidal synthesis window overlap */
-#define V_THRESH   6.0          /* voicing threshold in dB              */
-#define LPC_MAX    20          /* maximum LPC order                    */
-#define LPC_ORD    10          /* phase modelling LPC order            */
-
-/* Pitch estimation defines */
-
-#define M        320           /* pitch analysis frame size            */
-#define P_MIN    20            /* minimum pitch                        */
-#define P_MAX    160           /* maximum pitch                        */
-
-/*---------------------------------------------------------------------------*\
-
-                               TYPEDEFS
-
-\*---------------------------------------------------------------------------*/
-
-/* Structure to hold model parameters for one frame */
-
-typedef struct {
-  float Wo;            /* fundamental frequency estimate in radians  */
-  int   L;             /* number of harmonics                        */
-  float A[MAX_AMP+1];  /* amplitiude of each harmonic                */
-  float phi[MAX_AMP+1];        /* phase of each harmonic                     */
-  int   voiced;                /* non-zero if this frame is voiced           */
-} MODEL;
-
-/* describes each codebook  */
-
-struct lsp_codebook {
-    int                        k;        /* dimension of vector        */
-    int                        log2m;    /* number of bits in m        */
-    int                        m;        /* elements in codebook       */
-    const float        *       cb;       /* The elements               */
-};
-
-extern const struct lsp_codebook lsp_cb[];
-extern const struct lsp_codebook lsp_cbd[];
-extern const struct lsp_codebook lsp_cbvq[];
-extern const struct lsp_codebook lsp_cbjnd[];
-extern const struct lsp_codebook lsp_cbdt[];
-extern const struct lsp_codebook lsp_cbjvm[];
-extern const struct lsp_codebook lsp_cbvqanssi[];
-extern const struct lsp_codebook ge_cb[];
-
-#endif
diff --git a/gr-vocoder/lib/codec2/dump.c b/gr-vocoder/lib/codec2/dump.c
deleted file mode 100644
index af966e5..0000000
--- a/gr-vocoder/lib/codec2/dump.c
+++ /dev/null
@@ -1,629 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: dump.c
-  AUTHOR......: David Rowe
-  DATE CREATED: 25/8/09
-
-  Routines to dump data to text files for Octave analysis.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#include "defines.h"
-#include "comp.h"
-#include "dump.h"
-#include <assert.h>
-#include <stdlib.h>
-#include <stdio.h>
-#include <string.h>
-#include <math.h>
-
-#ifdef __EMBEDDED__
-#include "gdb_stdio.h"
-#define fprintf gdb_stdio_fprintf
-#define fopen gdb_stdio_fopen
-#define fclose gdb_stdio_fclose
-#endif
-
-#ifdef DUMP
-static int dumpon = 0;
-
-static FILE *fsn = NULL;
-static FILE *fsw = NULL;
-static FILE *few = NULL;
-static FILE *fsw_ = NULL;
-static FILE *fmodel = NULL;
-static FILE *fqmodel = NULL;
-static FILE *fpwb = NULL;
-static FILE *fpw = NULL;
-static FILE *frw = NULL;
-static FILE *flsp = NULL;
-static FILE *fweights = NULL;
-static FILE *flsp_ = NULL;
-static FILE *fmel = NULL;
-static FILE *fphase = NULL;
-static FILE *fphase_ = NULL;
-static FILE *ffw = NULL;
-static FILE *fe = NULL;
-static FILE *fsq = NULL;
-static FILE *fdec = NULL;
-static FILE *fsnr = NULL;
-static FILE *flpcsnr = NULL;
-static FILE *fak = NULL;
-static FILE *fak_ = NULL;
-static FILE *fbg = NULL;
-static FILE *fE = NULL;
-static FILE *frk = NULL;
-static FILE *fhephase = NULL;
-
-static char  prefix[MAX_STR];
-
-void dump_on(char p[]) {
-    dumpon = 1;
-    strcpy(prefix, p);
-}
-
-void dump_off(){
-    if (fsn != NULL)
-       fclose(fsn);
-    if (fsw != NULL)
-       fclose(fsw);
-    if (fsw_ != NULL)
-       fclose(fsw_);
-    if (few != NULL)
-       fclose(few);
-    if (fmodel != NULL)
-       fclose(fmodel);
-    if (fqmodel != NULL)
-       fclose(fqmodel);
-    if (fpwb != NULL)
-       fclose(fpwb);
-    if (fpw != NULL)
-       fclose(fpw);
-    if (frw != NULL)
-       fclose(frw);
-    if (flsp != NULL)
-       fclose(flsp);
-    if (fweights != NULL)
-       fclose(fweights);
-    if (flsp_ != NULL)
-       fclose(flsp_);
-    if (fmel != NULL)
-       fclose(fmel);
-    if (fphase != NULL)
-       fclose(fphase);
-    if (fphase_ != NULL)
-       fclose(fphase_);
-    if (ffw != NULL)
-       fclose(ffw);
-    if (fe != NULL)
-       fclose(fe);
-    if (fsq != NULL)
-       fclose(fsq);
-    if (fdec != NULL)
-       fclose(fdec);
-    if (fsnr != NULL)
-       fclose(fsnr);
-    if (flpcsnr != NULL)
-       fclose(flpcsnr);
-    if (fak != NULL)
-       fclose(fak);
-    if (fak_ != NULL)
-       fclose(fak_);
-    if (fbg != NULL)
-       fclose(fbg);
-    if (fE != NULL)
-       fclose(fE);
-    if (frk != NULL)
-       fclose(frk);
-    if (fhephase != NULL)
-       fclose(fhephase);
-}
-
-void dump_Sn(float Sn[]) {
-    int i;
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (fsn == NULL) {
-       sprintf(s,"%s_sn.txt", prefix);
-       fsn = fopen(s, "wt");
-       assert(fsn != NULL);
-    }
-
-    /* split across two lines to avoid max line length problems */
-    /* reconstruct in Octave */
-
-    for(i=0; i<M/2; i++)
-       fprintf(fsn,"%f\t",Sn[i]);
-    fprintf(fsn,"\n");
-    for(i=M/2; i<M; i++)
-       fprintf(fsn,"%f\t",Sn[i]);
-    fprintf(fsn,"\n");
-}
-
-void dump_Sw(COMP Sw[]) {
-    int i;
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (fsw == NULL) {
-       sprintf(s,"%s_sw.txt", prefix);
-       fsw = fopen(s, "wt");
-       assert(fsw != NULL);
-    }
-
-    for(i=0; i<FFT_ENC/2; i++)
-       fprintf(fsw,"%f\t",
-               10.0*log10(Sw[i].real*Sw[i].real + Sw[i].imag*Sw[i].imag));
-    fprintf(fsw,"\n");
-}
-
-void dump_Sw_(COMP Sw_[]) {
-    int i;
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (fsw_ == NULL) {
-       sprintf(s,"%s_sw_.txt", prefix);
-       fsw_ = fopen(s, "wt");
-       assert(fsw_ != NULL);
-    }
-
-    for(i=0; i<FFT_ENC/2; i++)
-       fprintf(fsw_,"%f\t",
-               10.0*log10(Sw_[i].real*Sw_[i].real + Sw_[i].imag*Sw_[i].imag));
-    fprintf(fsw_,"\n");
-}
-
-void dump_Ew(COMP Ew[]) {
-    int i;
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (few == NULL) {
-       sprintf(s,"%s_ew.txt", prefix);
-       few = fopen(s, "wt");
-       assert(few != NULL);
-    }
-
-    for(i=0; i<FFT_ENC/2; i++)
-       fprintf(few,"%f\t",
-               10.0*log10(Ew[i].real*Ew[i].real + Ew[i].imag*Ew[i].imag));
-    fprintf(few,"\n");
-}
-
-void dump_model(MODEL *model) {
-    int l;
-    char s[MAX_STR];
-    char line[2048];
-
-    if (!dumpon) return;
-
-    if (fmodel == NULL) {
-       sprintf(s,"%s_model.txt", prefix);
-       fmodel = fopen(s, "wt");
-       assert(fmodel != NULL);
-    }
-
-    sprintf(line,"%12f %12d ", model->Wo, model->L);
-    for(l=1; l<=model->L; l++) {
-       sprintf(s,"%12f ",model->A[l]);
-        strcat(line, s);
-    }
-    for(l=model->L+1; l<=MAX_AMP; l++) {
-       sprintf(s,"%12f ", 0.0);
-        strcat(line,s);
-    }
-
-    sprintf(s,"%d\n",model->voiced);
-    strcat(line,s);
-    fprintf(fmodel,"%s",line);
-}
-
-void dump_quantised_model(MODEL *model) {
-    int l;
-    char s[MAX_STR];
-    char line[2048];
-
-    if (!dumpon) return;
-
-    if (fqmodel == NULL) {
-       sprintf(s,"%s_qmodel.txt", prefix);
-       fqmodel = fopen(s, "wt");
-       assert(fqmodel != NULL);
-    }
-
-    sprintf(line,"%12f %12d ", model->Wo, model->L);
-    for(l=1; l<=model->L; l++) {
-       sprintf(s,"%12f ",model->A[l]);
-        strcat(line, s);
-    }
-    for(l=model->L+1; l<=MAX_AMP; l++) {
-       sprintf(s,"%12f ", 0.0);
-        strcat(line, s);
-    }
-
-    sprintf(s,"%d\n",model->voiced);
-    strcat(line, s);
-    fprintf(fqmodel, "%s", line);
-}
-
-void dump_phase(float phase[], int L) {
-    int l;
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (fphase == NULL) {
-       sprintf(s,"%s_phase.txt", prefix);
-       fphase = fopen(s, "wt");
-       assert(fphase != NULL);
-    }
-
-    for(l=1; l<=L; l++)
-       fprintf(fphase,"%f\t",phase[l]);
-    for(l=L+1; l<=MAX_AMP; l++)
-       fprintf(fphase,"%f\t",0.0);
-    fprintf(fphase,"\n");
-}
-
-void dump_phase_(float phase_[], int L) {
-    int l;
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (fphase_ == NULL) {
-       sprintf(s,"%s_phase_.txt", prefix);
-       fphase_ = fopen(s, "wt");
-       assert(fphase_ != NULL);
-    }
-
-    for(l=1; l<=L; l++)
-       fprintf(fphase_,"%f\t",phase_[l]);
-    for(l=L+1; l<MAX_AMP; l++)
-       fprintf(fphase_,"%f\t",0.0);
-    fprintf(fphase_,"\n");
-}
-
-
-void dump_hephase(int ind[], int dim) {
-    int m;
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (fhephase == NULL) {
-       sprintf(s,"%s_hephase.txt", prefix);
-       fhephase = fopen(s, "wt");
-       assert(fhephase != NULL);
-    }
-
-    for(m=0; m<dim; m++)
-       fprintf(fhephase,"%d\t",ind[m]);
-    fprintf(fhephase,"\n");
-}
-
-
-void dump_snr(float snr) {
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (fsnr == NULL) {
-       sprintf(s,"%s_snr.txt", prefix);
-       fsnr = fopen(s, "wt");
-       assert(fsnr != NULL);
-    }
-
-    fprintf(fsnr,"%f\n",snr);
-}
-
-void dump_lpc_snr(float snr) {
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (flpcsnr == NULL) {
-       sprintf(s,"%s_lpc_snr.txt", prefix);
-       flpcsnr = fopen(s, "wt");
-       assert(flpcsnr != NULL);
-    }
-
-    fprintf(flpcsnr,"%f\n",snr);
-}
-
-/* Pw "before" post filter so we can plot before and after */
-
-void dump_Pwb(COMP Pwb[]) {
-    int i;
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (fpwb == NULL) {
-       sprintf(s,"%s_pwb.txt", prefix);
-       fpwb = fopen(s, "wt");
-       assert(fpwb != NULL);
-    }
-
-    for(i=0; i<FFT_ENC/2; i++)
-       fprintf(fpwb,"%f\t",Pwb[i].real);
-    fprintf(fpwb,"\n");
-}
-
-void dump_Pw(COMP Pw[]) {
-    int i;
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (fpw == NULL) {
-       sprintf(s,"%s_pw.txt", prefix);
-       fpw = fopen(s, "wt");
-       assert(fpw != NULL);
-    }
-
-    for(i=0; i<FFT_ENC/2; i++)
-       fprintf(fpw,"%f\t",Pw[i].real);
-    fprintf(fpw,"\n");
-}
-
-void dump_Rw(float Rw[]) {
-    int i;
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (frw == NULL) {
-       sprintf(s,"%s_rw.txt", prefix);
-       frw = fopen(s, "wt");
-       assert(frw != NULL);
-    }
-
-    for(i=0; i<FFT_ENC/2; i++)
-       fprintf(frw,"%f\t",Rw[i]);
-    fprintf(frw,"\n");
-}
-
-void dump_weights(float w[], int order) {
-    int i;
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (fweights == NULL) {
-       sprintf(s,"%s_weights.txt", prefix);
-       fweights = fopen(s, "wt");
-       assert(fweights != NULL);
-    }
-
-    for(i=0; i<order; i++)
-       fprintf(fweights,"%f\t", w[i]);
-    fprintf(fweights,"\n");
-}
-
-void dump_lsp(float lsp[]) {
-    int i;
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (flsp == NULL) {
-       sprintf(s,"%s_lsp.txt", prefix);
-       flsp = fopen(s, "wt");
-       assert(flsp != NULL);
-    }
-
-    for(i=0; i<10; i++)
-       fprintf(flsp,"%f\t",lsp[i]);
-    fprintf(flsp,"\n");
-}
-
-void dump_lsp_(float lsp_[]) {
-    int i;
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (flsp_ == NULL) {
-       sprintf(s,"%s_lsp_.txt", prefix);
-       flsp_ = fopen(s, "wt");
-       assert(flsp_ != NULL);
-    }
-
-    for(i=0; i<10; i++)
-       fprintf(flsp_,"%f\t",lsp_[i]);
-    fprintf(flsp_,"\n");
-}
-
-void dump_mel(int mel[]) {
-    int i;
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (fmel == NULL) {
-       sprintf(s,"%s_mel.txt", prefix);
-       fmel = fopen(s, "wt");
-       assert(fmel != NULL);
-    }
-
-    for(i=0; i<10; i++)
-       fprintf(fmel,"%d\t",mel[i]);
-    fprintf(fmel,"\n");
-}
-
-void dump_ak(float ak[], int order) {
-    int i;
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (fak == NULL) {
-       sprintf(s,"%s_ak.txt", prefix);
-       fak = fopen(s, "wt");
-       assert(fak != NULL);
-    }
-
-    for(i=0; i<=order; i++)
-       fprintf(fak,"%f\t",ak[i]);
-    fprintf(fak,"\n");
-}
-
-void dump_ak_(float ak_[], int order) {
-    int i;
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (fak_ == NULL) {
-       sprintf(s,"%s_ak_.txt", prefix);
-       fak_ = fopen(s, "wt");
-       assert(fak_ != NULL);
-    }
-
-    for(i=0; i<=order; i++)
-       fprintf(fak_,"%f\t",ak_[i]);
-    fprintf(fak_,"\n");
-}
-
-void dump_Fw(COMP Fw[]) {
-    int i;
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (ffw == NULL) {
-       sprintf(s,"%s_fw.txt", prefix);
-       ffw = fopen(s, "wt");
-       assert(ffw != NULL);
-    }
-
-    for(i=0; i<256; i++)
-       fprintf(ffw,"%f\t",Fw[i].real);
-    fprintf(ffw,"\n");
-}
-
-void dump_e(float e_hz[]) {
-    int i;
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (fe == NULL) {
-       sprintf(s,"%s_e.txt", prefix);
-       fe = fopen(s, "wt");
-       assert(fe != NULL);
-    }
-
-    for(i=0; i<500/2; i++)
-       fprintf(fe,"%f\t",e_hz[i]);
-    fprintf(fe,"\n");
-    for(i=500/2; i<500; i++)
-       fprintf(fe,"%f\t",e_hz[i]);
-    fprintf(fe,"\n");
-}
-
-void dump_sq(float sq[]) {
-    int i;
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (fsq == NULL) {
-       sprintf(s,"%s_sq.txt", prefix);
-       fsq = fopen(s, "wt");
-       assert(fsq != NULL);
-    }
-
-    for(i=0; i<M/2; i++)
-       fprintf(fsq,"%f\t",sq[i]);
-    fprintf(fsq,"\n");
-    for(i=M/2; i<M; i++)
-       fprintf(fsq,"%f\t",sq[i]);
-    fprintf(fsq,"\n");
-}
-
-void dump_dec(COMP Fw[]) {
-    int i;
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (fdec == NULL) {
-       sprintf(s,"%s_dec.txt", prefix);
-       fdec = fopen(s, "wt");
-       assert(fdec != NULL);
-    }
-
-    for(i=0; i<320/5; i++)
-       fprintf(fdec,"%f\t",Fw[i].real);
-    fprintf(fdec,"\n");
-}
-
-void dump_bg(float e, float bg_est, float percent_uv) {
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (fbg == NULL) {
-       sprintf(s,"%s_bg.txt", prefix);
-       fbg = fopen(s, "wt");
-       assert(fbg != NULL);
-    }
-
-    fprintf(fbg,"%f\t%f\t%f\n", e, bg_est, percent_uv);
-}
-
-void dump_E(float E) {
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (fE == NULL) {
-       sprintf(s,"%s_E.txt", prefix);
-       fE = fopen(s, "wt");
-       assert(fE != NULL);
-    }
-
-    fprintf(fE,"%f\n", 10.0*log10(E));
-}
-
-void dump_Rk(float Rk[]) {
-    int i;
-    char s[MAX_STR];
-
-    if (!dumpon) return;
-
-    if (frk == NULL) {
-       sprintf(s,"%s_rk.txt", prefix);
-       frk = fopen(s, "wt");
-       assert(frk != NULL);
-    }
-
-    for(i=0; i<P_MAX; i++)
-       fprintf(frk,"%f\t",Rk[i]);
-    fprintf(frk,"\n");
-}
-
-#endif
diff --git a/gr-vocoder/lib/codec2/dump.h b/gr-vocoder/lib/codec2/dump.h
deleted file mode 100644
index dd95f5a..0000000
--- a/gr-vocoder/lib/codec2/dump.h
+++ /dev/null
@@ -1,78 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: dump.h
-  AUTHOR......: David Rowe
-  DATE CREATED: 25/8/09
-
-  Routines to dump data to text files for Octave analysis.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#ifndef __DUMP__
-#define __DUMP__
-
-#include "defines.h"
-#include "comp.h"
-#include "kiss_fft.h"
-#include "codec2_internal.h"
-
-void dump_on(char filename_prefix[]);
-void dump_off();
-
-void dump_Sn(float Sn[]);
-void dump_Sw(COMP Sw[]);
-void dump_Sw_(COMP Sw_[]);
-void dump_Ew(COMP Ew[]);
-
-/* amplitude modelling */
-
-void dump_model(MODEL *m);
-void dump_quantised_model(MODEL *m);
-void dump_Pwn(COMP Pw[]);
-void dump_Pw(COMP Pw[]);
-void dump_Rw(float Rw[]);
-void dump_lsp(float lsp[]);
-void dump_weights(float w[], int ndim);
-void dump_lsp_(float lsp_[]);
-void dump_mel(int mel[]);
-void dump_ak(float ak[], int order);
-void dump_ak_(float ak[], int order);
-void dump_E(float E);
-void dump_lpc_snr(float snr);
-
-/* phase modelling */
-
-void dump_snr(float snr);
-void dump_phase(float phase[], int L);
-void dump_phase_(float phase[], int L);
-void dump_hephase(int ind[], int dim);
-
-/* NLP states */
-
-void dump_sq(float sq[]);
-void dump_dec(COMP Fw[]);
-void dump_Fw(COMP Fw[]);
-void dump_e(float e_hz[]);
-void dump_Rk(float Rk[]);
-
-/* post filter */
-
-void dump_bg(float e, float bg_est, float percent_uv);
-void dump_Pwb(COMP Pwb[]);
-
-#endif
diff --git a/gr-vocoder/lib/codec2/fdmdv.c b/gr-vocoder/lib/codec2/fdmdv.c
deleted file mode 100644
index 51d6bef..0000000
--- a/gr-vocoder/lib/codec2/fdmdv.c
+++ /dev/null
@@ -1,1573 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: fdmdv.c
-  AUTHOR......: David Rowe
-  DATE CREATED: April 14 2012
-
-  Functions that implement the FDMDV modem.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2012 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#if defined(_MSC_VER) && (_MSC_VER < 1800) // round() not available before VS 
2013
-#define round(number) number < 0.0 ? ceil(number - 0.5) : floor(number + 0.5)
-#endif
-
-/*---------------------------------------------------------------------------*\
-
-                               INCLUDES
-
-\*---------------------------------------------------------------------------*/
-
-#include <assert.h>
-#include <stdlib.h>
-#include <stdio.h>
-#include <string.h>
-#include <math.h>
-
-#include "fdmdv_internal.h"
-#include "codec2_fdmdv.h"
-#include "rn.h"
-#include "test_bits.h"
-#include "pilot_coeff.h"
-#include "kiss_fft.h"
-#include "hanning.h"
-#include "os.h"
-
-static int sync_uw[] = {1,-1,1,-1,1,-1};
-
-/*---------------------------------------------------------------------------* 
\
-
-                               FUNCTIONS
-
-\*---------------------------------------------------------------------------*/
-
-static COMP cneg(COMP a)
-{
-    COMP res;
-
-    res.real = -a.real;
-    res.imag = -a.imag;
-
-    return res;
-}
-
-static COMP cconj(COMP a)
-{
-    COMP res;
-
-    res.real = a.real;
-    res.imag = -a.imag;
-
-    return res;
-}
-
-static COMP cmult(COMP a, COMP b)
-{
-    COMP res;
-
-    res.real = a.real*b.real - a.imag*b.imag;
-    res.imag = a.real*b.imag + a.imag*b.real;
-
-    return res;
-}
-
-static COMP fcmult(float a, COMP b)
-{
-    COMP res;
-
-    res.real = a*b.real;
-    res.imag = a*b.imag;
-
-    return res;
-}
-
-static COMP cadd(COMP a, COMP b)
-{
-    COMP res;
-
-    res.real = a.real + b.real;
-    res.imag = a.imag + b.imag;
-
-    return res;
-}
-
-static float cabsolute(COMP a)
-{
-    return sqrt(pow(a.real, 2.0) + pow(a.imag, 2.0));
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: fdmdv_create
-  AUTHOR......: David Rowe
-  DATE CREATED: 16/4/2012
-
-  Create and initialise an instance of the modem.  Returns a pointer
-  to the modem states or NULL on failure.  One set of states is
-  sufficient for a full duplex modem.
-
-\*---------------------------------------------------------------------------*/
-
-struct FDMDV * CODEC2_WIN32SUPPORT fdmdv_create(int Nc)
-{
-    struct FDMDV *f;
-    int           c, i, k;
-
-    assert(NC == FDMDV_NC_MAX);  /* check public and private #defines match */
-    assert(Nc <= NC);
-    assert(FDMDV_NOM_SAMPLES_PER_FRAME == M);
-    assert(FDMDV_MAX_SAMPLES_PER_FRAME == (M+M/P));
-
-    f = (struct FDMDV*)malloc(sizeof(struct FDMDV));
-    if (f == NULL)
-       return NULL;
-
-    f->Nc = Nc;
-
-    f->ntest_bits = Nc*NB*4;
-    f->current_test_bit = 0;
-    f->rx_test_bits_mem = (int*)malloc(sizeof(int)*f->ntest_bits);
-    assert(f->rx_test_bits_mem != NULL);
-    for(i=0; i<f->ntest_bits; i++)
-       f->rx_test_bits_mem[i] = 0;
-    assert((sizeof(test_bits)/sizeof(int)) >= f->ntest_bits);
-
-    f->old_qpsk_mapping = 0;
-
-    f->tx_pilot_bit = 0;
-
-    for(c=0; c<Nc+1; c++) {
-       f->prev_tx_symbols[c].real = 1.0;
-       f->prev_tx_symbols[c].imag = 0.0;
-       f->prev_rx_symbols[c].real = 1.0;
-       f->prev_rx_symbols[c].imag = 0.0;
-
-       for(k=0; k<NSYM; k++) {
-           f->tx_filter_memory[c][k].real = 0.0;
-           f->tx_filter_memory[c][k].imag = 0.0;
-       }
-
-       for(k=0; k<NFILTER; k++) {
-           f->rx_filter_memory[c][k].real = 0.0;
-           f->rx_filter_memory[c][k].imag = 0.0;
-       }
-
-       /* Spread initial FDM carrier phase out as far as possible.
-           This helped PAPR for a few dB.  We don't need to adjust rx
-           phase as DQPSK takes care of that. */
-
-       f->phase_tx[c].real = cos(2.0*PI*c/(Nc+1));
-       f->phase_tx[c].imag = sin(2.0*PI*c/(Nc+1));
-
-       f->phase_rx[c].real = 1.0;
-       f->phase_rx[c].imag = 0.0;
-
-       for(k=0; k<NT*P; k++) {
-           f->rx_filter_mem_timing[c][k].real = 0.0;
-           f->rx_filter_mem_timing[c][k].imag = 0.0;
-       }
-       for(k=0; k<NFILTERTIMING; k++) {
-           f->rx_baseband_mem_timing[c][k].real = 0.0;
-           f->rx_baseband_mem_timing[c][k].imag = 0.0;
-       }
-    }
-
-    fdmdv_set_fsep(f, FSEP);
-    f->freq[Nc].real = cos(2.0*PI*FDMDV_FCENTRE/FS);
-    f->freq[Nc].imag = sin(2.0*PI*FDMDV_FCENTRE/FS);
-
-    /* Generate DBPSK pilot Look Up Table (LUT) */
-
-    generate_pilot_lut(f->pilot_lut, &f->freq[Nc]);
-
-    /* freq Offset estimation states */
-
-    f->fft_pilot_cfg = kiss_fft_alloc (MPILOTFFT, 0, NULL, NULL);
-    assert(f->fft_pilot_cfg != NULL);
-
-    for(i=0; i<NPILOTBASEBAND; i++) {
-       f->pilot_baseband1[i].real = f->pilot_baseband2[i].real = 0.0;
-       f->pilot_baseband1[i].imag = f->pilot_baseband2[i].imag = 0.0;
-    }
-    f->pilot_lut_index = 0;
-    f->prev_pilot_lut_index = 3*M;
-
-    for(i=0; i<NPILOTLPF; i++) {
-       f->pilot_lpf1[i].real = f->pilot_lpf2[i].real = 0.0;
-       f->pilot_lpf1[i].imag = f->pilot_lpf2[i].imag = 0.0;
-    }
-
-    f->foff = 0.0;
-    f->foff_rect.real = 1.0;
-    f->foff_rect.imag = 0.0;
-    f->foff_phase_rect.real = 1.0;
-    f->foff_phase_rect.imag = 0.0;
-
-    f->fest_state = 0;
-    f->sync = 0;
-    f->timer = 0;
-    for(i=0; i<NSYNC_MEM; i++)
-        f->sync_mem[i] = 0;
-
-    for(c=0; c<Nc+1; c++) {
-       f->sig_est[c] = 0.0;
-       f->noise_est[c] = 0.0;
-    }
-
-    for(i=0; i<2*FDMDV_NSPEC; i++)
-       f->fft_buf[i] = 0.0;
-    f->fft_cfg = kiss_fft_alloc (2*FDMDV_NSPEC, 0, NULL, NULL);
-    assert(f->fft_cfg != NULL);
-
-
-    return f;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: fdmdv_destroy
-  AUTHOR......: David Rowe
-  DATE CREATED: 16/4/2012
-
-  Destroy an instance of the modem.
-
-\*---------------------------------------------------------------------------*/
-
-void CODEC2_WIN32SUPPORT fdmdv_destroy(struct FDMDV *fdmdv)
-{
-    assert(fdmdv != NULL);
-    KISS_FFT_FREE(fdmdv->fft_pilot_cfg);
-    KISS_FFT_FREE(fdmdv->fft_cfg);
-    free(fdmdv->rx_test_bits_mem);
-    free(fdmdv);
-}
-
-
-void CODEC2_WIN32SUPPORT fdmdv_use_old_qpsk_mapping(struct FDMDV *fdmdv) {
-    fdmdv->old_qpsk_mapping = 1;
-}
-
-
-int CODEC2_WIN32SUPPORT fdmdv_bits_per_frame(struct FDMDV *fdmdv)
-{
-    return (fdmdv->Nc * NB);
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: fdmdv_get_test_bits()
-  AUTHOR......: David Rowe
-  DATE CREATED: 16/4/2012
-
-  Generate a frame of bits from a repeating sequence of random data.  OK so
-  it's not very random if it repeats but it makes syncing at the demod easier
-  for test purposes.
-
-\*---------------------------------------------------------------------------*/
-
-void CODEC2_WIN32SUPPORT fdmdv_get_test_bits(struct FDMDV *f, int tx_bits[])
-{
-    int i;
-    int bits_per_frame = fdmdv_bits_per_frame(f);
-
-    for(i=0; i<bits_per_frame; i++) {
-       tx_bits[i] = test_bits[f->current_test_bit];
-       f->current_test_bit++;
-       if (f->current_test_bit > (f->ntest_bits-1))
-           f->current_test_bit = 0;
-    }
- }
-
-float CODEC2_WIN32SUPPORT fdmdv_get_fsep(struct FDMDV *f)
-{
-    return f->fsep;
-}
-
-void CODEC2_WIN32SUPPORT fdmdv_set_fsep(struct FDMDV *f, float fsep) {
-    int   c;
-    float carrier_freq;
-
-    f->fsep = fsep;
-    /* Set up frequency of each carrier */
-
-    for(c=0; c<f->Nc/2; c++) {
-       carrier_freq = (-f->Nc/2 + c)*f->fsep + FDMDV_FCENTRE;
-       f->freq[c].real = cos(2.0*PI*carrier_freq/FS);
-       f->freq[c].imag = sin(2.0*PI*carrier_freq/FS);
-    }
-
-    for(c=f->Nc/2; c<f->Nc; c++) {
-       carrier_freq = (-f->Nc/2 + c + 1)*f->fsep + FDMDV_FCENTRE;
-       f->freq[c].real = cos(2.0*PI*carrier_freq/FS);
-       f->freq[c].imag = sin(2.0*PI*carrier_freq/FS);
-    }
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: bits_to_dqpsk_symbols()
-  AUTHOR......: David Rowe
-  DATE CREATED: 16/4/2012
-
-  Maps bits to parallel DQPSK symbols. Generate Nc+1 QPSK symbols from
-  vector of (1,Nc*Nb) input tx_bits.  The Nc+1 symbol is the +1 -1 +1
-  .... BPSK sync carrier.
-
-\*---------------------------------------------------------------------------*/
-
-void bits_to_dqpsk_symbols(COMP tx_symbols[], int Nc, COMP prev_tx_symbols[], 
int tx_bits[], int *pilot_bit, int old_qpsk_mapping)
-{
-    int c, msb, lsb;
-    COMP j = {0.0,1.0};
-
-    /* Map tx_bits to to Nc DQPSK symbols.  Note legacy support for
-       old (suboptimal) V0.91 FreeDV mapping */
-
-    for(c=0; c<Nc; c++) {
-       msb = tx_bits[2*c];
-       lsb = tx_bits[2*c+1];
-       if ((msb == 0) && (lsb == 0))
-           tx_symbols[c] = prev_tx_symbols[c];
-       if ((msb == 0) && (lsb == 1))
-            tx_symbols[c] = cmult(j, prev_tx_symbols[c]);
-       if ((msb == 1) && (lsb == 0)) {
-           if (old_qpsk_mapping)
-                tx_symbols[c] = cneg(prev_tx_symbols[c]);
-            else
-                tx_symbols[c] = cmult(cneg(j),prev_tx_symbols[c]);
-        }
-       if ((msb == 1) && (lsb == 1)) {
-           if (old_qpsk_mapping)
-                tx_symbols[c] = cmult(cneg(j),prev_tx_symbols[c]);
-            else
-                tx_symbols[c] = cneg(prev_tx_symbols[c]);
-        }
-    }
-
-    /* +1 -1 +1 -1 BPSK sync carrier, once filtered becomes (roughly)
-       two spectral lines at +/- Rs/2 */
-
-    if (*pilot_bit)
-       tx_symbols[Nc] = cneg(prev_tx_symbols[Nc]);
-    else
-       tx_symbols[Nc] = prev_tx_symbols[Nc];
-
-    if (*pilot_bit)
-       *pilot_bit = 0;
-    else
-       *pilot_bit = 1;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: tx_filter()
-  AUTHOR......: David Rowe
-  DATE CREATED: 17/4/2012
-
-  Given Nc*NB bits construct M samples (1 symbol) of Nc+1 filtered
-  symbols streams.
-
-\*---------------------------------------------------------------------------*/
-
-void tx_filter(COMP tx_baseband[NC+1][M], int Nc, COMP tx_symbols[], COMP 
tx_filter_memory[NC+1][NSYM])
-{
-    int     c;
-    int     i,j,k;
-    float   acc;
-    COMP    gain;
-
-    gain.real = sqrt(2.0)/2.0;
-    gain.imag = 0.0;
-
-    for(c=0; c<Nc+1; c++)
-       tx_filter_memory[c][NSYM-1] = cmult(tx_symbols[c], gain);
-
-    /*
-       tx filter each symbol, generate M filtered output samples for each 
symbol.
-       Efficient polyphase filter techniques used as tx_filter_memory is sparse
-    */
-
-    for(i=0; i<M; i++) {
-       for(c=0; c<Nc+1; c++) {
-
-           /* filter real sample of symbol for carrier c */
-
-           acc = 0.0;
-           for(j=0,k=M-i-1; j<NSYM; j++,k+=M)
-               acc += M * tx_filter_memory[c][j].real * gt_alpha5_root[k];
-           tx_baseband[c][i].real = acc;
-
-           /* filter imag sample of symbol for carrier c */
-
-           acc = 0.0;
-           for(j=0,k=M-i-1; j<NSYM; j++,k+=M)
-               acc += M * tx_filter_memory[c][j].imag * gt_alpha5_root[k];
-           tx_baseband[c][i].imag = acc;
-
-       }
-    }
-
-    /* shift memory, inserting zeros at end */
-
-    for(i=0; i<NSYM-1; i++)
-       for(c=0; c<Nc+1; c++)
-           tx_filter_memory[c][i] = tx_filter_memory[c][i+1];
-
-    for(c=0; c<Nc+1; c++) {
-       tx_filter_memory[c][NSYM-1].real = 0.0;
-       tx_filter_memory[c][NSYM-1].imag = 0.0;
-    }
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: fdm_upconvert()
-  AUTHOR......: David Rowe
-  DATE CREATED: 17/4/2012
-
-  Construct FDM signal by frequency shifting each filtered symbol
-  stream.  Returns complex signal so we can apply frequency offsets
-  easily.
-
-\*---------------------------------------------------------------------------*/
-
-void fdm_upconvert(COMP tx_fdm[], int Nc, COMP tx_baseband[NC+1][M], COMP 
phase_tx[], COMP freq[])
-{
-    int  i,c;
-    COMP two = {2.0, 0.0};
-    COMP pilot;
-
-    for(i=0; i<M; i++) {
-       tx_fdm[i].real = 0.0;
-       tx_fdm[i].imag = 0.0;
-    }
-
-    /* Nc/2 tones below centre freq */
-
-    for (c=0; c<Nc/2; c++)
-       for (i=0; i<M; i++) {
-           phase_tx[c] = cmult(phase_tx[c], freq[c]);
-           tx_fdm[i] = cadd(tx_fdm[i], cmult(tx_baseband[c][i], phase_tx[c]));
-       }
-
-    /* Nc/2 tones above centre freq */
-
-    for (c=Nc/2; c<Nc; c++)
-       for (i=0; i<M; i++) {
-           phase_tx[c] = cmult(phase_tx[c], freq[c]);
-           tx_fdm[i] = cadd(tx_fdm[i], cmult(tx_baseband[c][i], phase_tx[c]));
-       }
-
-    /* add centre pilot tone  */
-
-    c = Nc;
-    for (i=0; i<M; i++) {
-       phase_tx[c] = cmult(phase_tx[c],  freq[c]);
-       pilot = cmult(cmult(two, tx_baseband[c][i]), phase_tx[c]);
-       tx_fdm[i] = cadd(tx_fdm[i], pilot);
-    }
-
-    /*
-      Scale such that total Carrier power C of real(tx_fdm) = Nc.  This
-      excludes the power of the pilot tone.
-      We return the complex (single sided) signal to make frequency
-      shifting for the purpose of testing easier
-    */
-
-    for (i=0; i<M; i++)
-       tx_fdm[i] = cmult(two, tx_fdm[i]);
-
-    /* normalise digital oscilators as the magnitude can drfift over time */
-
-    for (c=0; c<Nc+1; c++) {
-       phase_tx[c].real /= cabsolute(phase_tx[c]);
-       phase_tx[c].imag /= cabsolute(phase_tx[c]);
-    }
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: fdmdv_mod()
-  AUTHOR......: David Rowe
-  DATE CREATED: 26/4/2012
-
-  FDMDV modulator, take a frame of FDMDV_BITS_PER_FRAME bits and
-  generates a frame of FDMDV_SAMPLES_PER_FRAME modulated symbols.
-  Sync bit is returned to aid alignment of your next frame.
-
-  The sync_bit value returned will be used for the _next_ frame.
-
-  The output signal is complex to support single sided frequency
-  shifting, for example when testing frequency offsets in channel
-  simulation.
-
-\*---------------------------------------------------------------------------*/
-
-void CODEC2_WIN32SUPPORT fdmdv_mod(struct FDMDV *fdmdv, COMP tx_fdm[],
-                                  int tx_bits[], int *sync_bit)
-{
-    COMP          tx_symbols[NC+1];
-    COMP          tx_baseband[NC+1][M];
-
-    bits_to_dqpsk_symbols(tx_symbols, fdmdv->Nc, fdmdv->prev_tx_symbols, 
tx_bits, &fdmdv->tx_pilot_bit, fdmdv->old_qpsk_mapping);
-    memcpy(fdmdv->prev_tx_symbols, tx_symbols, sizeof(COMP)*(fdmdv->Nc+1));
-    tx_filter(tx_baseband, fdmdv->Nc, tx_symbols, fdmdv->tx_filter_memory);
-    fdm_upconvert(tx_fdm, fdmdv->Nc, tx_baseband, fdmdv->phase_tx, 
fdmdv->freq);
-
-    *sync_bit = fdmdv->tx_pilot_bit;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: generate_pilot_fdm()
-  AUTHOR......: David Rowe
-  DATE CREATED: 19/4/2012
-
-  Generate M samples of DBPSK pilot signal for Freq offset estimation.
-
-\*---------------------------------------------------------------------------*/
-
-void generate_pilot_fdm(COMP *pilot_fdm, int *bit, float *symbol,
-                       float *filter_mem, COMP *phase, COMP *freq)
-{
-    int   i,j,k;
-    float tx_baseband[M];
-
-    /* +1 -1 +1 -1 DBPSK sync carrier, once filtered becomes (roughly)
-       two spectral lines at +/- RS/2 */
-
-    if (*bit)
-       *symbol = -*symbol;
-    else
-       *symbol = *symbol;
-    if (*bit)
-       *bit = 0;
-    else
-       *bit = 1;
-
-    /* filter DPSK symbol to create M baseband samples */
-
-    filter_mem[NFILTER-1] = (sqrt(2)/2) * *symbol;
-    for(i=0; i<M; i++) {
-       tx_baseband[i] = 0.0;
-       for(j=M-1,k=M-i-1; j<NFILTER; j+=M,k+=M)
-           tx_baseband[i] += M * filter_mem[j] * gt_alpha5_root[k];
-    }
-
-    /* shift memory, inserting zeros at end */
-
-    for(i=0; i<NFILTER-M; i++)
-       filter_mem[i] = filter_mem[i+M];
-
-    for(i=NFILTER-M; i<NFILTER; i++)
-       filter_mem[i] = 0.0;
-
-    /* upconvert */
-
-    for(i=0; i<M; i++) {
-       *phase = cmult(*phase, *freq);
-       pilot_fdm[i].real = sqrt(2)*2*tx_baseband[i] * phase->real;
-       pilot_fdm[i].imag = sqrt(2)*2*tx_baseband[i] * phase->imag;
-    }
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: generate_pilot_lut()
-  AUTHOR......: David Rowe
-  DATE CREATED: 19/4/2012
-
-  Generate a 4M sample vector of DBPSK pilot signal.  As the pilot signal
-  is periodic in 4M samples we can then use this vector as a look up table
-  for pilot signal generation in the demod.
-
-\*---------------------------------------------------------------------------*/
-
-void generate_pilot_lut(COMP pilot_lut[], COMP *pilot_freq)
-{
-    int   pilot_rx_bit = 0;
-    float pilot_symbol = sqrt(2.0);
-    COMP  pilot_phase  = {1.0, 0.0};
-    float pilot_filter_mem[NFILTER];
-    COMP  pilot[M];
-    int   i,f;
-
-    for(i=0; i<NFILTER; i++)
-       pilot_filter_mem[i] = 0.0;
-
-    /* discard first 4 symbols as filter memory is filling, just keep
-       last four symbols */
-
-    for(f=0; f<8; f++) {
-       generate_pilot_fdm(pilot, &pilot_rx_bit, &pilot_symbol, 
pilot_filter_mem, &pilot_phase, pilot_freq);
-       if (f >= 4)
-           memcpy(&pilot_lut[M*(f-4)], pilot, M*sizeof(COMP));
-    }
-
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: lpf_peak_pick()
-  AUTHOR......: David Rowe
-  DATE CREATED: 20/4/2012
-
-  LPF and peak pick part of freq est, put in a function as we call it twice.
-
-\*---------------------------------------------------------------------------*/
-
-void lpf_peak_pick(float *foff, float *max, COMP pilot_baseband[],
-                  COMP pilot_lpf[], kiss_fft_cfg fft_pilot_cfg, COMP S[], int 
nin)
-{
-    int   i,j,k;
-    int   mpilot;
-    COMP  s[MPILOTFFT];
-    float mag, imax;
-    int   ix;
-    float r;
-
-    /* LPF cutoff 200Hz, so we can handle max +/- 200 Hz freq offset */
-
-    for(i=0; i<NPILOTLPF-nin; i++)
-       pilot_lpf[i] = pilot_lpf[nin+i];
-    for(i=NPILOTLPF-nin, j=0; i<NPILOTLPF; i++,j++) {
-       pilot_lpf[i].real = 0.0; pilot_lpf[i].imag = 0.0;
-       for(k=0; k<NPILOTCOEFF; k++)
-           pilot_lpf[i] = cadd(pilot_lpf[i], fcmult(pilot_coeff[k], 
pilot_baseband[j+k]));
-    }
-
-    /* decimate to improve DFT resolution, window and DFT */
-
-    mpilot = FS/(2*200);  /* calc decimation rate given new sample rate is 
twice LPF freq */
-    for(i=0; i<MPILOTFFT; i++) {
-       s[i].real = 0.0; s[i].imag = 0.0;
-    }
-    for(i=0,j=0; i<NPILOTLPF; i+=mpilot,j++) {
-       s[j] = fcmult(hanning[i], pilot_lpf[i]);
-    }
-
-    kiss_fft(fft_pilot_cfg, (kiss_fft_cpx *)s, (kiss_fft_cpx *)S);
-
-    /* peak pick and convert to Hz */
-
-    imax = 0.0;
-    ix = 0;
-    for(i=0; i<MPILOTFFT; i++) {
-       mag = S[i].real*S[i].real + S[i].imag*S[i].imag;
-       if (mag > imax) {
-           imax = mag;
-           ix = i;
-       }
-    }
-    r = 2.0*200.0/MPILOTFFT;     /* maps FFT bin to frequency in Hz */
-
-    if (ix >= MPILOTFFT/2)
-       *foff = (ix - MPILOTFFT)*r;
-    else
-       *foff = (ix)*r;
-    *max = imax;
-
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: rx_est_freq_offset()
-  AUTHOR......: David Rowe
-  DATE CREATED: 19/4/2012
-
-  Estimate frequency offset of FDM signal using BPSK pilot.  Note that
-  this algorithm is quite sensitive to pilot tone level wrt other
-  carriers, so test variations to the pilot amplitude carefully.
-
-\*---------------------------------------------------------------------------*/
-
-float rx_est_freq_offset(struct FDMDV *f, COMP rx_fdm[], int nin)
-{
-    int  i,j;
-    COMP pilot[M+M/P];
-    COMP prev_pilot[M+M/P];
-    float foff, foff1, foff2;
-    float   max1, max2;
-
-    assert(nin <= M+M/P);
-
-    /* get pilot samples used for correlation/down conversion of rx signal */
-
-    for (i=0; i<nin; i++) {
-       pilot[i] = f->pilot_lut[f->pilot_lut_index];
-       f->pilot_lut_index++;
-       if (f->pilot_lut_index >= 4*M)
-           f->pilot_lut_index = 0;
-
-       prev_pilot[i] = f->pilot_lut[f->prev_pilot_lut_index];
-       f->prev_pilot_lut_index++;
-       if (f->prev_pilot_lut_index >= 4*M)
-           f->prev_pilot_lut_index = 0;
-    }
-
-    /*
-      Down convert latest M samples of pilot by multiplying by ideal
-      BPSK pilot signal we have generated locally.  The peak of the
-      resulting signal is sensitive to the time shift between the
-      received and local version of the pilot, so we do it twice at
-      different time shifts and choose the maximum.
-    */
-
-    for(i=0; i<NPILOTBASEBAND-nin; i++) {
-       f->pilot_baseband1[i] = f->pilot_baseband1[i+nin];
-       f->pilot_baseband2[i] = f->pilot_baseband2[i+nin];
-    }
-
-    for(i=0,j=NPILOTBASEBAND-nin; i<nin; i++,j++) {
-               f->pilot_baseband1[j] = cmult(rx_fdm[i], cconj(pilot[i]));
-       f->pilot_baseband2[j] = cmult(rx_fdm[i], cconj(prev_pilot[i]));
-    }
-
-    lpf_peak_pick(&foff1, &max1, f->pilot_baseband1, f->pilot_lpf1, 
f->fft_pilot_cfg, f->S1, nin);
-    lpf_peak_pick(&foff2, &max2, f->pilot_baseband2, f->pilot_lpf2, 
f->fft_pilot_cfg, f->S2, nin);
-
-    if (max1 > max2)
-       foff = foff1;
-    else
-       foff = foff2;
-
-    return foff;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: fdmdv_freq_shift()
-  AUTHOR......: David Rowe
-  DATE CREATED: 26/4/2012
-
-  Frequency shift modem signal.  The use of complex input and output allows
-  single sided frequency shifting (no images).
-
-\*---------------------------------------------------------------------------*/
-
-void CODEC2_WIN32SUPPORT fdmdv_freq_shift(COMP rx_fdm_fcorr[], COMP rx_fdm[], 
float foff,
-                                          COMP *foff_rect, COMP 
*foff_phase_rect, int nin)
-{
-    int   i;
-
-    foff_rect->real = cos(2.0*PI*foff/FS);
-    foff_rect->imag = sin(2.0*PI*foff/FS);
-    for(i=0; i<nin; i++) {
-       *foff_phase_rect = cmult(*foff_phase_rect, *foff_rect);
-       rx_fdm_fcorr[i] = cmult(rx_fdm[i], *foff_phase_rect);
-    }
-
-    /* normalise digital oscilator as the magnitude can drfift over time */
-
-    foff_phase_rect->real /= cabsolute(*foff_phase_rect);
-    foff_phase_rect->imag /= cabsolute(*foff_phase_rect);
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: fdm_downconvert()
-  AUTHOR......: David Rowe
-  DATE CREATED: 22/4/2012
-
-  Frequency shift each modem carrier down to Nc+1 baseband signals.
-
-\*---------------------------------------------------------------------------*/
-
-void fdm_downconvert(COMP rx_baseband[NC+1][M+M/P], int Nc, COMP rx_fdm[], 
COMP phase_rx[], COMP freq[], int nin)
-{
-    int  i,c;
-
-    /* maximum number of input samples to demod */
-
-    assert(nin <= (M+M/P));
-
-    /* Nc/2 tones below centre freq */
-
-    for (c=0; c<Nc/2; c++)
-       for (i=0; i<nin; i++) {
-           phase_rx[c] = cmult(phase_rx[c], freq[c]);
-           rx_baseband[c][i] = cmult(rx_fdm[i], cconj(phase_rx[c]));
-       }
-
-    /* Nc/2 tones above centre freq */
-
-    for (c=Nc/2; c<Nc; c++)
-       for (i=0; i<nin; i++) {
-           phase_rx[c] = cmult(phase_rx[c], freq[c]);
-           rx_baseband[c][i] = cmult(rx_fdm[i], cconj(phase_rx[c]));
-       }
-
-    /* centre pilot tone  */
-
-    c = Nc;
-    for (i=0; i<nin; i++) {
-       phase_rx[c] = cmult(phase_rx[c],  freq[c]);
-       rx_baseband[c][i] = cmult(rx_fdm[i], cconj(phase_rx[c]));
-    }
-
-    /* normalise digital oscilators as the magnitude can drift over time */
-
-    for (c=0; c<Nc+1; c++) {
-       phase_rx[c].real /= cabsolute(phase_rx[c]);
-       phase_rx[c].imag /= cabsolute(phase_rx[c]);
-    }
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: rx_filter()
-  AUTHOR......: David Rowe
-  DATE CREATED: 22/4/2012
-
-  Receive filter each baseband signal at oversample rate P.  Filtering at
-  rate P lowers CPU compared to rate M.
-
-  Depending on the number of input samples to the demod nin, we
-  produce P-1, P (usually), or P+1 filtered samples at rate P.  nin is
-  occasionally adjusted to compensate for timing slips due to
-  different tx and rx sample clocks.
-
-\*---------------------------------------------------------------------------*/
-
-void rx_filter(COMP rx_filt[NC+1][P+1], int Nc, COMP rx_baseband[NC+1][M+M/P], 
COMP rx_filter_memory[NC+1][NFILTER], int nin)
-{
-    int c, i,j,k,l;
-    int n=M/P;
-
-    /* rx filter each symbol, generate P filtered output samples for
-       each symbol.  Note we keep filter memory at rate M, it's just
-       the filter output at rate P */
-
-    for(i=0, j=0; i<nin; i+=n,j++) {
-
-       /* latest input sample */
-
-       for(c=0; c<Nc+1; c++)
-           for(k=NFILTER-n,l=i; k<NFILTER; k++,l++)
-               rx_filter_memory[c][k] = rx_baseband[c][l];
-
-       /* convolution (filtering) */
-
-       for(c=0; c<Nc+1; c++) {
-           rx_filt[c][j].real = 0.0; rx_filt[c][j].imag = 0.0;
-           for(k=0; k<NFILTER; k++)
-               rx_filt[c][j] = cadd(rx_filt[c][j], fcmult(gt_alpha5_root[k], 
rx_filter_memory[c][k]));
-       }
-
-       /* make room for next input sample */
-
-       for(c=0; c<Nc+1; c++)
-           for(k=0,l=n; k<NFILTER-n; k++,l++)
-               rx_filter_memory[c][k] = rx_filter_memory[c][l];
-    }
-
-    assert(j <= (P+1)); /* check for any over runs */
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: rx_est_timing()
-  AUTHOR......: David Rowe
-  DATE CREATED: 23/4/2012
-
-  Estimate optimum timing offset, re-filter receive symbols at optimum
-  timing estimate.
-
-\*---------------------------------------------------------------------------*/
-
-float rx_est_timing(COMP rx_symbols[],
-                    int  Nc,
-                   COMP rx_filt[NC+1][P+1],
-                   COMP rx_baseband[NC+1][M+M/P],
-                   COMP rx_filter_mem_timing[NC+1][NT*P],
-                   float env[],
-                   COMP rx_baseband_mem_timing[NC+1][NFILTERTIMING],
-                   int nin)
-{
-    int   c,i,j,k;
-    int   adjust, s;
-    COMP  x, phase, freq;
-    float rx_timing;
-
-    /*
-      nin  adjust
-      --------------------------------
-      120  -1 (one less rate P sample)
-      160   0 (nominal)
-      200   1 (one more rate P sample)
-    */
-
-    adjust = P - nin*P/M;
-
-    /* update buffer of NT rate P filtered symbols */
-
-    for(c=0; c<Nc+1; c++)
-       for(i=0,j=P-adjust; i<(NT-1)*P+adjust; i++,j++)
-           rx_filter_mem_timing[c][i] = rx_filter_mem_timing[c][j];
-    for(c=0; c<Nc+1; c++)
-       for(i=(NT-1)*P+adjust,j=0; i<NT*P; i++,j++)
-           rx_filter_mem_timing[c][i] = rx_filt[c][j];
-
-    /* sum envelopes of all carriers */
-
-    for(i=0; i<NT*P; i++) {
-       env[i] = 0.0;
-       for(c=0; c<Nc+1; c++)
-           env[i] += cabsolute(rx_filter_mem_timing[c][i]);
-    }
-
-    /* The envelope has a frequency component at the symbol rate.  The
-       phase of this frequency component indicates the timing.  So work
-       out single DFT at frequency 2*pi/P */
-
-    x.real = 0.0; x.imag = 0.0;
-    freq.real = cos(2*PI/P);
-    freq.imag = sin(2*PI/P);
-    phase.real = 1.0;
-    phase.imag = 0.0;
-
-    for(i=0; i<NT*P; i++) {
-       x = cadd(x, fcmult(env[i], phase));
-       phase = cmult(phase, freq);
-    }
-
-    /* Map phase to estimated optimum timing instant at rate M.  The
-       M/4 part was adjusted by experiment, I know not why.... */
-
-    rx_timing = atan2(x.imag, x.real)*M/(2*PI) + M/4;
-
-    if (rx_timing > M)
-       rx_timing -= M;
-    if (rx_timing < -M)
-       rx_timing += M;
-
-    /* rx_filt_mem_timing contains M + Nfilter + M samples of the
-       baseband signal at rate M this enables us to resample the
-       filtered rx symbol with M sample precision once we have
-       rx_timing */
-
-    for(c=0; c<Nc+1; c++)
-       for(i=0,j=nin; i<NFILTERTIMING-nin; i++,j++)
-           rx_baseband_mem_timing[c][i] = rx_baseband_mem_timing[c][j];
-    for(c=0; c<Nc+1; c++)
-       for(i=NFILTERTIMING-nin,j=0; i<NFILTERTIMING; i++,j++)
-           rx_baseband_mem_timing[c][i] = rx_baseband[c][j];
-
-    /* rx filter to get symbol for each carrier at estimated optimum
-       timing instant.  We use rate M filter memory to get fine timing
-       resolution. */
-
-    s = round(rx_timing) + M;
-    for(c=0; c<Nc+1; c++) {
-       rx_symbols[c].real = 0.0;
-       rx_symbols[c].imag = 0.0;
-       for(k=s,j=0; k<s+NFILTER; k++,j++)
-           rx_symbols[c] = cadd(rx_symbols[c], fcmult(gt_alpha5_root[j], 
rx_baseband_mem_timing[c][k]));
-    }
-
-    return rx_timing;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: qpsk_to_bits()
-  AUTHOR......: David Rowe
-  DATE CREATED: 24/4/2012
-
-  Convert DQPSK symbols back to an array of bits, extracts sync bit
-  from DBPSK pilot, and also uses pilot to estimate fine frequency
-  error.
-
-\*---------------------------------------------------------------------------*/
-
-float qpsk_to_bits(int rx_bits[], int *sync_bit, int Nc, COMP 
phase_difference[], COMP prev_rx_symbols[],
-                   COMP rx_symbols[], int old_qpsk_mapping)
-{
-    int   c;
-    COMP  pi_on_4;
-    COMP  d;
-    int   msb=0, lsb=0;
-    float ferr, norm;
-
-    pi_on_4.real = cos(PI/4.0);
-    pi_on_4.imag = sin(PI/4.0);
-
-    /* Extra 45 degree clockwise lets us use real and imag axis as
-       decision boundaries. "norm" makes sure the phase subtraction
-       from the previous symbol doesn't affect the amplitude, which
-       leads to sensible scatter plots */
-
-    for(c=0; c<Nc; c++) {
-        norm = 1.0/(cabsolute(prev_rx_symbols[c])+1E-6);
-       phase_difference[c] = cmult(cmult(rx_symbols[c], 
fcmult(norm,cconj(prev_rx_symbols[c]))), pi_on_4);
-    }
-
-    /* map (Nc,1) DQPSK symbols back into an (1,Nc*Nb) array of bits */
-
-    for (c=0; c<Nc; c++) {
-      d = phase_difference[c];
-      if ((d.real >= 0) && (d.imag >= 0)) {
-          msb = 0; lsb = 0;
-      }
-      if ((d.real < 0) && (d.imag >= 0)) {
-          msb = 0; lsb = 1;
-      }
-      if ((d.real < 0) && (d.imag < 0)) {
-          if (old_qpsk_mapping) {
-              msb = 1; lsb = 0;
-          } else {
-              msb = 1; lsb = 1;
-          }
-      }
-      if ((d.real >= 0) && (d.imag < 0)) {
-          if (old_qpsk_mapping) {
-              msb = 1; lsb = 1;
-          } else {
-              msb = 1; lsb = 0;
-          }
-      }
-      rx_bits[2*c] = msb;
-      rx_bits[2*c+1] = lsb;
-    }
-
-    /* Extract DBPSK encoded Sync bit and fine freq offset estimate */
-
-    norm = 1.0/(cabsolute(prev_rx_symbols[Nc])+1E-6);
-    phase_difference[Nc] = cmult(rx_symbols[Nc], fcmult(norm, 
cconj(prev_rx_symbols[Nc])));
-    if (phase_difference[Nc].real < 0) {
-      *sync_bit = 1;
-      ferr = phase_difference[Nc].imag;
-    }
-    else {
-      *sync_bit = 0;
-      ferr = -phase_difference[Nc].imag;
-    }
-
-    /* pilot carrier gets an extra pi/4 rotation to make it consistent
-       with other carriers, as we need it for snr_update and scatter
-       diagram */
-
-    phase_difference[Nc] = cmult(phase_difference[Nc], pi_on_4);
-
-    return ferr;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: snr_update()
-  AUTHOR......: David Rowe
-  DATE CREATED: 17 May 2012
-
-  Given phase differences update estimates of signal and noise levels.
-
-\*---------------------------------------------------------------------------*/
-
-void snr_update(float sig_est[], float noise_est[], int Nc, COMP 
phase_difference[])
-{
-    float s[NC+1];
-    COMP  refl_symbols[NC+1];
-    float n[NC+1];
-    COMP  pi_on_4;
-    int   c;
-
-    pi_on_4.real = cos(PI/4.0);
-    pi_on_4.imag = sin(PI/4.0);
-
-    /* mag of each symbol is distance from origin, this gives us a
-       vector of mags, one for each carrier. */
-
-    for(c=0; c<Nc+1; c++)
-       s[c] = cabsolute(phase_difference[c]);
-
-    /* signal mag estimate for each carrier is a smoothed version of
-       instantaneous magntitude, this gives us a vector of smoothed
-       mag estimates, one for each carrier. */
-
-    for(c=0; c<Nc+1; c++)
-       sig_est[c] = SNR_COEFF*sig_est[c] + (1.0 - SNR_COEFF)*s[c];
-
-    /* noise mag estimate is distance of current symbol from average
-       location of that symbol.  We reflect all symbols into the first
-       quadrant for convenience. */
-
-    for(c=0; c<Nc+1; c++) {
-       refl_symbols[c].real = fabs(phase_difference[c].real);
-       refl_symbols[c].imag = fabs(phase_difference[c].imag);
-       n[c] = cabsolute(cadd(fcmult(sig_est[c], pi_on_4), 
cneg(refl_symbols[c])));
-    }
-
-    /* noise mag estimate for each carrier is a smoothed version of
-       instantaneous noise mag, this gives us a vector of smoothed
-       noise power estimates, one for each carrier. */
-
-    for(c=0; c<Nc+1; c++)
-       noise_est[c] = SNR_COEFF*noise_est[c] + (1 - SNR_COEFF)*n[c];
-}
-
-// returns number of shorts in error_pattern[], one short per error
-
-int CODEC2_WIN32SUPPORT fdmdv_error_pattern_size(struct FDMDV *f) {
-    return f->ntest_bits;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: fdmdv_put_test_bits()
-  AUTHOR......: David Rowe
-  DATE CREATED: 24/4/2012
-
-  Accepts nbits from rx and attempts to sync with test_bits sequence.
-  If sync OK measures bit errors.
-
-\*---------------------------------------------------------------------------*/
-
-void CODEC2_WIN32SUPPORT fdmdv_put_test_bits(struct FDMDV *f, int *sync, short 
error_pattern[],
-                                            int *bit_errors, int *ntest_bits,
-                                            int rx_bits[])
-{
-    int   i,j;
-    float ber;
-    int   bits_per_frame = fdmdv_bits_per_frame(f);
-
-    /* Append to our memory */
-
-    for(i=0,j=bits_per_frame; i<f->ntest_bits-bits_per_frame; i++,j++)
-       f->rx_test_bits_mem[i] = f->rx_test_bits_mem[j];
-    for(i=f->ntest_bits-bits_per_frame,j=0; i<f->ntest_bits; i++,j++)
-       f->rx_test_bits_mem[i] = rx_bits[j];
-
-    /* see how many bit errors we get when checked against test sequence */
-
-    *bit_errors = 0;
-    for(i=0; i<f->ntest_bits; i++) {
-        error_pattern[i] = test_bits[i] ^ f->rx_test_bits_mem[i];
-       *bit_errors += error_pattern[i];
-       //printf("%d %d %d %d\n", i, test_bits[i], f->rx_test_bits_mem[i], 
test_bits[i] ^ f->rx_test_bits_mem[i]);
-    }
-
-    /* if less than a thresh we are aligned and in sync with test sequence */
-
-    ber = (float)*bit_errors/f->ntest_bits;
-
-    *sync = 0;
-    if (ber < 0.2)
-       *sync = 1;
-
-    *ntest_bits = f->ntest_bits;
-
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: freq_state(()
-  AUTHOR......: David Rowe
-  DATE CREATED: 24/4/2012
-
-  Freq offset state machine.  Moves between coarse and fine states
-  based on BPSK pilot sequence.  Freq offset estimator occasionally
-  makes mistakes when used continuously.  So we use it until we have
-  acquired the BPSK pilot, then switch to a more robust "fine"
-  tracking algorithm.  If we lose sync we switch back to coarse mode
-  for fast re-acquisition of large frequency offsets.
-
-  The sync state is also useful for higher layers to determine when
-  there is valid FDMDV data for decoding.  We want to reliably and
-  quickly get into sync, stay in sync even on fading channels, and
-  fall out of sync quickly if tx stops or it's a false sync.
-
-  In multipath fading channels the BPSK sync carrier may be pushed
-  down in the noise, despite other carriers being at full strength.
-  We want to avoid loss of sync in these cases.
-
-\*---------------------------------------------------------------------------*/
-
-int freq_state(int *reliable_sync_bit, int sync_bit, int *state, int *timer, 
int *sync_mem)
-{
-    int next_state, sync, unique_word, i, corr;
-
-    /* look for 6 symbols (120ms) 101010 of sync sequence */
-
-    unique_word = 0;
-    for(i=0; i<NSYNC_MEM-1; i++)
-        sync_mem[i] = sync_mem[i+1];
-    sync_mem[i] = 1 - 2*sync_bit;
-    corr = 0;
-    for(i=0; i<NSYNC_MEM; i++)
-        corr += sync_mem[i]*sync_uw[i];
-    if (abs(corr) == NSYNC_MEM)
-        unique_word = 1;
-    *reliable_sync_bit = (corr == NSYNC_MEM);
-
-    /* iterate state machine */
-
-    next_state = *state;
-    switch(*state) {
-    case 0:
-       if (unique_word) {
-           next_state = 1;
-            *timer = 0;
-        }
-       break;
-    case 1:                  /* tentative sync state         */
-       if (unique_word) {
-            (*timer)++;
-            if (*timer == 25) /* sync has been good for 500ms */
-                next_state = 2;
-        }
-       else
-           next_state = 0;  /* quickly fall out of sync     */
-       break;
-    case 2:                  /* good sync state */
-       if (unique_word == 0) {
-            *timer = 0;
-           next_state = 3;
-        }
-       break;
-    case 3:                  /* tentative bad state, but could be a fade */
-       if (unique_word)
-           next_state = 2;
-       else  {
-            (*timer)++;
-            if (*timer == 50) /* wait for 1000ms in case sync comes back  */
-                next_state = 0;
-        }
-       break;
-    }
-
-    //printf("state: %d next_state: %d uw: %d timer: %d\n", *state, 
next_state, unique_word, *timer);
-    *state = next_state;
-    if (*state)
-       sync = 1;
-    else
-       sync = 0;
-
-    return sync;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: fdmdv_demod()
-  AUTHOR......: David Rowe
-  DATE CREATED: 26/4/2012
-
-  FDMDV demodulator, take an array of FDMDV_SAMPLES_PER_FRAME
-  modulated samples, returns an array of FDMDV_BITS_PER_FRAME bits,
-  plus the sync bit.
-
-  The input signal is complex to support single sided frequency shifting
-  before the demod input (e.g. fdmdv2 click to tune feature).
-
-  The number of input samples nin will normally be M ==
-  FDMDV_SAMPLES_PER_FRAME.  However to adjust for differences in
-  transmit and receive sample clocks nin will occasionally be M-M/P,
-  or M+M/P.
-
-\*---------------------------------------------------------------------------*/
-
-void CODEC2_WIN32SUPPORT fdmdv_demod(struct FDMDV *fdmdv, int rx_bits[],
-                                    int *reliable_sync_bit, COMP rx_fdm[], int 
*nin)
-{
-    float         foff_coarse, foff_fine;
-    COMP          rx_fdm_fcorr[M+M/P];
-    COMP          rx_baseband[NC+1][M+M/P];
-    COMP          rx_filt[NC+1][P+1];
-    COMP          rx_symbols[NC+1];
-    float         env[NT*P];
-    int           sync_bit;
-
-    /* freq offset estimation and correction */
-
-    foff_coarse = rx_est_freq_offset(fdmdv, rx_fdm, *nin);
-
-    if (fdmdv->sync == 0)
-       fdmdv->foff = foff_coarse;
-    fdmdv_freq_shift(rx_fdm_fcorr, rx_fdm, -fdmdv->foff, &fdmdv->foff_rect, 
&fdmdv->foff_phase_rect, *nin);
-
-    /* baseband processing */
-
-    fdm_downconvert(rx_baseband, fdmdv->Nc, rx_fdm_fcorr, fdmdv->phase_rx, 
fdmdv->freq, *nin);
-    rx_filter(rx_filt, fdmdv->Nc, rx_baseband, fdmdv->rx_filter_memory, *nin);
-    fdmdv->rx_timing = rx_est_timing(rx_symbols, fdmdv->Nc, rx_filt, 
rx_baseband, fdmdv->rx_filter_mem_timing, env, fdmdv->rx_baseband_mem_timing, 
*nin);
-
-    /* Adjust number of input samples to keep timing within bounds */
-
-    *nin = M;
-
-    if (fdmdv->rx_timing > 2*M/P)
-       *nin += M/P;
-
-    if (fdmdv->rx_timing < 0)
-       *nin -= M/P;
-
-    foff_fine = qpsk_to_bits(rx_bits, &sync_bit, fdmdv->Nc, 
fdmdv->phase_difference, fdmdv->prev_rx_symbols, rx_symbols,
-                             fdmdv->old_qpsk_mapping);
-    memcpy(fdmdv->prev_rx_symbols, rx_symbols, sizeof(COMP)*(fdmdv->Nc+1));
-    snr_update(fdmdv->sig_est, fdmdv->noise_est, fdmdv->Nc, 
fdmdv->phase_difference);
-
-    /* freq offset estimation state machine */
-
-    fdmdv->sync = freq_state(reliable_sync_bit, sync_bit, &fdmdv->fest_state, 
&fdmdv->timer, fdmdv->sync_mem);
-    fdmdv->foff  -= TRACK_COEFF*foff_fine;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: calc_snr()
-  AUTHOR......: David Rowe
-  DATE CREATED: 17 May 2012
-
-  Calculate current SNR estimate (3000Hz noise BW)
-
-\*---------------------------------------------------------------------------*/
-
-float calc_snr(int Nc, float sig_est[], float noise_est[])
-{
-    float S, SdB;
-    float mean, N50, N50dB, N3000dB;
-    float snr_dB;
-    int   c;
-
-    S = 0.0;
-    for(c=0; c<Nc+1; c++)
-       S += pow(sig_est[c], 2.0);
-    SdB = 10.0*log10(S+1E-12);
-
-    /* Average noise mag across all carriers and square to get an
-       average noise power.  This is an estimate of the noise power in
-       Rs = 50Hz of BW (note for raised root cosine filters Rs is the
-       noise BW of the filter) */
-
-    mean = 0.0;
-    for(c=0; c<Nc+1; c++)
-       mean += noise_est[c];
-    mean /= (Nc+1);
-    N50 = pow(mean, 2.0);
-    N50dB = 10.0*log10(N50+1E-12);
-
-    /* Now multiply by (3000 Hz)/(50 Hz) to find the total noise power
-       in 3000 Hz */
-
-    N3000dB = N50dB + 10.0*log10(3000.0/RS);
-
-    snr_dB = SdB - N3000dB;
-
-    return snr_dB;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: fdmdv_get_demod_stats()
-  AUTHOR......: David Rowe
-  DATE CREATED: 1 May 2012
-
-  Fills stats structure with a bunch of demod information.
-
-\*---------------------------------------------------------------------------*/
-
-void CODEC2_WIN32SUPPORT fdmdv_get_demod_stats(struct FDMDV *fdmdv,
-                                              struct FDMDV_STATS *fdmdv_stats)
-{
-    int   c;
-
-    fdmdv_stats->Nc = fdmdv->Nc;
-    fdmdv_stats->snr_est = calc_snr(fdmdv->Nc, fdmdv->sig_est, 
fdmdv->noise_est);
-    fdmdv_stats->sync = fdmdv->sync;
-    fdmdv_stats->foff = fdmdv->foff;
-    fdmdv_stats->rx_timing = fdmdv->rx_timing;
-    fdmdv_stats->clock_offset = 0.0; /* TODO - implement clock offset 
estimation */
-
-    for(c=0; c<fdmdv->Nc+1; c++) {
-       fdmdv_stats->rx_symbols[c] = fdmdv->phase_difference[c];
-    }
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: fdmdv_8_to_48()
-  AUTHOR......: David Rowe
-  DATE CREATED: 9 May 2012
-
-  Changes the sample rate of a signal from 8 to 48 kHz.  Experience
-  with PC based modems has shown that PC sound cards have a more
-  accurate sample clock when set for 48 kHz than 8 kHz.
-
-  n is the number of samples at the 8 kHz rate, there are FDMDV_OS*n samples
-  at the 48 kHz rate.  A memory of FDMDV_OS_TAPS/FDMDV_OS samples is reqd for
-  in8k[] (see t48_8.c unit test as example).
-
-  This is a classic polyphase upsampler.  We take the 8 kHz samples
-  and insert (FDMDV_OS-1) zeroes between each sample, then
-  FDMDV_OS_TAPS FIR low pass filter the signal at 4kHz.  As most of
-  the input samples are zeroes, we only need to multiply non-zero
-  input samples by filter coefficients.  The zero insertion and
-  filtering are combined in the code below and I'm too lazy to explain
-  it further right now....
-
-\*---------------------------------------------------------------------------*/
-
-void CODEC2_WIN32SUPPORT fdmdv_8_to_48(float out48k[], float in8k[], int n)
-{
-    int i,j,k,l;
-
-    /* make sure n is an integer multiple of the oversampling rate, ow
-       this function breaks */
-
-    assert((n % FDMDV_OS) == 0);
-
-    for(i=0; i<n; i++) {
-       for(j=0; j<FDMDV_OS; j++) {
-           out48k[i*FDMDV_OS+j] = 0.0;
-           for(k=0,l=0; k<FDMDV_OS_TAPS; k+=FDMDV_OS,l++)
-               out48k[i*FDMDV_OS+j] += fdmdv_os_filter[k+j]*in8k[i-l];
-           out48k[i*FDMDV_OS+j] *= FDMDV_OS;
-
-       }
-    }
-
-    /* update filter memory */
-
-    for(i=-(FDMDV_OS_TAPS/FDMDV_OS); i<0; i++)
-       in8k[i] = in8k[i + n];
-
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: fdmdv_48_to_8()
-  AUTHOR......: David Rowe
-  DATE CREATED: 9 May 2012
-
-  Changes the sample rate of a signal from 48 to 8 kHz.
-
-  n is the number of samples at the 8 kHz rate, there are FDMDV_OS*n
-  samples at the 48 kHz rate.  As above however a memory of
-  FDMDV_OS_TAPS samples is reqd for in48k[] (see t48_8.c unit test as example).
-
-  Low pass filter the 48 kHz signal at 4 kHz using the same filter as
-  the upsampler, then just output every FDMDV_OS-th filtered sample.
-
-\*---------------------------------------------------------------------------*/
-
-void CODEC2_WIN32SUPPORT fdmdv_48_to_8(float out8k[], float in48k[], int n)
-{
-    int i,j;
-
-    for(i=0; i<n; i++) {
-       out8k[i] = 0.0;
-       for(j=0; j<FDMDV_OS_TAPS; j++)
-           out8k[i] += fdmdv_os_filter[j]*in48k[i*FDMDV_OS-j];
-    }
-
-    /* update filter memory */
-
-    for(i=-FDMDV_OS_TAPS; i<0; i++)
-       in48k[i] = in48k[i + n*FDMDV_OS];
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: fdmdv_get_rx_spectrum()
-  AUTHOR......: David Rowe
-  DATE CREATED: 9 June 2012
-
-  Returns the FDMDV_NSPEC point magnitude spectrum of the rx signal in
-  dB. The spectral samples are scaled so that 0dB is the peak, a good
-  range for plotting is 0 to -40dB.
-
-  Note only the real part of the complex input signal is used at
-  present.  A complex variable is used for input for compatability
-  with the other rx signal procesing.
-
-  Successive calls can be used to build up a waterfall or spectrogram
-  plot, by mapping the received levels to colours.
-
-  The time-frequency resolution of the spectrum can be adjusted by varying
-  FDMDV_NSPEC.  Note that a 2*FDMDV_NSPEC size FFT is reqd to get
-  FDMDV_NSPEC output points. FDMDV_NSPEC must be a power of 2.
-
-  See octave/tget_spec.m for a demo real time spectral display using
-  Octave. This demo averages the output over time to get a smoother
-  display:
-
-     av = 0.9*av + 0.1*mag_dB
-
-\*---------------------------------------------------------------------------*/
-
-void CODEC2_WIN32SUPPORT fdmdv_get_rx_spectrum(struct FDMDV *f, float 
mag_spec_dB[],
-                                              COMP rx_fdm[], int nin)
-{
-    int   i,j;
-    COMP  fft_in[2*FDMDV_NSPEC];
-    COMP  fft_out[2*FDMDV_NSPEC];
-    float full_scale_dB;
-
-    /* update buffer of input samples */
-
-    for(i=0; i<2*FDMDV_NSPEC-nin; i++)
-       f->fft_buf[i] = f->fft_buf[i+nin];
-    for(j=0; j<nin; j++,i++)
-       f->fft_buf[i] = rx_fdm[j].real;
-    assert(i == 2*FDMDV_NSPEC);
-
-    /* window and FFT */
-
-    for(i=0; i<2*FDMDV_NSPEC; i++) {
-       fft_in[i].real = f->fft_buf[i] * (0.5 - 
0.5*cos((float)i*2.0*PI/(2*FDMDV_NSPEC)));
-       fft_in[i].imag = 0.0;
-    }
-
-    kiss_fft(f->fft_cfg, (kiss_fft_cpx *)fft_in, (kiss_fft_cpx *)fft_out);
-
-    /* FFT scales up a signal of level 1 FDMDV_NSPEC */
-
-    full_scale_dB = 20*log10(FDMDV_NSPEC);
-
-    /* scale and convert to dB */
-
-    for(i=0; i<FDMDV_NSPEC; i++) {
-       mag_spec_dB[i]  = 10.0*log10(fft_out[i].real*fft_out[i].real + 
fft_out[i].imag*fft_out[i].imag + 1E-12);
-       mag_spec_dB[i] -= full_scale_dB;
-    }
-}
-
-/*---------------------------------------------------------------------------*\
-
-  Function used during development to test if magnitude of digital
-  oscillators was drifting.  It was!
-
-\*---------------------------------------------------------------------------*/
-
-void CODEC2_WIN32SUPPORT fdmdv_dump_osc_mags(struct FDMDV *f)
-{
-    int   i;
-
-    fprintf(stderr, "phase_tx[]:\n");
-    for(i=0; i<=f->Nc; i++)
-       fprintf(stderr,"  %1.3f", cabsolute(f->phase_tx[i]));
-    fprintf(stderr,"\nfreq[]:\n");
-    for(i=0; i<=f->Nc; i++)
-       fprintf(stderr,"  %1.3f", cabsolute(f->freq[i]));
-    fprintf(stderr,"\nfoff_rect %1.3f  foff_phase_rect: %1.3f", 
cabsolute(f->foff_rect), cabsolute(f->foff_phase_rect));
-    fprintf(stderr,"\nphase_rx[]:\n");
-    for(i=0; i<=f->Nc; i++)
-       fprintf(stderr,"  %1.3f", cabsolute(f->phase_rx[i]));
-    fprintf(stderr, "\n\n");
-}
diff --git a/gr-vocoder/lib/codec2/fdmdv_internal.h 
b/gr-vocoder/lib/codec2/fdmdv_internal.h
deleted file mode 100644
index 24080e6..0000000
--- a/gr-vocoder/lib/codec2/fdmdv_internal.h
+++ /dev/null
@@ -1,176 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: fdmdv_internal.h
-  AUTHOR......: David Rowe
-  DATE CREATED: April 16 2012
-
-  Header file for FDMDV internal functions, exposed via this header
-  file for testing.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2012 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#ifndef __FDMDV_INTERNAL__
-#define __FDMDV_INTERNAL__
-
-#include "comp.h"
-#include "codec2_fdmdv.h"
-#include "kiss_fft.h"
-
-/*---------------------------------------------------------------------------*\
-
-                               DEFINES
-
-\*---------------------------------------------------------------------------*/
-
-#define PI             3.141592654
-#define FS                    8000  /* sample rate in Hz                       
                             */
-#define T                 (1.0/FS)  /* sample period in seconds                
                             */
-#define RS                      50  /* symbol rate in Hz                       
                             */
-#define NC                      20  /* max number of data carriers (plus one 
pilot in the centre)           */
-#define NB                       2  /* Bits/symbol for QPSK modulation         
                             */
-#define RB              (NC*RS*NB)  /* bit rate                                
                             */
-#define M                  (FS/RS)  /* oversampling factor                     
                             */
-#define NSYM                     6  /* number of symbols to filter over        
                             */
-#define NFILTER            (NSYM*M) /* size of tx/rx filters at sample rate M  
                             */
-
-#define FSEP                    75  /* Default separation between carriers 
(Hz)                             */
-
-#define NT                       5  /* number of symbols we estimate timing 
over                            */
-#define P                        4  /* oversample factor used for initial rx 
symbol filtering               */
-#define NFILTERTIMING (M+NFILTER+M) /* filter memory used for resampling after 
timing estimation            */
-
-#define NPILOT_LUT                 (4*M)    /* number of pilot look up table 
samples                 */
-#define NPILOTCOEFF                   30    /* number of FIR filter coeffs in 
LP filter              */
-#define NPILOTBASEBAND (NPILOTCOEFF+M+M/P)  /* number of pilot baseband 
samples reqd for pilot LPF   */
-#define NPILOTLPF                  (4*M)    /* number of samples we DFT pilot 
over, pilot est window */
-#define MPILOTFFT                    256
-
-#define NSYNC_MEM                6
-
-/* averaging filter coeffs */
-
-#define TRACK_COEFF              0.5
-#define SNR_COEFF                0.9       /* SNR est averaging filter coeff */
-
-/*---------------------------------------------------------------------------*\
-
-                               STRUCT for States
-
-\*---------------------------------------------------------------------------*/
-
-struct FDMDV {
-
-    int   Nc;
-    float fsep;
-
-    /* test data (test frame) states */
-
-    int  ntest_bits;
-    int  current_test_bit;
-    int *rx_test_bits_mem;
-
-    /* Modulator */
-
-    int  old_qpsk_mapping;
-    int  tx_pilot_bit;
-    COMP prev_tx_symbols[NC+1];
-    COMP tx_filter_memory[NC+1][NSYM];
-    COMP phase_tx[NC+1];
-    COMP freq[NC+1];
-
-    /* Pilot generation at demodulator */
-
-    COMP pilot_lut[NPILOT_LUT];
-    int  pilot_lut_index;
-    int  prev_pilot_lut_index;
-
-    /* freq offset estimation states */
-
-    kiss_fft_cfg fft_pilot_cfg;
-    COMP pilot_baseband1[NPILOTBASEBAND];
-    COMP pilot_baseband2[NPILOTBASEBAND];
-    COMP pilot_lpf1[NPILOTLPF];
-    COMP pilot_lpf2[NPILOTLPF];
-    COMP S1[MPILOTFFT];
-    COMP S2[MPILOTFFT];
-
-    /* freq offset correction states */
-
-    float foff;
-    COMP foff_rect;
-    COMP foff_phase_rect;
-
-    /* Demodulator */
-
-    COMP  phase_rx[NC+1];
-    COMP  rx_filter_memory[NC+1][NFILTER];
-    COMP  rx_filter_mem_timing[NC+1][NT*P];
-    COMP  rx_baseband_mem_timing[NC+1][NFILTERTIMING];
-    float rx_timing;
-    COMP  phase_difference[NC+1];
-    COMP  prev_rx_symbols[NC+1];
-
-    /* sync state machine */
-
-    int  sync_mem[NSYNC_MEM];
-    int  fest_state;
-    int  sync;
-    int  timer;
-
-    /* SNR estimation states */
-
-    float sig_est[NC+1];
-    float noise_est[NC+1];
-
-    /* Buf for FFT/waterfall */
-
-    float fft_buf[2*FDMDV_NSPEC];
-    kiss_fft_cfg fft_cfg;
- };
-
-/*---------------------------------------------------------------------------*\
-
-                              FUNCTION PROTOTYPES
-
-\*---------------------------------------------------------------------------*/
-
-void bits_to_dqpsk_symbols(COMP tx_symbols[], int Nc, COMP prev_tx_symbols[], 
int tx_bits[], int *pilot_bit, int old_qpsk_mapping);
-void tx_filter(COMP tx_baseband[NC+1][M], int Nc, COMP tx_symbols[], COMP 
tx_filter_memory[NC+1][NSYM]);
-void fdm_upconvert(COMP tx_fdm[], int Nc, COMP tx_baseband[NC+1][M], COMP 
phase_tx[], COMP freq_tx[]);
-void generate_pilot_fdm(COMP *pilot_fdm, int *bit, float *symbol, float 
*filter_mem, COMP *phase, COMP *freq);
-void generate_pilot_lut(COMP pilot_lut[], COMP *pilot_freq);
-float rx_est_freq_offset(struct FDMDV *f, COMP rx_fdm[], int nin);
-void lpf_peak_pick(float *foff, float *max, COMP pilot_baseband[], COMP 
pilot_lpf[], kiss_fft_cfg fft_pilot_cfg, COMP S[], int nin);
-void freq_shift(COMP rx_fdm_fcorr[], COMP rx_fdm[], float foff, COMP 
*foff_rect, COMP *foff_phase_rect, int nin);
-void fdm_downconvert(COMP rx_baseband[NC+1][M+M/P], int Nc, COMP rx_fdm[], 
COMP phase_rx[], COMP freq[], int nin);
-void rx_filter(COMP rx_filt[NC+1][P+1], int Nc, COMP rx_baseband[NC+1][M+M/P], 
COMP rx_filter_memory[NC+1][NFILTER], int nin);
-float rx_est_timing(COMP  rx_symbols[], int Nc,
-                  COMP  rx_filt[NC+1][P+1],
-                  COMP  rx_baseband[NC+1][M+M/P],
-                  COMP  rx_filter_mem_timing[NC+1][NT*P],
-                  float env[],
-                  COMP  rx_baseband_mem_timing[NC+1][NFILTERTIMING],
-                  int   nin);
-float qpsk_to_bits(int rx_bits[], int *sync_bit, int Nc, COMP 
phase_difference[], COMP prev_rx_symbols[], COMP rx_symbols[], int 
old_qpsk_mapping);
-void snr_update(float sig_est[], float noise_est[], int Nc, COMP 
phase_difference[]);
-int freq_state(int *reliable_sync_bit, int sync_bit, int *state, int *timer, 
int *sync_mem);
-float calc_snr(int Nc, float sig_est[], float noise_est[]);
-
-#endif
diff --git a/gr-vocoder/lib/codec2/fifo.c b/gr-vocoder/lib/codec2/fifo.c
deleted file mode 100644
index acac261..0000000
--- a/gr-vocoder/lib/codec2/fifo.c
+++ /dev/null
@@ -1,142 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: fifo.c
-  AUTHOR......: David Rowe
-  DATE CREATED: Oct 15 2012
-
-  A FIFO design useful in gluing the FDMDV modem and codec together in
-  integrated applications.  The unittest/tfifo indicates these
-  routines are thread safe without the need for syncronisation
-  object, e.g. a different thread can read and write to a fifo at the
-  same time.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2012 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#include <assert.h>
-#include <stdlib.h>
-#include <stdio.h>
-#include "codec2_fifo.h"
-
-struct FIFO {
-    short *buf;
-    short *pin;
-    short *pout;
-    int    nshort;
-};
-
-struct FIFO *fifo_create(int nshort) {
-    struct FIFO *fifo;
-
-    fifo = (struct FIFO *)malloc(sizeof(struct FIFO));
-    assert(fifo != NULL);
-
-    fifo->buf = (short*)malloc(sizeof(short)*nshort);
-    assert(fifo->buf != NULL);
-    fifo->pin = fifo->buf;
-    fifo->pout = fifo->buf;
-    fifo->nshort = nshort;
-
-    return fifo;
-}
-
-void fifo_destroy(struct FIFO *fifo) {
-    assert(fifo != NULL);
-    free(fifo->buf);
-    free(fifo);
-}
-
-int fifo_write(struct FIFO *fifo, short data[], int n) {
-    int            i;
-    int            fifo_free;
-    short         *pdata;
-    short         *pin = fifo->pin;
-
-    assert(fifo != NULL);
-    assert(data != NULL);
-
-    // available storage is one less than nshort as prd == pwr
-    // is reserved for empty rather than full
-
-    fifo_free = fifo->nshort - fifo_used(fifo) - 1;
-
-    if (n > fifo_free) {
-       return -1;
-    }
-    else {
-
-       /* This could be made more efficient with block copies
-          using memcpy */
-
-       pdata = data;
-       for(i=0; i<n; i++) {
-           *pin++ = *pdata++;
-           if (pin == (fifo->buf + fifo->nshort))
-               pin = fifo->buf;
-       }
-       fifo->pin = pin;
-    }
-
-    return 0;
-}
-
-int fifo_read(struct FIFO *fifo, short data[], int n)
-{
-    int            i;
-    short         *pdata;
-    short         *pout = fifo->pout;
-
-    assert(fifo != NULL);
-    assert(data != NULL);
-
-    if (n > fifo_used(fifo)) {
-       return -1;
-    }
-    else {
-
-       /* This could be made more efficient with block copies
-          using memcpy */
-
-       pdata = data;
-       for(i=0; i<n; i++) {
-           *pdata++ = *pout++;
-           if (pout == (fifo->buf + fifo->nshort))
-               pout = fifo->buf;
-       }
-       fifo->pout = pout;
-    }
-
-    return 0;
-}
-
-int fifo_used(struct FIFO *fifo)
-{
-    short         *pin = fifo->pin;
-    short         *pout = fifo->pout;
-    unsigned int   used;
-
-    assert(fifo != NULL);
-    if (pin >= pout)
-        used = pin - pout;
-    else
-        used = fifo->nshort + (unsigned int)(pin - pout);
-
-    return used;
-}
-
diff --git a/gr-vocoder/lib/codec2/generate_codebook.c 
b/gr-vocoder/lib/codec2/generate_codebook.c
deleted file mode 100644
index 705f29d..0000000
--- a/gr-vocoder/lib/codec2/generate_codebook.c
+++ /dev/null
@@ -1,179 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: generate_codebook.c
-  AUTHOR......: Bruce Perens
-  DATE CREATED: 29 Sep 2010
-
-  Generate header files containing LSP quantisers, runs at compile time.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#include <stdlib.h>
-#include <stdio.h>
-#include <ctype.h>
-#include <math.h>
-
-static const char usage[] =
-"Usage: %s filename array_name [filename ...]\n"
-"\tCreate C code for codebook tables.\n";
-
-static const char format[] =
-"The table format must be:\n"
-"\tTwo integers describing the dimensions of the codebook.\n"
-"\tThen, enough numbers to fill the specified dimensions.\n";
-
-static const char header[] =
-"/* THIS IS A GENERATED FILE. Edit generate_codebook.c and its input */\n\n"
-"/*\n"
-" * This intermediary file and the files that used to create it are under \n"
-" * The LGPL. See the file COPYING.\n"
-" */\n\n"
-"#include \"defines.h\"\n\n";
-
-struct codebook {
-  unsigned int k;
-  unsigned int log2m;
-  unsigned int m;
-  float * cb;
-};
-
-static void
-dump_array(const struct codebook * b, int index)
-{
-  int  limit = b->k * b->m;
-  int  i;
-
-  printf("static const float codes%d[] = {\n", index);
-  for ( i = 0; i < limit; i++ ) {
-    printf("  %g", b->cb[i]);
-    if ( i < limit - 1 )
-      printf(",");
-
-    /* organise VQs by rows, looks prettier */
-    if ( ((i+1) % b->k) == 0 )
-       printf("\n");
-  }
-  printf("};\n");
-}
-
-static void
-dump_structure(const struct codebook * b, int index)
-{
-  printf("  {\n");
-  printf("    %d,\n", b->k);
-  printf("    %g,\n", log(b->m) / log(2));
-  printf("    %d,\n", b->m);
-  printf("    codes%d\n", index);
-  printf("  }");
-}
-
-float
-get_float(FILE * in, const char * name, char * * cursor, char * buffer,
- int size)
-{
-  for ( ; ; ) {
-    char *     s = *cursor;
-    char       c;
-
-    while ( (c = *s) != '\0' && !isdigit(c) && c != '-' && c != '.' )
-      s++;
-
-    /* Comments start with "#" and continue to the end of the line. */
-    if ( c != '\0' && c != '#' ) {
-      char *   end = 0;
-      float    f = 0;
-
-      f = strtod(s, &end);
-
-      if ( end != s )
-        *cursor = end;
-        return f;
-    }
-
-    if ( fgets(buffer, size, in) == NULL ) {
-      fprintf(stderr, "%s: Format error. %s\n", name, format);
-      exit(1);
-    }
-    *cursor = buffer;
-  }
-}
-
-static struct codebook *
-load(FILE * file, const char * name)
-{
-  char                 line[1024];
-  char *               cursor = line;
-  struct codebook *    b = malloc(sizeof(struct codebook));
-  int                  i;
-  int                  size;
-
-  *cursor = '\0';
-
-  b->k = (int)get_float(file, name, &cursor, line, sizeof(line));
-  b->m = (int)get_float(file, name ,&cursor, line, sizeof(line));
-  size = b->k * b->m;
-
-  b->cb = (float *)malloc(size * sizeof(float));
-
-  for ( i = 0; i < size; i++ )
-    b->cb[i] = get_float(file, name, &cursor, line, sizeof(line));
-
-  return b;
-}
-
-int
-main(int argc, char * * argv)
-{
-  struct codebook * *  cb = malloc(argc * sizeof(struct codebook *));
-  int                  i;
-
-  if ( argc < 2 ) {
-    fprintf(stderr, usage, argv[0]);
-    fprintf(stderr, format);
-    exit(1);
-  }
-
-  for ( i = 0; i < argc - 2; i++ ) {
-    FILE *     in = fopen(argv[i + 2], "r");
-
-    if ( in == NULL ) {
-      perror(argv[i + 2]);
-      exit(1);
-    }
-
-    cb[i] = load(in, argv[i + 2]);
-
-    fclose(in);
-  }
-
-  printf(header);
-  for ( i = 0; i < argc - 2; i++ ) {
-    printf("  /* %s */\n", argv[i + 2]);
-    dump_array(cb[i], i);
-  }
-  printf("\nconst struct lsp_codebook %s[] = {\n", argv[1]);
-  for ( i = 0; i < argc - 2; i++ ) {
-    printf("  /* %s */\n", argv[i + 2]);
-    dump_structure(cb[i], i);
-    printf(",\n");
-  }
-  printf("  { 0, 0, 0, 0 }\n");
-  printf("};\n");
-
-  return 0;
-}
diff --git a/gr-vocoder/lib/codec2/globals.c b/gr-vocoder/lib/codec2/globals.c
deleted file mode 100644
index da2faf7..0000000
--- a/gr-vocoder/lib/codec2/globals.c
+++ /dev/null
@@ -1,49 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: globals.c
-  AUTHOR......: David Rowe
-  DATE CREATED: 11/5/94
-
-  Globals for sinusoidal speech coder.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2009 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#include "sine.h"      /* global defines for coder */
-
-/* Globals used in encoder and decoder */
-
-int frames;            /* number of frames processed so far */
-float Sn[M];           /* float input speech samples */
-MODEL model;           /* model parameters for the current frame */
-int Nw;                        /* number of samples in analysis window */
-float sig;             /* energy of current frame */
-
-/* Globals used in encoder */
-
-float w[M];            /* time domain hamming window */
-COMP W[FFT_ENC];       /* DFT of w[] */
-COMP Sw[FFT_ENC];      /* DFT of current frame */
-
-/* Globals used in decoder */
-
-COMP Sw_[FFT_ENC];     /* DFT of all voiced synthesised signal */
-float Sn_[AW_DEC];     /* synthesised speech */
-float Pn[AW_DEC];      /* time domain Parzen (trapezoidal) window */
-
diff --git a/gr-vocoder/lib/codec2/globals.h b/gr-vocoder/lib/codec2/globals.h
deleted file mode 100644
index d01e7b4..0000000
--- a/gr-vocoder/lib/codec2/globals.h
+++ /dev/null
@@ -1,47 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: globals.h
-  AUTHOR......: David Rowe
-  DATE CREATED: 1/11/94
-
-  Globals for sinusoidal speech coder.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2009 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-/* Globals used in encoder and decoder */
-
-extern int frames;     /* number of frames processed so far */
-extern float Sn[];     /* float input speech samples */
-extern MODEL model;    /* model parameters for the current frame */
-extern int Nw;         /* number of samples in analysis window */
-extern float sig;      /* energy of current frame */
-
-/* Globals used in encoder */
-
-extern float w[];      /* time domain hamming window */
-extern COMP W[];       /* frequency domain hamming window */
-extern COMP Sw[];      /* DFT of current frame */
-extern COMP Sw_[];     /* DFT of all voiced synthesised signal */
-
-/* Globals used in decoder */
-
-extern float Sn_[];    /* output synthesised speech samples */
-extern float Pn[];     /* time domain Parzen (trapezoidal) window */
-
diff --git a/gr-vocoder/lib/codec2/glottal.c b/gr-vocoder/lib/codec2/glottal.c
deleted file mode 100644
index 8ac3ff4..0000000
--- a/gr-vocoder/lib/codec2/glottal.c
+++ /dev/null
@@ -1,257 +0,0 @@
-const float glottal[]={
-  0.000000,
-  -0.057687,
-  -0.115338,
-  -0.172917,
-  -0.230385,
-  -0.287707,
-  -0.344845,
-  -0.401762,
-  -0.458419,
-  -0.514781,
-  -0.570809,
-  -0.626467,
-  -0.681721,
-  -0.736537,
-  -0.790884,
-  -0.844733,
-  -0.898057,
-  -0.950834,
-  -1.003044,
-  -1.054670,
-  -1.105700,
-  -1.156124,
-  -1.205936,
-  -1.255132,
-  -1.303711,
-  -1.351675,
-  -1.399026,
-  -1.445769,
-  -1.491908,
-  -1.537448,
-  -1.582393,
-  -1.626747,
-  -1.670514,
-  -1.713693,
-  -1.756285,
-  -1.798288,
-  -1.839697,
-  -1.880507,
-  -1.920712,
-  -1.960302,
-  -1.999269,
-  -2.037603,
-  -2.075295,
-  -2.112335,
-  -2.148716,
-  -2.184430,
-  -2.219472,
-  -2.253839,
-  -2.287531,
-  -2.320550,
-  -2.352900,
-  -2.384588,
-  -2.415623,
-  -2.446019,
-  -2.475788,
-  -2.504946,
-  -2.533512,
-  -2.561501,
-  -2.588934,
-  -2.615827,
-  -2.642198,
-  -2.668064,
-  -2.693439,
-  -2.718337,
-  -2.742767,
-  -2.766738,
-  -2.790256,
-  -2.813322,
-  -2.835936,
-  -2.858094,
-  -2.879790,
-  -2.901016,
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diff --git a/gr-vocoder/lib/codec2/hanning.h b/gr-vocoder/lib/codec2/hanning.h
deleted file mode 100644
index 81d88dc..0000000
--- a/gr-vocoder/lib/codec2/hanning.h
+++ /dev/null
@@ -1,644 +0,0 @@
-/* Generated by hanning_file() Octave function */
-
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-  0.000386689,
-  0.000217525,
-  9.66816e-05,
-  2.4171e-05,
-  0
-};
diff --git a/gr-vocoder/lib/codec2/interp.c b/gr-vocoder/lib/codec2/interp.c
deleted file mode 100644
index be89fc3..0000000
--- a/gr-vocoder/lib/codec2/interp.c
+++ /dev/null
@@ -1,323 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: interp.c
-  AUTHOR......: David Rowe
-  DATE CREATED: 9/10/09
-
-  Interpolation of 20ms frames to 10ms frames.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2009 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#include <assert.h>
-#include <math.h>
-#include <string.h>
-#include <stdio.h>
-
-#include "defines.h"
-#include "interp.h"
-#include "lsp.h"
-#include "quantise.h"
-
-float sample_log_amp(MODEL *model, float w);
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: interp()
-  AUTHOR......: David Rowe
-  DATE CREATED: 22/8/10
-
-  Given two frames decribed by model parameters 20ms apart, determines
-  the model parameters of the 10ms frame between them.  Assumes
-  voicing is available for middle (interpolated) frame.  Outputs are
-  amplitudes and Wo for the interpolated frame.
-
-  This version can interpolate the amplitudes between two frames of
-  different Wo and L.
-
-  This version works by log linear interpolation, but listening tests
-  showed it creates problems in background noise, e.g. hts2a and mmt1.
-  When this function is used (--dec mode) bg noise appears to be
-  amplitude modulated, and gets louder.  The interp_lsp() function
-  below seems to do a better job.
-
-\*---------------------------------------------------------------------------*/
-
-void interpolate(
-  MODEL *interp,    /* interpolated model params                     */
-  MODEL *prev,      /* previous frames model params                  */
-  MODEL *next       /* next frames model params                      */
-)
-{
-    int   l;
-    float w,log_amp;
-
-    /* Wo depends on voicing of this and adjacent frames */
-
-    if (interp->voiced) {
-       if (prev->voiced && next->voiced)
-           interp->Wo = (prev->Wo + next->Wo)/2.0;
-       if (!prev->voiced && next->voiced)
-           interp->Wo = next->Wo;
-       if (prev->voiced && !next->voiced)
-           interp->Wo = prev->Wo;
-    }
-    else {
-       interp->Wo = TWO_PI/P_MAX;
-    }
-    interp->L = PI/interp->Wo;
-
-    /* Interpolate amplitudes using linear interpolation in log domain */
-
-    for(l=1; l<=interp->L; l++) {
-       w = l*interp->Wo;
-       log_amp = (sample_log_amp(prev, w) + sample_log_amp(next, w))/2.0;
-       interp->A[l] = pow(10.0, log_amp);
-    }
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: sample_log_amp()
-  AUTHOR......: David Rowe
-  DATE CREATED: 22/8/10
-
-  Samples the amplitude envelope at an arbitrary frequency w.  Uses
-  linear interpolation in the log domain to sample between harmonic
-  amplitudes.
-
-\*---------------------------------------------------------------------------*/
-
-float sample_log_amp(MODEL *model, float w)
-{
-    int   m;
-    float f, log_amp;
-
-    assert(w > 0.0); assert (w <= PI);
-
-    m = floorf(w/model->Wo + 0.5);
-    f = (w - m*model->Wo)/w;
-    assert(f <= 1.0);
-
-    if (m < 1) {
-       log_amp = f*log10f(model->A[1] + 1E-6);
-    }
-    else if ((m+1) > model->L) {
-       log_amp = (1.0-f)*log10f(model->A[model->L] + 1E-6);
-    }
-    else {
-       log_amp = (1.0-f)*log10f(model->A[m] + 1E-6) +
-                  f*log10f(model->A[m+1] + 1E-6);
-    }
-
-    return log_amp;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: interp_lsp()
-  AUTHOR......: David Rowe
-  DATE CREATED: 10 Nov 2010
-
-  Given two frames decribed by model parameters 20ms apart, determines
-  the model parameters of the 10ms frame between them.  Assumes
-  voicing is available for middle (interpolated) frame.  Outputs are
-  amplitudes and Wo for the interpolated frame.
-
-  This version uses interpolation of LSPs, seems to do a better job
-  with bg noise.
-
-\*---------------------------------------------------------------------------*/
-
-void interpolate_lsp(
-  kiss_fft_cfg  fft_fwd_cfg,
-  MODEL *interp,    /* interpolated model params                     */
-  MODEL *prev,      /* previous frames model params                  */
-  MODEL *next,      /* next frames model params                      */
-  float *prev_lsps, /* previous frames LSPs                          */
-  float  prev_e,    /* previous frames LPC energy                    */
-  float *next_lsps, /* next frames LSPs                              */
-  float  next_e,    /* next frames LPC energy                        */
-  float *ak_interp, /* interpolated aks for this frame               */
-  float *lsps_interp/* interpolated lsps for this frame              */
-)
-{
-    int   i;
-    float e;
-    float snr;
-
-    /* trap corner case where V est is probably wrong */
-
-    if (interp->voiced && !prev->voiced && !next->voiced) {
-       interp->voiced = 0;
-    }
-
-    /* Wo depends on voicing of this and adjacent frames */
-
-    if (interp->voiced) {
-       if (prev->voiced && next->voiced)
-           interp->Wo = (prev->Wo + next->Wo)/2.0;
-       if (!prev->voiced && next->voiced)
-           interp->Wo = next->Wo;
-       if (prev->voiced && !next->voiced)
-           interp->Wo = prev->Wo;
-    }
-    else {
-       interp->Wo = TWO_PI/P_MAX;
-    }
-    interp->L = PI/interp->Wo;
-
-    //printf("  interp: prev_v: %d next_v: %d prev_Wo: %f next_Wo: %f\n",
-    //    prev->voiced, next->voiced, prev->Wo, next->Wo);
-    //printf("  interp: Wo: %1.5f  L: %d\n", interp->Wo, interp->L);
-
-    /* interpolate LSPs */
-
-    for(i=0; i<LPC_ORD; i++) {
-       lsps_interp[i] = (prev_lsps[i] + next_lsps[i])/2.0;
-    }
-
-    /* Interpolate LPC energy in log domain */
-
-    e = powf(10.0, (log10f(prev_e) + log10f(next_e))/2.0);
-    //printf("  interp: e: %f\n", e);
-
-    /* convert back to amplitudes */
-
-    lsp_to_lpc(lsps_interp, ak_interp, LPC_ORD);
-    aks_to_M2(fft_fwd_cfg, ak_interp, LPC_ORD, interp, e, &snr, 0, 0, 1, 1, 
LPCPF_BETA, LPCPF_GAMMA);
-    //printf("  interp: ak[1]: %f A[1] %f\n", ak_interp[1], interp->A[1]);
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: interp_Wo()
-  AUTHOR......: David Rowe
-  DATE CREATED: 22 May 2012
-
-  Interpolates centre 10ms sample of Wo and L samples given two
-  samples 20ms apart. Assumes voicing is available for centre
-  (interpolated) frame.
-
-\*---------------------------------------------------------------------------*/
-
-void interp_Wo(
-  MODEL *interp,    /* interpolated model params                     */
-  MODEL *prev,      /* previous frames model params                  */
-  MODEL *next       /* next frames model params                      */
-              )
-{
-    interp_Wo2(interp, prev, next, 0.5);
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: interp_Wo2()
-  AUTHOR......: David Rowe
-  DATE CREATED: 22 May 2012
-
-  Weighted interpolation of two Wo samples.
-
-\*---------------------------------------------------------------------------*/
-
-void interp_Wo2(
-  MODEL *interp,    /* interpolated model params                     */
-  MODEL *prev,      /* previous frames model params                  */
-  MODEL *next,      /* next frames model params                      */
-  float  weight
-)
-{
-    /* trap corner case where voicing est is probably wrong */
-
-    if (interp->voiced && !prev->voiced && !next->voiced) {
-       interp->voiced = 0;
-    }
-
-    /* Wo depends on voicing of this and adjacent frames */
-
-    if (interp->voiced) {
-       if (prev->voiced && next->voiced)
-           interp->Wo = (1.0 - weight)*prev->Wo + weight*next->Wo;
-       if (!prev->voiced && next->voiced)
-           interp->Wo = next->Wo;
-       if (prev->voiced && !next->voiced)
-           interp->Wo = prev->Wo;
-    }
-    else {
-       interp->Wo = TWO_PI/P_MAX;
-    }
-    interp->L = PI/interp->Wo;
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: interp_energy()
-  AUTHOR......: David Rowe
-  DATE CREATED: 22 May 2012
-
-  Interpolates centre 10ms sample of energy given two samples 20ms
-  apart.
-
-\*---------------------------------------------------------------------------*/
-
-float interp_energy(float prev_e, float next_e)
-{
-    return powf(10.0, (log10f(prev_e) + log10f(next_e))/2.0);
-
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: interp_energy2()
-  AUTHOR......: David Rowe
-  DATE CREATED: 22 May 2012
-
-  Interpolates centre 10ms sample of energy given two samples 20ms
-  apart.
-
-\*---------------------------------------------------------------------------*/
-
-float interp_energy2(float prev_e, float next_e, float weight)
-{
-    return powf(10.0, (1.0 - weight)*log10f(prev_e) + weight*log10f(next_e));
-
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: interpolate_lsp_ver2()
-  AUTHOR......: David Rowe
-  DATE CREATED: 22 May 2012
-
-  Weighted interpolation of LSPs.
-
-\*---------------------------------------------------------------------------*/
-
-void interpolate_lsp_ver2(float interp[], float prev[],  float next[], float 
weight)
-{
-    int i;
-
-    for(i=0; i<LPC_ORD; i++)
-       interp[i] = (1.0 - weight)*prev[i] + weight*next[i];
-}
-
diff --git a/gr-vocoder/lib/codec2/interp.h b/gr-vocoder/lib/codec2/interp.h
deleted file mode 100644
index 24cb946..0000000
--- a/gr-vocoder/lib/codec2/interp.h
+++ /dev/null
@@ -1,45 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: interp.h
-  AUTHOR......: David Rowe
-  DATE CREATED: 9/10/09
-
-  Interpolation of 20ms frames to 10ms frames.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2009 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#ifndef __INTERP__
-#define __INTERP__
-
-#include "kiss_fft.h"
-
-void interpolate(MODEL *interp, MODEL *prev, MODEL *next);
-void interpolate_lsp(kiss_fft_cfg  fft_dec_cfg,
-                    MODEL *interp, MODEL *prev, MODEL *next,
-                    float *prev_lsps, float  prev_e,
-                    float *next_lsps, float  next_e,
-                    float *ak_interp, float *lsps_interp);
-void interp_Wo(MODEL *interp, MODEL *prev, MODEL *next);
-void interp_Wo2(MODEL *interp, MODEL *prev, MODEL *next, float weight);
-float interp_energy(float prev, float next);
-float interp_energy2(float prev, float next, float weight);
-void interpolate_lsp_ver2(float interp[], float prev[],  float next[], float 
weight);
-
-#endif
diff --git a/gr-vocoder/lib/codec2/kiss_fft.c b/gr-vocoder/lib/codec2/kiss_fft.c
deleted file mode 100644
index 17b4e72..0000000
--- a/gr-vocoder/lib/codec2/kiss_fft.c
+++ /dev/null
@@ -1,408 +0,0 @@
-/*
-Copyright (c) 2003-2010, Mark Borgerding
-
-All rights reserved.
-
-Redistribution and use in source and binary forms, with or without 
modification, are permitted provided that the following conditions are met:
-
-    * Redistributions of source code must retain the above copyright notice, 
this list of conditions and the following disclaimer.
-    * Redistributions in binary form must reproduce the above copyright 
notice, this list of conditions and the following disclaimer in the 
documentation and/or other materials provided with the distribution.
-    * Neither the author nor the names of any contributors may be used to 
endorse or promote products derived from this software without specific prior 
written permission.
-
-THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS" 
AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE 
IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE ARE 
DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT OWNER OR CONTRIBUTORS BE LIABLE FOR 
ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES 
(INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; 
LOSS OF USE, DATA, OR PROFI [...]
-*/
-
-
-#include "_kiss_fft_guts.h"
-/* The guts header contains all the multiplication and addition macros that 
are defined for
- fixed or floating point complex numbers.  It also delares the kf_ internal 
functions.
- */
-
-static void kf_bfly2(
-        kiss_fft_cpx * Fout,
-        const size_t fstride,
-        const kiss_fft_cfg st,
-        int m
-        )
-{
-    kiss_fft_cpx * Fout2;
-    kiss_fft_cpx * tw1 = st->twiddles;
-    kiss_fft_cpx t;
-    Fout2 = Fout + m;
-    do{
-        C_FIXDIV(*Fout,2); C_FIXDIV(*Fout2,2);
-
-        C_MUL (t,  *Fout2 , *tw1);
-        tw1 += fstride;
-        C_SUB( *Fout2 ,  *Fout , t );
-        C_ADDTO( *Fout ,  t );
-        ++Fout2;
-        ++Fout;
-    }while (--m);
-}
-
-static void kf_bfly4(
-        kiss_fft_cpx * Fout,
-        const size_t fstride,
-        const kiss_fft_cfg st,
-        const size_t m
-        )
-{
-    kiss_fft_cpx *tw1,*tw2,*tw3;
-    kiss_fft_cpx scratch[6];
-    size_t k=m;
-    const size_t m2=2*m;
-    const size_t m3=3*m;
-
-
-    tw3 = tw2 = tw1 = st->twiddles;
-
-    do {
-        C_FIXDIV(*Fout,4); C_FIXDIV(Fout[m],4); C_FIXDIV(Fout[m2],4); 
C_FIXDIV(Fout[m3],4);
-
-        C_MUL(scratch[0],Fout[m] , *tw1 );
-        C_MUL(scratch[1],Fout[m2] , *tw2 );
-        C_MUL(scratch[2],Fout[m3] , *tw3 );
-
-        C_SUB( scratch[5] , *Fout, scratch[1] );
-        C_ADDTO(*Fout, scratch[1]);
-        C_ADD( scratch[3] , scratch[0] , scratch[2] );
-        C_SUB( scratch[4] , scratch[0] , scratch[2] );
-        C_SUB( Fout[m2], *Fout, scratch[3] );
-        tw1 += fstride;
-        tw2 += fstride*2;
-        tw3 += fstride*3;
-        C_ADDTO( *Fout , scratch[3] );
-
-        if(st->inverse) {
-            Fout[m].r = scratch[5].r - scratch[4].i;
-            Fout[m].i = scratch[5].i + scratch[4].r;
-            Fout[m3].r = scratch[5].r + scratch[4].i;
-            Fout[m3].i = scratch[5].i - scratch[4].r;
-        }else{
-            Fout[m].r = scratch[5].r + scratch[4].i;
-            Fout[m].i = scratch[5].i - scratch[4].r;
-            Fout[m3].r = scratch[5].r - scratch[4].i;
-            Fout[m3].i = scratch[5].i + scratch[4].r;
-        }
-        ++Fout;
-    }while(--k);
-}
-
-static void kf_bfly3(
-         kiss_fft_cpx * Fout,
-         const size_t fstride,
-         const kiss_fft_cfg st,
-         size_t m
-         )
-{
-     size_t k=m;
-     const size_t m2 = 2*m;
-     kiss_fft_cpx *tw1,*tw2;
-     kiss_fft_cpx scratch[5];
-     kiss_fft_cpx epi3;
-     epi3 = st->twiddles[fstride*m];
-
-     tw1=tw2=st->twiddles;
-
-     do{
-         C_FIXDIV(*Fout,3); C_FIXDIV(Fout[m],3); C_FIXDIV(Fout[m2],3);
-
-         C_MUL(scratch[1],Fout[m] , *tw1);
-         C_MUL(scratch[2],Fout[m2] , *tw2);
-
-         C_ADD(scratch[3],scratch[1],scratch[2]);
-         C_SUB(scratch[0],scratch[1],scratch[2]);
-         tw1 += fstride;
-         tw2 += fstride*2;
-
-         Fout[m].r = Fout->r - HALF_OF(scratch[3].r);
-         Fout[m].i = Fout->i - HALF_OF(scratch[3].i);
-
-         C_MULBYSCALAR( scratch[0] , epi3.i );
-
-         C_ADDTO(*Fout,scratch[3]);
-
-         Fout[m2].r = Fout[m].r + scratch[0].i;
-         Fout[m2].i = Fout[m].i - scratch[0].r;
-
-         Fout[m].r -= scratch[0].i;
-         Fout[m].i += scratch[0].r;
-
-         ++Fout;
-     }while(--k);
-}
-
-static void kf_bfly5(
-        kiss_fft_cpx * Fout,
-        const size_t fstride,
-        const kiss_fft_cfg st,
-        int m
-        )
-{
-    kiss_fft_cpx *Fout0,*Fout1,*Fout2,*Fout3,*Fout4;
-    int u;
-    kiss_fft_cpx scratch[13];
-    kiss_fft_cpx * twiddles = st->twiddles;
-    kiss_fft_cpx *tw;
-    kiss_fft_cpx ya,yb;
-    ya = twiddles[fstride*m];
-    yb = twiddles[fstride*2*m];
-
-    Fout0=Fout;
-    Fout1=Fout0+m;
-    Fout2=Fout0+2*m;
-    Fout3=Fout0+3*m;
-    Fout4=Fout0+4*m;
-
-    tw=st->twiddles;
-    for ( u=0; u<m; ++u ) {
-        C_FIXDIV( *Fout0,5); C_FIXDIV( *Fout1,5); C_FIXDIV( *Fout2,5); 
C_FIXDIV( *Fout3,5); C_FIXDIV( *Fout4,5);
-        scratch[0] = *Fout0;
-
-        C_MUL(scratch[1] ,*Fout1, tw[u*fstride]);
-        C_MUL(scratch[2] ,*Fout2, tw[2*u*fstride]);
-        C_MUL(scratch[3] ,*Fout3, tw[3*u*fstride]);
-        C_MUL(scratch[4] ,*Fout4, tw[4*u*fstride]);
-
-        C_ADD( scratch[7],scratch[1],scratch[4]);
-        C_SUB( scratch[10],scratch[1],scratch[4]);
-        C_ADD( scratch[8],scratch[2],scratch[3]);
-        C_SUB( scratch[9],scratch[2],scratch[3]);
-
-        Fout0->r += scratch[7].r + scratch[8].r;
-        Fout0->i += scratch[7].i + scratch[8].i;
-
-        scratch[5].r = scratch[0].r + S_MUL(scratch[7].r,ya.r) + 
S_MUL(scratch[8].r,yb.r);
-        scratch[5].i = scratch[0].i + S_MUL(scratch[7].i,ya.r) + 
S_MUL(scratch[8].i,yb.r);
-
-        scratch[6].r =  S_MUL(scratch[10].i,ya.i) + S_MUL(scratch[9].i,yb.i);
-        scratch[6].i = -S_MUL(scratch[10].r,ya.i) - S_MUL(scratch[9].r,yb.i);
-
-        C_SUB(*Fout1,scratch[5],scratch[6]);
-        C_ADD(*Fout4,scratch[5],scratch[6]);
-
-        scratch[11].r = scratch[0].r + S_MUL(scratch[7].r,yb.r) + 
S_MUL(scratch[8].r,ya.r);
-        scratch[11].i = scratch[0].i + S_MUL(scratch[7].i,yb.r) + 
S_MUL(scratch[8].i,ya.r);
-        scratch[12].r = - S_MUL(scratch[10].i,yb.i) + S_MUL(scratch[9].i,ya.i);
-        scratch[12].i = S_MUL(scratch[10].r,yb.i) - S_MUL(scratch[9].r,ya.i);
-
-        C_ADD(*Fout2,scratch[11],scratch[12]);
-        C_SUB(*Fout3,scratch[11],scratch[12]);
-
-        ++Fout0;++Fout1;++Fout2;++Fout3;++Fout4;
-    }
-}
-
-/* perform the butterfly for one stage of a mixed radix FFT */
-static void kf_bfly_generic(
-        kiss_fft_cpx * Fout,
-        const size_t fstride,
-        const kiss_fft_cfg st,
-        int m,
-        int p
-        )
-{
-    int u,k,q1,q;
-    kiss_fft_cpx * twiddles = st->twiddles;
-    kiss_fft_cpx t;
-    int Norig = st->nfft;
-
-    kiss_fft_cpx * scratch = 
(kiss_fft_cpx*)KISS_FFT_TMP_ALLOC(sizeof(kiss_fft_cpx)*p);
-
-    for ( u=0; u<m; ++u ) {
-        k=u;
-        for ( q1=0 ; q1<p ; ++q1 ) {
-            scratch[q1] = Fout[ k  ];
-            C_FIXDIV(scratch[q1],p);
-            k += m;
-        }
-
-        k=u;
-        for ( q1=0 ; q1<p ; ++q1 ) {
-            int twidx=0;
-            Fout[ k ] = scratch[0];
-            for (q=1;q<p;++q ) {
-                twidx += fstride * k;
-                if (twidx>=Norig) twidx-=Norig;
-                C_MUL(t,scratch[q] , twiddles[twidx] );
-                C_ADDTO( Fout[ k ] ,t);
-            }
-            k += m;
-        }
-    }
-    KISS_FFT_TMP_FREE(scratch);
-}
-
-static
-void kf_work(
-        kiss_fft_cpx * Fout,
-        const kiss_fft_cpx * f,
-        const size_t fstride,
-        int in_stride,
-        int * factors,
-        const kiss_fft_cfg st
-        )
-{
-    kiss_fft_cpx * Fout_beg=Fout;
-    const int p=*factors++; /* the radix  */
-    const int m=*factors++; /* stage's fft length/p */
-    const kiss_fft_cpx * Fout_end = Fout + p*m;
-
-#ifdef _OPENMP
-    // use openmp extensions at the
-    // top-level (not recursive)
-    if (fstride==1 && p<=5)
-    {
-        int k;
-
-        // execute the p different work units in different threads
-#       pragma omp parallel for
-        for (k=0;k<p;++k)
-            kf_work( Fout +k*m, f+ 
fstride*in_stride*k,fstride*p,in_stride,factors,st);
-        // all threads have joined by this point
-
-        switch (p) {
-            case 2: kf_bfly2(Fout,fstride,st,m); break;
-            case 3: kf_bfly3(Fout,fstride,st,m); break;
-            case 4: kf_bfly4(Fout,fstride,st,m); break;
-            case 5: kf_bfly5(Fout,fstride,st,m); break;
-            default: kf_bfly_generic(Fout,fstride,st,m,p); break;
-        }
-        return;
-    }
-#endif
-
-    if (m==1) {
-        do{
-            *Fout = *f;
-            f += fstride*in_stride;
-        }while(++Fout != Fout_end );
-    }else{
-        do{
-            // recursive call:
-            // DFT of size m*p performed by doing
-            // p instances of smaller DFTs of size m,
-            // each one takes a decimated version of the input
-            kf_work( Fout , f, fstride*p, in_stride, factors,st);
-            f += fstride*in_stride;
-        }while( (Fout += m) != Fout_end );
-    }
-
-    Fout=Fout_beg;
-
-    // recombine the p smaller DFTs
-    switch (p) {
-        case 2: kf_bfly2(Fout,fstride,st,m); break;
-        case 3: kf_bfly3(Fout,fstride,st,m); break;
-        case 4: kf_bfly4(Fout,fstride,st,m); break;
-        case 5: kf_bfly5(Fout,fstride,st,m); break;
-        default: kf_bfly_generic(Fout,fstride,st,m,p); break;
-    }
-}
-
-/*  facbuf is populated by p1,m1,p2,m2, ...
-    where
-    p[i] * m[i] = m[i-1]
-    m0 = n                  */
-static
-void kf_factor(int n,int * facbuf)
-{
-    int p=4;
-    double floor_sqrt;
-    floor_sqrt = floor( sqrt((double)n) );
-
-    /*factor out powers of 4, powers of 2, then any remaining primes */
-    do {
-        while (n % p) {
-            switch (p) {
-                case 4: p = 2; break;
-                case 2: p = 3; break;
-                default: p += 2; break;
-            }
-            if (p > floor_sqrt)
-                p = n;          /* no more factors, skip to end */
-        }
-        n /= p;
-        *facbuf++ = p;
-        *facbuf++ = n;
-    } while (n > 1);
-}
-
-/*
- *
- * User-callable function to allocate all necessary storage space for the fft.
- *
- * The return value is a contiguous block of memory, allocated with malloc.  
As such,
- * It can be freed with free(), rather than a kiss_fft-specific function.
- * */
-kiss_fft_cfg kiss_fft_alloc(int nfft,int inverse_fft,void * mem,size_t * 
lenmem )
-{
-    kiss_fft_cfg st=NULL;
-    size_t memneeded = sizeof(struct kiss_fft_state)
-        + sizeof(kiss_fft_cpx)*(nfft-1); /* twiddle factors*/
-
-    if ( lenmem==NULL ) {
-        st = ( kiss_fft_cfg)KISS_FFT_MALLOC( memneeded );
-    }else{
-        if (mem != NULL && *lenmem >= memneeded)
-            st = (kiss_fft_cfg)mem;
-        *lenmem = memneeded;
-    }
-    if (st) {
-        int i;
-        st->nfft=nfft;
-        st->inverse = inverse_fft;
-
-        for (i=0;i<nfft;++i) {
-            const double 
pi=3.141592653589793238462643383279502884197169399375105820974944;
-            double phase = -2*pi*i / nfft;
-            if (st->inverse)
-                phase *= -1;
-            kf_cexp(st->twiddles+i, phase );
-        }
-
-        kf_factor(nfft,st->factors);
-    }
-    return st;
-}
-
-
-void kiss_fft_stride(kiss_fft_cfg st,const kiss_fft_cpx *fin,kiss_fft_cpx 
*fout,int in_stride)
-{
-    if (fin == fout) {
-        //NOTE: this is not really an in-place FFT algorithm.
-        //It just performs an out-of-place FFT into a temp buffer
-        kiss_fft_cpx * tmpbuf = (kiss_fft_cpx*)KISS_FFT_TMP_ALLOC( 
sizeof(kiss_fft_cpx)*st->nfft);
-        kf_work(tmpbuf,fin,1,in_stride, st->factors,st);
-        memcpy(fout,tmpbuf,sizeof(kiss_fft_cpx)*st->nfft);
-        KISS_FFT_TMP_FREE(tmpbuf);
-    }else{
-        kf_work( fout, fin, 1,in_stride, st->factors,st );
-    }
-}
-
-void kiss_fft(kiss_fft_cfg cfg,const kiss_fft_cpx *fin,kiss_fft_cpx *fout)
-{
-    kiss_fft_stride(cfg,fin,fout,1);
-}
-
-
-void kiss_fft_cleanup(void)
-{
-    // nothing needed any more
-}
-
-int kiss_fft_next_fast_size(int n)
-{
-    while(1) {
-        int m=n;
-        while ( (m%2) == 0 ) m/=2;
-        while ( (m%3) == 0 ) m/=3;
-        while ( (m%5) == 0 ) m/=5;
-        if (m<=1)
-            break; /* n is completely factorable by twos, threes, and fives */
-        n++;
-    }
-    return n;
-}
diff --git a/gr-vocoder/lib/codec2/kiss_fft.h b/gr-vocoder/lib/codec2/kiss_fft.h
deleted file mode 100644
index c01722c..0000000
--- a/gr-vocoder/lib/codec2/kiss_fft.h
+++ /dev/null
@@ -1,124 +0,0 @@
-#ifndef KISS_FFT_H
-#define KISS_FFT_H
-
-#include <stdlib.h>
-#include <stdio.h>
-#include <math.h>
-#include <string.h>
-
-#ifdef __cplusplus
-extern "C" {
-#endif
-
-/*
- ATTENTION!
- If you would like a :
- -- a utility that will handle the caching of fft objects
- -- real-only (no imaginary time component ) FFT
- -- a multi-dimensional FFT
- -- a command-line utility to perform ffts
- -- a command-line utility to perform fast-convolution filtering
-
- Then see kfc.h kiss_fftr.h kiss_fftnd.h fftutil.c kiss_fastfir.c
-  in the tools/ directory.
-*/
-
-#ifdef USE_SIMD
-# include <xmmintrin.h>
-# define kiss_fft_scalar __m128
-#define KISS_FFT_MALLOC(nbytes) _mm_malloc(nbytes,16)
-#define KISS_FFT_FREE _mm_free
-#else
-#define KISS_FFT_MALLOC malloc
-#define KISS_FFT_FREE free
-#endif
-
-
-#ifdef FIXED_POINT
-#include <sys/types.h>
-# if (FIXED_POINT == 32)
-#  define kiss_fft_scalar int32_t
-# else
-#  define kiss_fft_scalar int16_t
-# endif
-#else
-# ifndef kiss_fft_scalar
-/*  default is float */
-#   define kiss_fft_scalar float
-# endif
-#endif
-
-typedef struct {
-    kiss_fft_scalar r;
-    kiss_fft_scalar i;
-}kiss_fft_cpx;
-
-typedef struct kiss_fft_state* kiss_fft_cfg;
-
-/*
- *  kiss_fft_alloc
- *
- *  Initialize a FFT (or IFFT) algorithm's cfg/state buffer.
- *
- *  typical usage:      kiss_fft_cfg mycfg=kiss_fft_alloc(1024,0,NULL,NULL);
- *
- *  The return value from fft_alloc is a cfg buffer used internally
- *  by the fft routine or NULL.
- *
- *  If lenmem is NULL, then kiss_fft_alloc will allocate a cfg buffer using 
malloc.
- *  The returned value should be free()d when done to avoid memory leaks.
- *
- *  The state can be placed in a user supplied buffer 'mem':
- *  If lenmem is not NULL and mem is not NULL and *lenmem is large enough,
- *      then the function places the cfg in mem and the size used in *lenmem
- *      and returns mem.
- *
- *  If lenmem is not NULL and ( mem is NULL or *lenmem is not large enough),
- *      then the function returns NULL and places the minimum cfg
- *      buffer size in *lenmem.
- * */
-
-kiss_fft_cfg kiss_fft_alloc(int nfft,int inverse_fft,void * mem,size_t * 
lenmem);
-
-/*
- * kiss_fft(cfg,in_out_buf)
- *
- * Perform an FFT on a complex input buffer.
- * for a forward FFT,
- * fin should be  f[0] , f[1] , ... ,f[nfft-1]
- * fout will be   F[0] , F[1] , ... ,F[nfft-1]
- * Note that each element is complex and can be accessed like
-    f[k].r and f[k].i
- * */
-void kiss_fft(kiss_fft_cfg cfg,const kiss_fft_cpx *fin,kiss_fft_cpx *fout);
-
-/*
- A more generic version of the above function. It reads its input from every 
Nth sample.
- * */
-void kiss_fft_stride(kiss_fft_cfg cfg,const kiss_fft_cpx *fin,kiss_fft_cpx 
*fout,int fin_stride);
-
-/* If kiss_fft_alloc allocated a buffer, it is one contiguous
-   buffer and can be simply free()d when no longer needed*/
-#define kiss_fft_free free
-
-/*
- Cleans up some memory that gets managed internally. Not necessary to call, 
but it might clean up
- your compiler output to call this before you exit.
-*/
-void kiss_fft_cleanup(void);
-
-
-/*
- * Returns the smallest integer k, such that k>=n and k has only "fast" 
factors (2,3,5)
- */
-int kiss_fft_next_fast_size(int n);
-
-/* for real ffts, we need an even size */
-#define kiss_fftr_next_fast_size_real(n) \
-        (kiss_fft_next_fast_size( ((n)+1)>>1)<<1)
-
-#ifdef __cplusplus
-}
-#endif
-
-#endif
diff --git a/gr-vocoder/lib/codec2/lpc.c b/gr-vocoder/lib/codec2/lpc.c
deleted file mode 100644
index 9a730eb..0000000
--- a/gr-vocoder/lib/codec2/lpc.c
+++ /dev/null
@@ -1,309 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: lpc.c
-  AUTHOR......: David Rowe
-  DATE CREATED: 30 Sep 1990 (!)
-
-  Linear Prediction functions written in C.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2009-2012 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#define LPC_MAX_N 512          /* maximum no. of samples in frame */
-#define PI 3.141592654         /* mathematical constant */
-
-#define ALPHA 1.0
-#define BETA  0.94
-
-#include <assert.h>
-#include <math.h>
-#include "defines.h"
-#include "lpc.h"
-
-/*---------------------------------------------------------------------------*\
-
-  pre_emp()
-
-  Pre-emphasise (high pass filter with zero close to 0 Hz) a frame of
-  speech samples.  Helps reduce dynamic range of LPC spectrum, giving
-  greater weight and hensea better match to low energy formants.
-
-  Should be balanced by de-emphasis of the output speech.
-
-\*---------------------------------------------------------------------------*/
-
-void pre_emp(
-  float  Sn_pre[], /* output frame of speech samples                     */
-  float  Sn[],    /* input frame of speech samples                      */
-  float *mem,      /* Sn[-1]single sample memory                         */
-  int   Nsam      /* number of speech samples to use                    */
-)
-{
-    int   i;
-
-    for(i=0; i<Nsam; i++) {
-       Sn_pre[i] = Sn[i] - ALPHA * mem[0];
-       mem[0] = Sn[i];
-    }
-
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  de_emp()
-
-  De-emphasis filter (low pass filter with polse close to 0 Hz).
-
-\*---------------------------------------------------------------------------*/
-
-void de_emp(
-  float  Sn_de[],  /* output frame of speech samples                     */
-  float  Sn[],    /* input frame of speech samples                      */
-  float *mem,      /* Sn[-1]single sample memory                         */
-  int    Nsam     /* number of speech samples to use                    */
-)
-{
-    int   i;
-
-    for(i=0; i<Nsam; i++) {
-       Sn_de[i] = Sn[i] + BETA * mem[0];
-       mem[0] = Sn_de[i];
-    }
-
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  hanning_window()
-
-  Hanning windows a frame of speech samples.
-
-\*---------------------------------------------------------------------------*/
-
-void hanning_window(
-  float Sn[],  /* input frame of speech samples */
-  float Wn[],  /* output frame of windowed samples */
-  int Nsam     /* number of samples */
-)
-{
-  int i;       /* loop variable */
-
-  for(i=0; i<Nsam; i++)
-    Wn[i] = Sn[i]*(0.5 - 0.5*cosf(2*PI*(float)i/(Nsam-1)));
-}
-
-/*---------------------------------------------------------------------------*\
-
-  autocorrelate()
-
-  Finds the first P autocorrelation values of an array of windowed speech
-  samples Sn[].
-
-\*---------------------------------------------------------------------------*/
-
-void autocorrelate(
-  float Sn[],  /* frame of Nsam windowed speech samples */
-  float Rn[],  /* array of P+1 autocorrelation coefficients */
-  int Nsam,    /* number of windowed samples to use */
-  int order    /* order of LPC analysis */
-)
-{
-  int i,j;     /* loop variables */
-
-  for(j=0; j<order+1; j++) {
-    Rn[j] = 0.0;
-    for(i=0; i<Nsam-j; i++)
-      Rn[j] += Sn[i]*Sn[i+j];
-  }
-}
-
-/*---------------------------------------------------------------------------*\
-
-  levinson_durbin()
-
-  Given P+1 autocorrelation coefficients, finds P Linear Prediction Coeff.
-  (LPCs) where P is the order of the LPC all-pole model. The Levinson-Durbin
-  algorithm is used, and is described in:
-
-    J. Makhoul
-    "Linear prediction, a tutorial review"
-    Proceedings of the IEEE
-    Vol-63, No. 4, April 1975
-
-\*---------------------------------------------------------------------------*/
-
-void levinson_durbin(
-  float R[],           /* order+1 autocorrelation coeff */
-  float lpcs[],                /* order+1 LPC's */
-  int order            /* order of the LPC analysis */
-)
-{
-  float E[LPC_MAX+1];
-  float k[LPC_MAX+1];
-  float a[LPC_MAX+1][LPC_MAX+1];
-  float sum;
-  int i,j;                             /* loop variables */
-
-  E[0] = R[0];                         /* Equation 38a, Makhoul */
-
-  for(i=1; i<=order; i++) {
-    sum = 0.0;
-    for(j=1; j<=i-1; j++)
-      sum += a[i-1][j]*R[i-j];
-    k[i] = -1.0*(R[i] + sum)/E[i-1];   /* Equation 38b, Makhoul */
-    if (fabsf(k[i]) > 1.0)
-      k[i] = 0.0;
-
-    a[i][i] = k[i];
-
-    for(j=1; j<=i-1; j++)
-      a[i][j] = a[i-1][j] + k[i]*a[i-1][i-j];  /* Equation 38c, Makhoul */
-
-    E[i] = (1-k[i]*k[i])*E[i-1];               /* Equation 38d, Makhoul */
-  }
-
-  for(i=1; i<=order; i++)
-    lpcs[i] = a[order][i];
-  lpcs[0] = 1.0;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  inverse_filter()
-
-  Inverse Filter, A(z).  Produces an array of residual samples from an array
-  of input samples and linear prediction coefficients.
-
-  The filter memory is stored in the first order samples of the input array.
-
-\*---------------------------------------------------------------------------*/
-
-void inverse_filter(
-  float Sn[],  /* Nsam input samples */
-  float a[],   /* LPCs for this frame of samples */
-  int Nsam,    /* number of samples */
-  float res[], /* Nsam residual samples */
-  int order    /* order of LPC */
-)
-{
-  int i,j;     /* loop variables */
-
-  for(i=0; i<Nsam; i++) {
-    res[i] = 0.0;
-    for(j=0; j<=order; j++)
-      res[i] += Sn[i-j]*a[j];
-  }
-}
-
-/*---------------------------------------------------------------------------*\
-
- synthesis_filter()
-
- C version of the Speech Synthesis Filter, 1/A(z).  Given an array of
- residual or excitation samples, and the the LP filter coefficients, this
- function will produce an array of speech samples.  This filter structure is
- IIR.
-
- The synthesis filter has memory as well, this is treated in the same way
- as the memory for the inverse filter (see inverse_filter() notes above).
- The difference is that the memory for the synthesis filter is stored in
- the output array, wheras the memory of the inverse filter is stored in the
- input array.
-
- Note: the calling function must update the filter memory.
-
-\*---------------------------------------------------------------------------*/
-
-void synthesis_filter(
-  float res[], /* Nsam input residual (excitation) samples */
-  float a[],   /* LPCs for this frame of speech samples */
-  int Nsam,    /* number of speech samples */
-  int order,   /* LPC order */
-  float Sn_[]  /* Nsam output synthesised speech samples */
-)
-{
-  int i,j;     /* loop variables */
-
-  /* Filter Nsam samples */
-
-  for(i=0; i<Nsam; i++) {
-    Sn_[i] = res[i]*a[0];
-    for(j=1; j<=order; j++)
-      Sn_[i] -= Sn_[i-j]*a[j];
-  }
-}
-
-/*---------------------------------------------------------------------------*\
-
-  find_aks()
-
-  This function takes a frame of samples, and determines the linear
-  prediction coefficients for that frame of samples.
-
-\*---------------------------------------------------------------------------*/
-
-void find_aks(
-  float Sn[],  /* Nsam samples with order sample memory */
-  float a[],   /* order+1 LPCs with first coeff 1.0 */
-  int Nsam,    /* number of input speech samples */
-  int order,   /* order of the LPC analysis */
-  float *E     /* residual energy */
-)
-{
-  float Wn[LPC_MAX_N]; /* windowed frame of Nsam speech samples */
-  float R[LPC_MAX+1];  /* order+1 autocorrelation values of Sn[] */
-  int i;
-
-  assert(order < LPC_MAX);
-  assert(Nsam < LPC_MAX_N);
-
-  hanning_window(Sn,Wn,Nsam);
-  autocorrelate(Wn,R,Nsam,order);
-  levinson_durbin(R,a,order);
-
-  *E = 0.0;
-  for(i=0; i<=order; i++)
-    *E += a[i]*R[i];
-  if (*E < 0.0)
-    *E = 1E-12;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  weight()
-
-  Weights a vector of LPCs.
-
-\*---------------------------------------------------------------------------*/
-
-void weight(
-  float ak[],  /* vector of order+1 LPCs */
-  float gamma, /* weighting factor */
-  int order,   /* num LPCs (excluding leading 1.0) */
-  float akw[]  /* weighted vector of order+1 LPCs */
-)
-{
-  int i;
-
-  for(i=1; i<=order; i++)
-    akw[i] = ak[i]*powf(gamma,(float)i);
-}
-
diff --git a/gr-vocoder/lib/codec2/lpc.h b/gr-vocoder/lib/codec2/lpc.h
deleted file mode 100644
index 482aa1f..0000000
--- a/gr-vocoder/lib/codec2/lpc.h
+++ /dev/null
@@ -1,43 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: lpc.h
-  AUTHOR......: David Rowe
-  DATE CREATED: 24/8/09
-
-  Linear Prediction functions written in C.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2009-2012 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#ifndef __LPC__
-#define __LPC__
-
-#define LPC_MAX_ORDER 20
-
-void pre_emp(float Sn_pre[], float Sn[], float *mem, int Nsam);
-void de_emp(float Sn_se[], float Sn[], float *mem, int Nsam);
-void hanning_window(float Sn[],        float Wn[], int Nsam);
-void autocorrelate(float Sn[], float Rn[], int Nsam, int order);
-void levinson_durbin(float R[],        float lpcs[], int order);
-void inverse_filter(float Sn[], float a[], int Nsam, float res[], int order);
-void synthesis_filter(float res[], float a[], int Nsam,        int order, 
float Sn_[]);
-void find_aks(float Sn[], float a[], int Nsam, int order, float *E);
-void weight(float ak[],        float gamma, int order, float akw[]);
-
-#endif
diff --git a/gr-vocoder/lib/codec2/lsp.c b/gr-vocoder/lib/codec2/lsp.c
deleted file mode 100644
index 3f34444..0000000
--- a/gr-vocoder/lib/codec2/lsp.c
+++ /dev/null
@@ -1,325 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: lsp.c
-  AUTHOR......: David Rowe
-  DATE CREATED: 24/2/93
-
-
-  This file contains functions for LPC to LSP conversion and LSP to
-  LPC conversion. Note that the LSP coefficients are not in radians
-  format but in the x domain of the unit circle.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2009 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#include "defines.h"
-#include "lsp.h"
-#include <math.h>
-#include <stdio.h>
-#include <stdlib.h>
-
-/* Only 10 gets used, so far. */
-#define LSP_MAX_ORDER  20
-
-/*---------------------------------------------------------------------------*\
-
-  Introduction to Line Spectrum Pairs (LSPs)
-  ------------------------------------------
-
-  LSPs are used to encode the LPC filter coefficients {ak} for
-  transmission over the channel.  LSPs have several properties (like
-  less sensitivity to quantisation noise) that make them superior to
-  direct quantisation of {ak}.
-
-  A(z) is a polynomial of order lpcrdr with {ak} as the coefficients.
-
-  A(z) is transformed to P(z) and Q(z) (using a substitution and some
-  algebra), to obtain something like:
-
-    A(z) = 0.5[P(z)(z+z^-1) + Q(z)(z-z^-1)]  (1)
-
-  As you can imagine A(z) has complex zeros all over the z-plane. P(z)
-  and Q(z) have the very neat property of only having zeros _on_ the
-  unit circle.  So to find them we take a test point z=exp(jw) and
-  evaluate P (exp(jw)) and Q(exp(jw)) using a grid of points between 0
-  and pi.
-
-  The zeros (roots) of P(z) also happen to alternate, which is why we
-  swap coefficients as we find roots.  So the process of finding the
-  LSP frequencies is basically finding the roots of 5th order
-  polynomials.
-
-  The root so P(z) and Q(z) occur in symmetrical pairs at +/-w, hence
-  the name Line Spectrum Pairs (LSPs).
-
-  To convert back to ak we just evaluate (1), "clocking" an impulse
-  thru it lpcrdr times gives us the impulse response of A(z) which is
-  {ak}.
-
-\*---------------------------------------------------------------------------*/
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: cheb_poly_eva()
-  AUTHOR......: David Rowe
-  DATE CREATED: 24/2/93
-
-  This function evalutes a series of chebyshev polynomials
-
-  FIXME: performing memory allocation at run time is very inefficient,
-  replace with stack variables of MAX_P size.
-
-\*---------------------------------------------------------------------------*/
-
-
-static float
-cheb_poly_eva(float *coef,float x,int m)
-/*  float coef[]       coefficients of the polynomial to be evaluated  */
-/*  float x            the point where polynomial is to be evaluated   */
-/*  int m              order of the polynomial                         */
-{
-    int i;
-    float *t,*u,*v,sum;
-    float T[(LSP_MAX_ORDER / 2) + 1];
-
-    /* Initialise pointers */
-
-    t = T;                             /* T[i-2]                       */
-    *t++ = 1.0;
-    u = t--;                           /* T[i-1]                       */
-    *u++ = x;
-    v = u--;                           /* T[i]                         */
-
-    /* Evaluate chebyshev series formulation using iterative approach  */
-
-    for(i=2;i<=m/2;i++)
-       *v++ = (2*x)*(*u++) - *t++;     /* T[i] = 2*x*T[i-1] - T[i-2]   */
-
-    sum=0.0;                           /* initialise sum to zero       */
-    t = T;                             /* reset pointer                */
-
-    /* Evaluate polynomial and return value also free memory space */
-
-    for(i=0;i<=m/2;i++)
-       sum+=coef[(m/2)-i]**t++;
-
-    return sum;
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: lpc_to_lsp()
-  AUTHOR......: David Rowe
-  DATE CREATED: 24/2/93
-
-  This function converts LPC coefficients to LSP coefficients.
-
-\*---------------------------------------------------------------------------*/
-
-int lpc_to_lsp (float *a, int lpcrdr, float *freq, int nb, float delta)
-/*  float *a                   lpc coefficients                        */
-/*  int lpcrdr                 order of LPC coefficients (10)          */
-/*  float *freq                LSP frequencies in radians              */
-/*  int nb                     number of sub-intervals (4)             */
-/*  float delta                        grid spacing interval (0.02)            
*/
-{
-    float psuml,psumr,psumm,temp_xr,xl,xr,xm = 0;
-    float temp_psumr;
-    int i,j,m,flag,k;
-    float *px;                 /* ptrs of respective P'(z) & Q'(z)     */
-    float *qx;
-    float *p;
-    float *q;
-    float *pt;                 /* ptr used for cheb_poly_eval()
-                                  whether P' or Q'                     */
-    int roots=0;               /* number of roots found                */
-    float Q[LSP_MAX_ORDER + 1];
-    float P[LSP_MAX_ORDER + 1];
-
-    flag = 1;
-    m = lpcrdr/2;              /* order of P'(z) & Q'(z) polynimials   */
-
-    /* Allocate memory space for polynomials */
-
-    /* determine P'(z)'s and Q'(z)'s coefficients where
-      P'(z) = P(z)/(1 + z^(-1)) and Q'(z) = Q(z)/(1-z^(-1)) */
-
-    px = P;                      /* initilaise ptrs */
-    qx = Q;
-    p = px;
-    q = qx;
-    *px++ = 1.0;
-    *qx++ = 1.0;
-    for(i=1;i<=m;i++){
-       *px++ = a[i]+a[lpcrdr+1-i]-*p++;
-       *qx++ = a[i]-a[lpcrdr+1-i]+*q++;
-    }
-    px = P;
-    qx = Q;
-    for(i=0;i<m;i++){
-       *px = 2**px;
-       *qx = 2**qx;
-        px++;
-        qx++;
-    }
-    px = P;                    /* re-initialise ptrs                   */
-    qx = Q;
-
-    /* Search for a zero in P'(z) polynomial first and then alternate to Q'(z).
-    Keep alternating between the two polynomials as each zero is found         
*/
-
-    xr = 0;                    /* initialise xr to zero                */
-    xl = 1.0;                  /* start at point xl = 1                */
-
-
-    for(j=0;j<lpcrdr;j++){
-       if(j%2)                 /* determines whether P' or Q' is eval. */
-           pt = qx;
-       else
-           pt = px;
-
-       psuml = cheb_poly_eva(pt,xl,lpcrdr);    /* evals poly. at xl    */
-       flag = 1;
-       while(flag && (xr >= -1.0)){
-           xr = xl - delta ;                   /* interval spacing     */
-           psumr = cheb_poly_eva(pt,xr,lpcrdr);/* poly(xl-delta_x)     */
-           temp_psumr = psumr;
-           temp_xr = xr;
-
-        /* if no sign change increment xr and re-evaluate
-           poly(xr). Repeat til sign change.  if a sign change has
-           occurred the interval is bisected and then checked again
-           for a sign change which determines in which interval the
-           zero lies in.  If there is no sign change between poly(xm)
-           and poly(xl) set interval between xm and xr else set
-           interval between xl and xr and repeat till root is located
-           within the specified limits  */
-
-           if(((psumr*psuml)<0.0) || (psumr == 0.0)){
-               roots++;
-
-               psumm=psuml;
-               for(k=0;k<=nb;k++){
-                   xm = (xl+xr)/2;             /* bisect the interval  */
-                   psumm=cheb_poly_eva(pt,xm,lpcrdr);
-                   if(psumm*psuml>0.){
-                       psuml=psumm;
-                       xl=xm;
-                   }
-                   else{
-                       psumr=psumm;
-                       xr=xm;
-                   }
-               }
-
-              /* once zero is found, reset initial interval to xr      */
-              freq[j] = (xm);
-              xl = xm;
-              flag = 0;                /* reset flag for next search   */
-           }
-           else{
-               psuml=temp_psumr;
-               xl=temp_xr;
-           }
-       }
-    }
-
-    /* convert from x domain to radians */
-
-    for(i=0; i<lpcrdr; i++) {
-       freq[i] = acos(freq[i]);
-    }
-
-    return(roots);
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: lsp_to_lpc()
-  AUTHOR......: David Rowe
-  DATE CREATED: 24/2/93
-
-  This function converts LSP coefficients to LPC coefficients.  In the
-  Speex code we worked out a way to simplify this significantly.
-
-\*---------------------------------------------------------------------------*/
-
-void lsp_to_lpc(float *lsp, float *ak, int lpcrdr)
-/*  float *freq         array of LSP frequencies in radians            */
-/*  float *ak          array of LPC coefficients                       */
-/*  int lpcrdr         order of LPC coefficients                       */
-
-
-{
-    int i,j;
-    float xout1,xout2,xin1,xin2;
-    float *pw,*n1,*n2,*n3,*n4 = 0;
-    int m = lpcrdr/2;
-    float freq[LSP_MAX_ORDER];
-    float Wp[(LSP_MAX_ORDER * 4) + 2];
-
-    /* convert from radians to the x=cos(w) domain */
-
-    for(i=0; i<lpcrdr; i++)
-       freq[i] = cos(lsp[i]);
-
-    pw = Wp;
-
-    /* initialise contents of array */
-
-    for(i=0;i<=4*m+1;i++){             /* set contents of buffer to 0 */
-       *pw++ = 0.0;
-    }
-
-    /* Set pointers up */
-
-    pw = Wp;
-    xin1 = 1.0;
-    xin2 = 1.0;
-
-    /* reconstruct P(z) and Q(z) by cascading second order polynomials
-      in form 1 - 2xz(-1) +z(-2), where x is the LSP coefficient */
-
-    for(j=0;j<=lpcrdr;j++){
-       for(i=0;i<m;i++){
-           n1 = pw+(i*4);
-           n2 = n1 + 1;
-           n3 = n2 + 1;
-           n4 = n3 + 1;
-           xout1 = xin1 - 2*(freq[2*i]) * *n1 + *n2;
-           xout2 = xin2 - 2*(freq[2*i+1]) * *n3 + *n4;
-           *n2 = *n1;
-           *n4 = *n3;
-           *n1 = xin1;
-           *n3 = xin2;
-           xin1 = xout1;
-           xin2 = xout2;
-       }
-       xout1 = xin1 + *(n4+1);
-       xout2 = xin2 - *(n4+2);
-       ak[j] = (xout1 + xout2)*0.5;
-       *(n4+1) = xin1;
-       *(n4+2) = xin2;
-
-       xin1 = 0.0;
-       xin2 = 0.0;
-    }
-}
-
diff --git a/gr-vocoder/lib/codec2/lsp.h b/gr-vocoder/lib/codec2/lsp.h
deleted file mode 100644
index 5acef01..0000000
--- a/gr-vocoder/lib/codec2/lsp.h
+++ /dev/null
@@ -1,37 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: lsp.c
-  AUTHOR......: David Rowe
-  DATE CREATED: 24/2/93
-
-
-  This file contains functions for LPC to LSP conversion and LSP to
-  LPC conversion. Note that the LSP coefficients are not in radians
-  format but in the x domain of the unit circle.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2009 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#ifndef __LSP__
-#define __LSP__
-
-int lpc_to_lsp (float *a, int lpcrdr, float *freq, int nb, float delta);
-void lsp_to_lpc(float *freq, float *ak, int lpcrdr);
-
-#endif
diff --git a/gr-vocoder/lib/codec2/machdep.h b/gr-vocoder/lib/codec2/machdep.h
deleted file mode 100644
index ef2e649..0000000
--- a/gr-vocoder/lib/codec2/machdep.h
+++ /dev/null
@@ -1,51 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: machdep.h
-  AUTHOR......: David Rowe
-  DATE CREATED: May 2 2013
-
-  Machine dependant functions.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2013 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#ifndef __MACHDEP__
-#define __MACHDEP__
-
-#ifdef TIMER
-#define TIMER_VAR(...) unsigned int __VA_ARGS__
-#define TIMER_SAMPLE(timestamp) timestamp = machdep_timer_sample()
-#define TIMER_SAMPLE_AND_LOG(timestamp, prev_timestamp, label) \
-    timestamp = machdep_timer_sample_and_log(prev_timestamp, label)
-#define TIMER_SAMPLE_AND_LOG2(prev_timestamp, label) \
-    machdep_timer_sample_and_log(prev_timestamp, label)
-#else
-#define TIMER_VAR(...)
-#define TIMER_SAMPLE(timestamp)
-#define TIMER_SAMPLE_AND_LOG(timestamp, prev_timestamp, label)
-#define TIMER_SAMPLE_AND_LOG2(prev_timestamp, label)
-#endif
-
-void         machdep_timer_init(void);
-void         machdep_timer_reset(void);
-unsigned int machdep_timer_sample(void);
-unsigned int machdep_timer_sample_and_log(unsigned int start, char s[]);
-void         machdep_timer_print_logged_samples(void);
-
-#endif
diff --git a/gr-vocoder/lib/codec2/nlp.c b/gr-vocoder/lib/codec2/nlp.c
deleted file mode 100644
index 83375dc..0000000
--- a/gr-vocoder/lib/codec2/nlp.c
+++ /dev/null
@@ -1,589 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: nlp.c
-  AUTHOR......: David Rowe
-  DATE CREATED: 23/3/93
-
-  Non Linear Pitch (NLP) estimation functions.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2009 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#include "defines.h"
-#include "nlp.h"
-#include "dump.h"
-#include "kiss_fft.h"
-#undef TIMER
-#include "machdep.h"
-
-#include <assert.h>
-#include <math.h>
-#include <stdlib.h>
-
-/*---------------------------------------------------------------------------*\
-
-                               DEFINES
-
-\*---------------------------------------------------------------------------*/
-
-#define PMAX_M      600                /* maximum NLP analysis window size     
*/
-#define COEFF       0.95       /* notch filter parameter               */
-#define PE_FFT_SIZE 512                /* DFT size for pitch estimation        
*/
-#define DEC         5          /* decimation factor                    */
-#define SAMPLE_RATE 8000
-#define PI          3.141592654        /* mathematical constant                
*/
-#define T           0.1         /* threshold for local minima candidate */
-#define F0_MAX      500
-#define CNLP        0.3                /* post processor constant              
*/
-#define NLP_NTAP 48            /* Decimation LPF order */
-
-//#undef DUMP
-
-/*---------------------------------------------------------------------------*\
-
-                               GLOBALS
-
-\*---------------------------------------------------------------------------*/
-
-/* 48 tap 600Hz low pass FIR filter coefficients */
-
-const float nlp_fir[] = {
-  -1.0818124e-03,
-  -1.1008344e-03,
-  -9.2768838e-04,
-  -4.2289438e-04,
-   5.5034190e-04,
-   2.0029849e-03,
-   3.7058509e-03,
-   5.1449415e-03,
-   5.5924666e-03,
-   4.3036754e-03,
-   8.0284511e-04,
-  -4.8204610e-03,
-  -1.1705810e-02,
-  -1.8199275e-02,
-  -2.2065282e-02,
-  -2.0920610e-02,
-  -1.2808831e-02,
-   3.2204775e-03,
-   2.6683811e-02,
-   5.5520624e-02,
-   8.6305944e-02,
-   1.1480192e-01,
-   1.3674206e-01,
-   1.4867556e-01,
-   1.4867556e-01,
-   1.3674206e-01,
-   1.1480192e-01,
-   8.6305944e-02,
-   5.5520624e-02,
-   2.6683811e-02,
-   3.2204775e-03,
-  -1.2808831e-02,
-  -2.0920610e-02,
-  -2.2065282e-02,
-  -1.8199275e-02,
-  -1.1705810e-02,
-  -4.8204610e-03,
-   8.0284511e-04,
-   4.3036754e-03,
-   5.5924666e-03,
-   5.1449415e-03,
-   3.7058509e-03,
-   2.0029849e-03,
-   5.5034190e-04,
-  -4.2289438e-04,
-  -9.2768838e-04,
-  -1.1008344e-03,
-  -1.0818124e-03
-};
-
-typedef struct {
-    int           m;
-    float         w[PMAX_M/DEC];     /* DFT window                   */
-    float         sq[PMAX_M];       /* squared speech samples       */
-    float         mem_x,mem_y;       /* memory for notch filter      */
-    float         mem_fir[NLP_NTAP]; /* decimation FIR filter memory */
-    kiss_fft_cfg  fft_cfg;           /* kiss FFT config              */
-} NLP;
-
-float test_candidate_mbe(COMP Sw[], COMP W[], float f0);
-float post_process_mbe(COMP Fw[], int pmin, int pmax, float gmax, COMP Sw[], 
COMP W[], float *prev_Wo);
-float post_process_sub_multiples(COMP Fw[],
-                                int pmin, int pmax, float gmax, int gmax_bin,
-                                float *prev_Wo);
-
-/*---------------------------------------------------------------------------*\
-
-  nlp_create()
-
-  Initialisation function for NLP pitch estimator.
-
-\*---------------------------------------------------------------------------*/
-
-void *nlp_create(
-int    m                       /* analysis window size */
-)
-{
-    NLP *nlp;
-    int  i;
-
-    assert(m <= PMAX_M);
-
-    nlp = (NLP*)malloc(sizeof(NLP));
-    if (nlp == NULL)
-       return NULL;
-
-    nlp->m = m;
-    for(i=0; i<m/DEC; i++) {
-       nlp->w[i] = 0.5 - 0.5*cosf(2*PI*i/(m/DEC-1));
-    }
-
-    for(i=0; i<PMAX_M; i++)
-       nlp->sq[i] = 0.0;
-    nlp->mem_x = 0.0;
-    nlp->mem_y = 0.0;
-    for(i=0; i<NLP_NTAP; i++)
-       nlp->mem_fir[i] = 0.0;
-
-    nlp->fft_cfg = kiss_fft_alloc (PE_FFT_SIZE, 0, NULL, NULL);
-    assert(nlp->fft_cfg != NULL);
-
-    return (void*)nlp;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  nlp_destroy()
-
-  Shut down function for NLP pitch estimator.
-
-\*---------------------------------------------------------------------------*/
-
-void nlp_destroy(void *nlp_state)
-{
-    NLP   *nlp;
-    assert(nlp_state != NULL);
-    nlp = (NLP*)nlp_state;
-
-    KISS_FFT_FREE(nlp->fft_cfg);
-    free(nlp_state);
-}
-
-/*---------------------------------------------------------------------------*\
-
-  nlp()
-
-  Determines the pitch in samples using the Non Linear Pitch (NLP)
-  algorithm [1]. Returns the fundamental in Hz.  Note that the actual
-  pitch estimate is for the centre of the M sample Sn[] vector, not
-  the current N sample input vector.  This is (I think) a delay of 2.5
-  frames with N=80 samples.  You should align further analysis using
-  this pitch estimate to be centred on the middle of Sn[].
-
-  Two post processors have been tried, the MBE version (as discussed
-  in [1]), and a post processor that checks sub-multiples.  Both
-  suffer occasional gross pitch errors (i.e. neither are perfect).  In
-  the presence of background noise the sub-multiple algorithm tends
-  towards low F0 which leads to better sounding background noise than
-  the MBE post processor.
-
-  A good way to test and develop the NLP pitch estimator is using the
-  tnlp (codec2/unittest) and the codec2/octave/plnlp.m Octave script.
-
-  A pitch tracker searching a few frames forward and backward in time
-  would be a useful addition.
-
-  References:
-
-    [1] http://www.itr.unisa.edu.au/~steven/thesis/dgr.pdf Chapter 4
-
-\*---------------------------------------------------------------------------*/
-
-float nlp(
-  void *nlp_state,
-  float  Sn[],                 /* input speech vector */
-  int    n,                    /* frames shift (no. new samples in Sn[]) */
-  int    pmin,                  /* minimum pitch value */
-  int    pmax,                 /* maximum pitch value */
-  float *pitch,                        /* estimated pitch period in samples */
-  COMP   Sw[],                  /* Freq domain version of Sn[] */
-  COMP   W[],                   /* Freq domain window */
-  float *prev_Wo
-)
-{
-    NLP   *nlp;
-    float  notch;                  /* current notch filter output    */
-    COMP   fw[PE_FFT_SIZE];        /* DFT of squared signal (input)  */
-    COMP   Fw[PE_FFT_SIZE];        /* DFT of squared signal (output) */
-    float  gmax;
-    int    gmax_bin;
-    int    m, i,j;
-    float  best_f0;
-    TIMER_VAR(start, tnotch, filter, peakpick, window, fft, magsq, shiftmem);
-
-    assert(nlp_state != NULL);
-    nlp = (NLP*)nlp_state;
-    m = nlp->m;
-
-    TIMER_SAMPLE(start);
-
-    /* Square, notch filter at DC, and LP filter vector */
-
-    for(i=m-n; i<m; i++)           /* square latest speech samples */
-       nlp->sq[i] = Sn[i]*Sn[i];
-
-    for(i=m-n; i<m; i++) {     /* notch filter at DC */
-       notch = nlp->sq[i] - nlp->mem_x;
-       notch += COEFF*nlp->mem_y;
-       nlp->mem_x = nlp->sq[i];
-       nlp->mem_y = notch;
-       nlp->sq[i] = notch + 1.0;  /* With 0 input vectors to codec,
-                                     kiss_fft() would take a long
-                                     time to execute when running in
-                                     real time.  Problem was traced
-                                     to kiss_fft function call in
-                                     this function. Adding this small
-                                     constant fixed problem.  Not
-                                     exactly sure why. */
-    }
-
-    TIMER_SAMPLE_AND_LOG(tnotch, start, "      square and notch");
-
-    for(i=m-n; i<m; i++) {     /* FIR filter vector */
-
-       for(j=0; j<NLP_NTAP-1; j++)
-           nlp->mem_fir[j] = nlp->mem_fir[j+1];
-       nlp->mem_fir[NLP_NTAP-1] = nlp->sq[i];
-
-       nlp->sq[i] = 0.0;
-       for(j=0; j<NLP_NTAP; j++)
-           nlp->sq[i] += nlp->mem_fir[j]*nlp_fir[j];
-    }
-
-    TIMER_SAMPLE_AND_LOG(filter, tnotch, "      filter");
-
-    /* Decimate and DFT */
-
-    for(i=0; i<PE_FFT_SIZE; i++) {
-       fw[i].real = 0.0;
-       fw[i].imag = 0.0;
-    }
-    for(i=0; i<m/DEC; i++) {
-       fw[i].real = nlp->sq[i*DEC]*nlp->w[i];
-    }
-    TIMER_SAMPLE_AND_LOG(window, filter, "      window");
-    #ifdef DUMP
-    dump_dec(Fw);
-    #endif
-
-    kiss_fft(nlp->fft_cfg, (kiss_fft_cpx *)fw, (kiss_fft_cpx *)Fw);
-    TIMER_SAMPLE_AND_LOG(fft, window, "      fft");
-
-    for(i=0; i<PE_FFT_SIZE; i++)
-       Fw[i].real = Fw[i].real*Fw[i].real + Fw[i].imag*Fw[i].imag;
-
-    TIMER_SAMPLE_AND_LOG(magsq, fft, "      mag sq");
-    #ifdef DUMP
-    dump_sq(nlp->sq);
-    dump_Fw(Fw);
-    #endif
-
-    /* find global peak */
-
-    gmax = 0.0;
-    gmax_bin = PE_FFT_SIZE*DEC/pmax;
-    for(i=PE_FFT_SIZE*DEC/pmax; i<=PE_FFT_SIZE*DEC/pmin; i++) {
-       if (Fw[i].real > gmax) {
-           gmax = Fw[i].real;
-           gmax_bin = i;
-       }
-    }
-
-    TIMER_SAMPLE_AND_LOG(peakpick, magsq, "      peak pick");
-
-    //#define POST_PROCESS_MBE
-    #ifdef POST_PROCESS_MBE
-    best_f0 = post_process_mbe(Fw, pmin, pmax, gmax, Sw, W, prev_Wo);
-    #else
-    best_f0 = post_process_sub_multiples(Fw, pmin, pmax, gmax, gmax_bin, 
prev_Wo);
-    #endif
-
-    TIMER_SAMPLE_AND_LOG(shiftmem, peakpick,  "      post process");
-
-    /* Shift samples in buffer to make room for new samples */
-
-    for(i=0; i<m-n; i++)
-       nlp->sq[i] = nlp->sq[i+n];
-
-    /* return pitch and F0 estimate */
-
-    *pitch = (float)SAMPLE_RATE/best_f0;
-
-    TIMER_SAMPLE_AND_LOG2(shiftmem,  "      shift mem");
-
-    TIMER_SAMPLE_AND_LOG2(start,  "      nlp int");
-
-    return(best_f0);
-}
-
-/*---------------------------------------------------------------------------*\
-
-  post_process_sub_multiples()
-
-  Given the global maximma of Fw[] we search integer submultiples for
-  local maxima.  If local maxima exist and they are above an
-  experimentally derived threshold (OK a magic number I pulled out of
-  the air) we choose the submultiple as the F0 estimate.
-
-  The rational for this is that the lowest frequency peak of Fw[]
-  should be F0, as Fw[] can be considered the autocorrelation function
-  of Sw[] (the speech spectrum).  However sometimes due to phase
-  effects the lowest frequency maxima may not be the global maxima.
-
-  This works OK in practice and favours low F0 values in the presence
-  of background noise which means the sinusoidal codec does an OK job
-  of synthesising the background noise.  High F0 in background noise
-  tends to sound more periodic introducing annoying artifacts.
-
-\*---------------------------------------------------------------------------*/
-
-float post_process_sub_multiples(COMP Fw[],
-                                int pmin, int pmax, float gmax, int gmax_bin,
-                                float *prev_Wo)
-{
-    int   min_bin, cmax_bin;
-    int   mult;
-    float thresh, best_f0;
-    int   b, bmin, bmax, lmax_bin;
-    float lmax;
-    int   prev_f0_bin;
-
-    /* post process estimate by searching submultiples */
-
-    mult = 2;
-    min_bin = PE_FFT_SIZE*DEC/pmax;
-    cmax_bin = gmax_bin;
-    prev_f0_bin = *prev_Wo*(4000.0/PI)*(PE_FFT_SIZE*DEC)/SAMPLE_RATE;
-
-    while(gmax_bin/mult >= min_bin) {
-
-       b = gmax_bin/mult;                      /* determine search interval */
-       bmin = 0.8*b;
-       bmax = 1.2*b;
-       if (bmin < min_bin)
-           bmin = min_bin;
-
-       /* lower threshold to favour previous frames pitch estimate,
-           this is a form of pitch tracking */
-
-       if ((prev_f0_bin > bmin) && (prev_f0_bin < bmax))
-           thresh = CNLP*0.5*gmax;
-       else
-           thresh = CNLP*gmax;
-
-       lmax = 0;
-       lmax_bin = bmin;
-       for (b=bmin; b<=bmax; b++)           /* look for maximum in interval */
-           if (Fw[b].real > lmax) {
-               lmax = Fw[b].real;
-               lmax_bin = b;
-           }
-
-       if (lmax > thresh)
-           if ((lmax > Fw[lmax_bin-1].real) && (lmax > Fw[lmax_bin+1].real)) {
-               cmax_bin = lmax_bin;
-           }
-
-       mult++;
-    }
-
-    best_f0 = (float)cmax_bin*SAMPLE_RATE/(PE_FFT_SIZE*DEC);
-
-    return best_f0;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  post_process_mbe()
-
-  Use the MBE pitch estimation algorithm to evaluate pitch candidates.  This
-  works OK but the accuracy at low F0 is affected by NW, the analysis window
-  size used for the DFT of the input speech Sw[].  Also favours high F0 in
-  the presence of background noise which causes periodic artifacts in the
-  synthesised speech.
-
-\*---------------------------------------------------------------------------*/
-
-float post_process_mbe(COMP Fw[], int pmin, int pmax, float gmax, COMP Sw[], 
COMP W[], float *prev_Wo)
-{
-  float candidate_f0;
-  float f0,best_f0;            /* fundamental frequency */
-  float e,e_min;                /* MBE cost function */
-  int   i;
-  #ifdef DUMP
-  float e_hz[F0_MAX];
-  #endif
-  #if !defined(NDEBUG) || defined(DUMP)
-  int   bin;
-  #endif
-  float f0_min, f0_max;
-  float f0_start, f0_end;
-
-  f0_min = (float)SAMPLE_RATE/pmax;
-  f0_max = (float)SAMPLE_RATE/pmin;
-
-  /* Now look for local maxima.  Each local maxima is a candidate
-     that we test using the MBE pitch estimation algotithm */
-
-  #ifdef DUMP
-  for(i=0; i<F0_MAX; i++)
-      e_hz[i] = -1;
-  #endif
-  e_min = 1E32;
-  best_f0 = 50;
-  for(i=PE_FFT_SIZE*DEC/pmax; i<=PE_FFT_SIZE*DEC/pmin; i++) {
-    if ((Fw[i].real > Fw[i-1].real) && (Fw[i].real > Fw[i+1].real)) {
-
-       /* local maxima found, lets test if it's big enough */
-
-       if (Fw[i].real > T*gmax) {
-
-           /* OK, sample MBE cost function over +/- 10Hz range in 2.5Hz steps 
*/
-
-           candidate_f0 = (float)i*SAMPLE_RATE/(PE_FFT_SIZE*DEC);
-           f0_start = candidate_f0-20;
-           f0_end = candidate_f0+20;
-           if (f0_start < f0_min) f0_start = f0_min;
-           if (f0_end > f0_max) f0_end = f0_max;
-
-           for(f0=f0_start; f0<=f0_end; f0+= 2.5) {
-               e = test_candidate_mbe(Sw, W, f0);
-               #if !defined(NDEBUG) || defined(DUMP)
-               bin = floor(f0); assert((bin > 0) && (bin < F0_MAX));
-               #endif
-               #ifdef DUMP
-                e_hz[bin] = e;
-                #endif
-               if (e < e_min) {
-                   e_min = e;
-                   best_f0 = f0;
-               }
-           }
-
-       }
-    }
-  }
-
-  /* finally sample MBE cost function around previous pitch estimate
-     (form of pitch tracking) */
-
-  candidate_f0 = *prev_Wo * SAMPLE_RATE/TWO_PI;
-  f0_start = candidate_f0-20;
-  f0_end = candidate_f0+20;
-  if (f0_start < f0_min) f0_start = f0_min;
-  if (f0_end > f0_max) f0_end = f0_max;
-
-  for(f0=f0_start; f0<=f0_end; f0+= 2.5) {
-      e = test_candidate_mbe(Sw, W, f0);
-      #if !defined(NDEBUG) || defined(DUMP)
-      bin = floor(f0); assert((bin > 0) && (bin < F0_MAX));
-      #endif
-      #ifdef DUMP
-      e_hz[bin] = e;
-      #endif
-      if (e < e_min) {
-         e_min = e;
-         best_f0 = f0;
-      }
-  }
-
-  #ifdef DUMP
-  dump_e(e_hz);
-  #endif
-
-  return best_f0;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  test_candidate_mbe()
-
-  Returns the error of the MBE cost function for the input f0.
-
-  Note: I think a lot of the operations below can be simplified as
-  W[].imag = 0 and has been normalised such that den always equals 1.
-
-\*---------------------------------------------------------------------------*/
-
-float test_candidate_mbe(
-    COMP  Sw[],
-    COMP  W[],
-    float f0
-)
-{
-    COMP  Sw_[FFT_ENC];   /* DFT of all voiced synthesised signal */
-    int   l,al,bl,m;      /* loop variables */
-    COMP  Am;             /* amplitude sample for this band */
-    int   offset;         /* centers Hw[] about current harmonic */
-    float den;            /* denominator of Am expression */
-    float error;          /* accumulated error between originl and synthesised 
*/
-    float Wo;             /* current "test" fundamental freq. */
-    int   L;
-
-    L = floor((SAMPLE_RATE/2.0)/f0);
-    Wo = f0*(2*PI/SAMPLE_RATE);
-
-    error = 0.0;
-
-    /* Just test across the harmonics in the first 1000 Hz (L/4) */
-
-    for(l=1; l<L/4; l++) {
-       Am.real = 0.0;
-       Am.imag = 0.0;
-       den = 0.0;
-       al = ceil((l - 0.5)*Wo*FFT_ENC/TWO_PI);
-       bl = ceil((l + 0.5)*Wo*FFT_ENC/TWO_PI);
-
-       /* Estimate amplitude of harmonic assuming harmonic is totally voiced */
-
-       for(m=al; m<bl; m++) {
-           offset = FFT_ENC/2 + m - l*Wo*FFT_ENC/TWO_PI + 0.5;
-           Am.real += Sw[m].real*W[offset].real + Sw[m].imag*W[offset].imag;
-           Am.imag += Sw[m].imag*W[offset].real - Sw[m].real*W[offset].imag;
-           den += W[offset].real*W[offset].real + 
W[offset].imag*W[offset].imag;
-        }
-
-        Am.real = Am.real/den;
-        Am.imag = Am.imag/den;
-
-        /* Determine error between estimated harmonic and original */
-
-        for(m=al; m<bl; m++) {
-           offset = FFT_ENC/2 + m - l*Wo*FFT_ENC/TWO_PI + 0.5;
-           Sw_[m].real = Am.real*W[offset].real - Am.imag*W[offset].imag;
-           Sw_[m].imag = Am.real*W[offset].imag + Am.imag*W[offset].real;
-           error += (Sw[m].real - Sw_[m].real)*(Sw[m].real - Sw_[m].real);
-           error += (Sw[m].imag - Sw_[m].imag)*(Sw[m].imag - Sw_[m].imag);
-       }
-    }
-
-    return error;
-}
-
diff --git a/gr-vocoder/lib/codec2/nlp.h b/gr-vocoder/lib/codec2/nlp.h
deleted file mode 100644
index 6e03236..0000000
--- a/gr-vocoder/lib/codec2/nlp.h
+++ /dev/null
@@ -1,38 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: nlp.c
-  AUTHOR......: David Rowe
-  DATE CREATED: 23/3/93
-
-  Non Linear Pitch (NLP) estimation functions.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2009 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#ifndef __NLP__
-#define __NLP__
-
-#include "comp.h"
-
-void *nlp_create(int m);
-void nlp_destroy(void *nlp_state);
-float nlp(void *nlp_state, float Sn[], int n, int pmin, int pmax,
-         float *pitch, COMP Sw[], COMP W[], float *prev_Wo);
-
-#endif
diff --git a/gr-vocoder/lib/codec2/os.h b/gr-vocoder/lib/codec2/os.h
deleted file mode 100644
index 0dae9bf..0000000
--- a/gr-vocoder/lib/codec2/os.h
+++ /dev/null
@@ -1,53 +0,0 @@
-/* Generate using fir1(47,1/6) in Octave */
-
-const float fdmdv_os_filter[]= {
-    -3.55606818e-04,
-    -8.98615286e-04,
-    -1.40119781e-03,
-    -1.71713852e-03,
-    -1.56471179e-03,
-    -6.28128960e-04,
-    1.24522223e-03,
-    3.83138676e-03,
-    6.41309478e-03,
-    7.85893186e-03,
-    6.93514929e-03,
-    2.79361991e-03,
-    -4.51051400e-03,
-    -1.36671853e-02,
-    -2.21034939e-02,
-    -2.64084653e-02,
-    -2.31425052e-02,
-    -9.84218694e-03,
-    1.40648474e-02,
-    4.67316298e-02,
-    8.39615986e-02,
-    1.19925275e-01,
-    1.48381174e-01,
-    1.64097819e-01,
-    1.64097819e-01,
-    1.48381174e-01,
-    1.19925275e-01,
-    8.39615986e-02,
-    4.67316298e-02,
-    1.40648474e-02,
-    -9.84218694e-03,
-    -2.31425052e-02,
-    -2.64084653e-02,
-    -2.21034939e-02,
-    -1.36671853e-02,
-    -4.51051400e-03,
-    2.79361991e-03,
-    6.93514929e-03,
-    7.85893186e-03,
-    6.41309478e-03,
-    3.83138676e-03,
-    1.24522223e-03,
-    -6.28128960e-04,
-    -1.56471179e-03,
-    -1.71713852e-03,
-    -1.40119781e-03,
-    -8.98615286e-04,
-    -3.55606818e-04
-};
-
diff --git a/gr-vocoder/lib/codec2/pack.c b/gr-vocoder/lib/codec2/pack.c
deleted file mode 100644
index 1c07230..0000000
--- a/gr-vocoder/lib/codec2/pack.c
+++ /dev/null
@@ -1,140 +0,0 @@
-/*
-  Copyright (C) 2010 Perens LLC <address@hidden>
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#include "defines.h"
-#include "quantise.h"
-#include <stdio.h>
-
-/* Compile-time constants */
-/* Size of unsigned char in bits. Assumes 8 bits-per-char. */
-static const unsigned int      WordSize = 8;
-
-/* Mask to pick the bit component out of bitIndex. */
-static const unsigned int      IndexMask = 0x7;
-
-/* Used to pick the word component out of bitIndex. */
-static const unsigned int      ShiftRight = 3;
-
-/** Pack a bit field into a bit string, encoding the field in Gray code.
- *
- * The output is an array of unsigned char data. The fields are efficiently
- * packed into the bit string. The Gray coding is a naive attempt to reduce
- * the effect of single-bit errors, we expect to do a better job as the
- * codec develops.
- *
- * This code would be simpler if it just set one bit at a time in the string,
- * but would hit the same cache line more often. I'm not sure the complexity
- * gains us anything here.
- *
- * Although field is currently of int type rather than unsigned for
- * compatibility with the rest of the code, indices are always expected to
- * be >= 0.
- */
-void
-pack(
- unsigned char *       bitArray, /* The output bit string. */
- unsigned int *                bitIndex, /* Index into the string in BITS, not 
bytes.*/
- int                   field,    /* The bit field to be packed. */
- unsigned int          fieldWidth/* Width of the field in BITS, not bytes. */
- )
-{
-    pack_natural_or_gray(bitArray, bitIndex, field, fieldWidth, 1);
-}
-
-void
-pack_natural_or_gray(
- unsigned char *       bitArray,  /* The output bit string. */
- unsigned int *                bitIndex,  /* Index into the string in BITS, 
not bytes.*/
- int                   field,     /* The bit field to be packed. */
- unsigned int          fieldWidth,/* Width of the field in BITS, not bytes. */
- unsigned int           gray       /* non-zero for gray coding */
- )
-{
-  if (gray) {
-    /* Convert the field to Gray code */
-    field = (field >> 1) ^ field;
-  }
-
-  do {
-    unsigned int       bI = *bitIndex;
-    unsigned int       bitsLeft = WordSize - (bI & IndexMask);
-    unsigned int       sliceWidth =
-                        bitsLeft < fieldWidth ? bitsLeft : fieldWidth;
-    unsigned int       wordIndex = bI >> ShiftRight;
-
-    bitArray[wordIndex] |=
-     ((unsigned char)((field >> (fieldWidth - sliceWidth))
-     << (bitsLeft - sliceWidth)));
-
-    *bitIndex = bI + sliceWidth;
-    fieldWidth -= sliceWidth;
-  } while ( fieldWidth != 0 );
-}
-
-/** Unpack a field from a bit string, converting from Gray code to binary.
- *
- */
-int
-unpack(
- const unsigned char * bitArray, /* The input bit string. */
- unsigned int *                bitIndex, /* Index into the string in BITS, not 
bytes.*/
- unsigned int          fieldWidth/* Width of the field in BITS, not bytes. */
- )
-{
-    return unpack_natural_or_gray(bitArray, bitIndex, fieldWidth, 1);
-}
-
-/** Unpack a field from a bit string, to binary, optionally using
- * natural or Gray code.
- *
- */
-int
-unpack_natural_or_gray(
- const unsigned char * bitArray,  /* The input bit string. */
- unsigned int *                bitIndex,  /* Index into the string in BITS, 
not bytes.*/
- unsigned int          fieldWidth,/* Width of the field in BITS, not bytes. */
- unsigned int           gray       /* non-zero for Gray coding */
- )
-{
-  unsigned int field = 0;
-  unsigned int t;
-
-  do {
-    unsigned int       bI = *bitIndex;
-    unsigned int       bitsLeft = WordSize - (bI & IndexMask);
-    unsigned int       sliceWidth =
-                        bitsLeft < fieldWidth ? bitsLeft : fieldWidth;
-
-    field |= (((bitArray[bI >> ShiftRight] >> (bitsLeft - sliceWidth)) & ((1 
<< sliceWidth) - 1)) << (fieldWidth - sliceWidth));
-
-    *bitIndex = bI + sliceWidth;
-    fieldWidth -= sliceWidth;
-  } while ( fieldWidth != 0 );
-
-  if (gray) {
-    /* Convert from Gray code to binary. Works for maximum 8-bit fields. */
-    t = field ^ (field >> 8);
-    t ^= (t >> 4);
-    t ^= (t >> 2);
-    t ^= (t >> 1);
-  }
-  else {
-    t = field;
-  }
-
-  return t;
-}
diff --git a/gr-vocoder/lib/codec2/phase.c b/gr-vocoder/lib/codec2/phase.c
deleted file mode 100644
index a9c1c06..0000000
--- a/gr-vocoder/lib/codec2/phase.c
+++ /dev/null
@@ -1,253 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: phase.c
-  AUTHOR......: David Rowe
-  DATE CREATED: 1/2/09
-
-  Functions for modelling and synthesising phase.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2009 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not,see <http://www.gnu.org/licenses/>.
-*/
-
-#include "defines.h"
-#include "phase.h"
-#include "kiss_fft.h"
-#include "comp.h"
-#include "sine.h"
-
-#include <assert.h>
-#include <ctype.h>
-#include <math.h>
-#include <string.h>
-#include <stdlib.h>
-
-/*---------------------------------------------------------------------------*\
-
-  aks_to_H()
-
-  Samples the complex LPC synthesis filter spectrum at the harmonic
-  frequencies.
-
-\*---------------------------------------------------------------------------*/
-
-void aks_to_H(
-              kiss_fft_cfg fft_fwd_cfg,
-             MODEL *model,     /* model parameters */
-             float  aks[],     /* LPC's */
-             float  G,         /* energy term */
-             COMP   H[],       /* complex LPC spectral samples */
-             int    order
-)
-{
-  COMP  pw[FFT_ENC];   /* power spectrum (input) */
-  COMP  Pw[FFT_ENC];   /* power spectrum (output) */
-  int   i,m;           /* loop variables */
-  int   am,bm;         /* limits of current band */
-  float r;             /* no. rads/bin */
-  float Em;            /* energy in band */
-  float Am;            /* spectral amplitude sample */
-  int   b;             /* centre bin of harmonic */
-  float phi_;          /* phase of LPC spectra */
-
-  r = TWO_PI/(FFT_ENC);
-
-  /* Determine DFT of A(exp(jw)) ------------------------------------------*/
-
-  for(i=0; i<FFT_ENC; i++) {
-    pw[i].real = 0.0;
-    pw[i].imag = 0.0;
-  }
-
-  for(i=0; i<=order; i++)
-    pw[i].real = aks[i];
-
-  kiss_fft(fft_fwd_cfg, (kiss_fft_cpx *)pw, (kiss_fft_cpx *)Pw);
-
-  /* Sample magnitude and phase at harmonics */
-
-  for(m=1; m<=model->L; m++) {
-      am = (int)((m - 0.5)*model->Wo/r + 0.5);
-      bm = (int)((m + 0.5)*model->Wo/r + 0.5);
-      b = (int)(m*model->Wo/r + 0.5);
-
-      Em = 0.0;
-      for(i=am; i<bm; i++)
-          Em += G/(Pw[i].real*Pw[i].real + Pw[i].imag*Pw[i].imag);
-      Am = sqrtf(fabsf(Em/(bm-am)));
-
-      phi_ = -atan2f(Pw[b].imag,Pw[b].real);
-      H[m].real = Am*cosf(phi_);
-      H[m].imag = Am*sinf(phi_);
-  }
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-   phase_synth_zero_order()
-
-   Synthesises phases based on SNR and a rule based approach.  No phase
-   parameters are required apart from the SNR (which can be reduced to a
-   1 bit V/UV decision per frame).
-
-   The phase of each harmonic is modelled as the phase of a LPC
-   synthesis filter excited by an impulse.  Unlike the first order
-   model the position of the impulse is not transmitted, so we create
-   an excitation pulse train using a rule based approach.
-
-   Consider a pulse train with a pulse starting time n=0, with pulses
-   repeated at a rate of Wo, the fundamental frequency.  A pulse train
-   in the time domain is equivalent to harmonics in the frequency
-   domain.  We can make an excitation pulse train using a sum of
-   sinsusoids:
-
-     for(m=1; m<=L; m++)
-       ex[n] = cos(m*Wo*n)
-
-   Note: the Octave script ../octave/phase.m is an example of this if
-   you would like to try making a pulse train.
-
-   The phase of each excitation harmonic is:
-
-     arg(E[m]) = mWo
-
-   where E[m] are the complex excitation (freq domain) samples,
-   arg(x), just returns the phase of a complex sample x.
-
-   As we don't transmit the pulse position for this model, we need to
-   synthesise it.  Now the excitation pulses occur at a rate of Wo.
-   This means the phase of the first harmonic advances by N samples
-   over a synthesis frame of N samples.  For example if Wo is pi/20
-   (200 Hz), then over a 10ms frame (N=80 samples), the phase of the
-   first harmonic would advance (pi/20)*80 = 4*pi or two complete
-   cycles.
-
-   We generate the excitation phase of the fundamental (first
-   harmonic):
-
-     arg[E[1]] = Wo*N;
-
-   We then relate the phase of the m-th excitation harmonic to the
-   phase of the fundamental as:
-
-     arg(E[m]) = m*arg(E[1])
-
-   This E[m] then gets passed through the LPC synthesis filter to
-   determine the final harmonic phase.
-
-   Comparing to speech synthesised using original phases:
-
-   - Through headphones speech synthesised with this model is not as
-     good. Through a loudspeaker it is very close to original phases.
-
-   - If there are voicing errors, the speech can sound clicky or
-     staticy.  If V speech is mistakenly declared UV, this model tends to
-     synthesise impulses or clicks, as there is usually very little shift or
-     dispersion through the LPC filter.
-
-   - When combined with LPC amplitude modelling there is an additional
-     drop in quality.  I am not sure why, theory is interformant energy
-     is raised making any phase errors more obvious.
-
-   NOTES:
-
-     1/ This synthesis model is effectively the same as a simple LPC-10
-     vocoders, and yet sounds much better.  Why? Conventional wisdom
-     (AMBE, MELP) says mixed voicing is required for high quality
-     speech.
-
-     2/ I am pretty sure the Lincoln Lab sinusoidal coding guys (like xMBE
-     also from MIT) first described this zero phase model, I need to look
-     up the paper.
-
-     3/ Note that this approach could cause some discontinuities in
-     the phase at the edge of synthesis frames, as no attempt is made
-     to make sure that the phase tracks are continuous (the excitation
-     phases are continuous, but not the final phases after filtering
-     by the LPC spectra).  Technically this is a bad thing.  However
-     this may actually be a good thing, disturbing the phase tracks a
-     bit.  More research needed, e.g. test a synthesis model that adds
-     a small delta-W to make phase tracks line up for voiced
-     harmonics.
-
-\*---------------------------------------------------------------------------*/
-
-void phase_synth_zero_order(
-    kiss_fft_cfg fft_fwd_cfg,
-    MODEL *model,
-    float  aks[],
-    float *ex_phase,            /* excitation phase of fundamental */
-    int    order
-)
-{
-  int   m;
-  float new_phi;
-  COMP  Ex[MAX_AMP+1];         /* excitation samples */
-  COMP  A_[MAX_AMP+1];         /* synthesised harmonic samples */
-  COMP  H[MAX_AMP+1];           /* LPC freq domain samples */
-  float G;
-
-  G = 1.0;
-  aks_to_H(fft_fwd_cfg, model, aks, G, H, order);
-
-  /*
-     Update excitation fundamental phase track, this sets the position
-     of each pitch pulse during voiced speech.  After much experiment
-     I found that using just this frame's Wo improved quality for UV
-     sounds compared to interpolating two frames Wo like this:
-
-     ex_phase[0] += (*prev_Wo+model->Wo)*N/2;
-  */
-
-  ex_phase[0] += (model->Wo)*N;
-  ex_phase[0] -= TWO_PI*floorf(ex_phase[0]/TWO_PI + 0.5);
-
-  for(m=1; m<=model->L; m++) {
-
-    /* generate excitation */
-
-      if (model->voiced) {
-
-       Ex[m].real = cosf(ex_phase[0]*m);
-       Ex[m].imag = sinf(ex_phase[0]*m);
-    }
-    else {
-
-       /* When a few samples were tested I found that LPC filter
-          phase is not needed in the unvoiced case, but no harm in
-          keeping it.
-        */
-       float phi = TWO_PI*(float)codec2_rand()/CODEC2_RAND_MAX;
-        Ex[m].real = cosf(phi);
-       Ex[m].imag = sinf(phi);
-    }
-
-    /* filter using LPC filter */
-
-    A_[m].real = H[m].real*Ex[m].real - H[m].imag*Ex[m].imag;
-    A_[m].imag = H[m].imag*Ex[m].real + H[m].real*Ex[m].imag;
-
-    /* modify sinusoidal phase */
-
-    new_phi = atan2f(A_[m].imag, A_[m].real+1E-12);
-    model->phi[m] = new_phi;
-  }
-
-}
-
diff --git a/gr-vocoder/lib/codec2/phase.h b/gr-vocoder/lib/codec2/phase.h
deleted file mode 100644
index 2927e91..0000000
--- a/gr-vocoder/lib/codec2/phase.h
+++ /dev/null
@@ -1,39 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: phase.h
-  AUTHOR......: David Rowe
-  DATE CREATED: 1/2/09
-
-  Functions for modelling phase.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2009 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#ifndef __PHASE__
-#define __PHASE__
-
-#include "kiss_fft.h"
-
-void phase_synth_zero_order(kiss_fft_cfg fft_dec_cfg,
-                           MODEL *model,
-                           float aks[],
-                            float *ex_phase,
-                           int order);
-
-#endif
diff --git a/gr-vocoder/lib/codec2/phaseexp.c b/gr-vocoder/lib/codec2/phaseexp.c
deleted file mode 100644
index 61b240d..0000000
--- a/gr-vocoder/lib/codec2/phaseexp.c
+++ /dev/null
@@ -1,1455 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: phaseexp.c
-  AUTHOR......: David Rowe
-  DATE CREATED: June 2012
-
-  Experimental functions for quantising, modelling and synthesising phase.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2012 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not,see <http://www.gnu.org/licenses/>.
-*/
-
-#include "defines.h"
-#include "phase.h"
-#include "kiss_fft.h"
-#include "comp.h"
-
-#include <assert.h>
-#include <ctype.h>
-#include <math.h>
-#include <string.h>
-#include <stdlib.h>
-
-/* Bruce Perens' funcs to load codebook files */
-
-struct codebook {
-    unsigned int        k;
-    unsigned int        log2m;
-    unsigned int        m;
-    COMP                *cb;
-    unsigned int         offset;
-};
-
-static const char format[] =
-"The table format must be:\n"
-"\tTwo integers describing the dimensions of the codebook.\n"
-"\tThen, enough numbers to fill the specified dimensions.\n";
-
-float get_float(FILE * in, const char * name, char * * cursor, char * buffer, 
int size)
-{
-  for ( ; ; ) {
-    char *     s = *cursor;
-    char       c;
-
-    while ( (c = *s) != '\0' && !isdigit(c) && c != '-' && c != '.' )
-      s++;
-
-    /* Comments start with "#" and continue to the end of the line. */
-    if ( c != '\0' && c != '#' ) {
-      char *   end = 0;
-      float    f = 0;
-
-      f = strtod(s, &end);
-
-      if ( end != s )
-        *cursor = end;
-        return f;
-    }
-
-    if ( fgets(buffer, size, in) == NULL ) {
-      fprintf(stderr, "%s: Format error. %s\n", name, format);
-      exit(1);
-    }
-    *cursor = buffer;
-  }
-}
-
-static struct codebook *load(const char * name)
-{
-    FILE               *file;
-    char               line[2048];
-    char               *cursor = line;
-    struct codebook    *b = malloc(sizeof(struct codebook));
-    int                        i;
-    int                        size;
-    float               angle;
-
-    file = fopen(name, "rt");
-    assert(file != NULL);
-
-    *cursor = '\0';
-
-    b->k = (int)get_float(file, name, &cursor, line, sizeof(line));
-    b->m = (int)get_float(file, name ,&cursor, line, sizeof(line));
-    size = b->k * b->m;
-
-    b->cb = (COMP *)malloc(size * sizeof(COMP));
-
-    for ( i = 0; i < size; i++ ) {
-       angle = get_float(file, name, &cursor, line, sizeof(line));
-       b->cb[i].real = cos(angle);
-       b->cb[i].imag = sin(angle);
-    }
-
-    fclose(file);
-
-    return b;
-}
-
-
-/* states for phase experiments */
-
-struct PEXP {
-    float            phi1;
-    float            phi_prev[MAX_AMP];
-    float            Wo_prev;
-    int              frames;
-    float            snr;
-    float            var;
-    int              var_n;
-    struct codebook *vq1,*vq2,*vq3,*vq4,*vq5;
-    float            vq_var;
-    int              vq_var_n;
-    MODEL            prev_model;
-    int              state;
-};
-
-
-/*---------------------------------------------------------------------------* 
\
-
-  phase_experiment_create()
-
-  Inits states for phase quantisation experiments.
-
-\*---------------------------------------------------------------------------*/
-
-struct PEXP * phase_experiment_create() {
-    struct PEXP *pexp;
-    int i;
-
-    pexp = (struct PEXP *)malloc(sizeof(struct PEXP));
-    assert (pexp != NULL);
-
-    pexp->phi1 = 0;
-    for(i=0; i<MAX_AMP; i++)
-       pexp->phi_prev[i] = 0.0;
-    pexp->Wo_prev = 0.0;
-    pexp->frames = 0;
-    pexp->snr = 0.0;
-    pexp->var = 0.0;
-    pexp->var_n = 0;
-
-    /* smoothed 10th order for 1st 1 khz */
-    //pexp->vq1 = load("../unittest/ph1_10_1024.txt");
-    //pexp->vq1->offset = 0;
-
-    /* load experimental phase VQ */
-
-    //pexp->vq1 = load("../unittest/testn1_20_1024.txt");
-    pexp->vq1 = load("../unittest/test.txt");
-    //pexp->vq2 = load("../unittest/testn21_40_1024.txt");
-    pexp->vq2 = load("../unittest/test11_20_1024.txt");
-    pexp->vq3 = load("../unittest/test21_30_1024.txt");
-    pexp->vq4 = load("../unittest/test31_40_1024.txt");
-    pexp->vq5 = load("../unittest/test41_60_1024.txt");
-    pexp->vq1->offset = 0;
-    pexp->vq2->offset = 10;
-    pexp->vq3->offset = 20;
-    pexp->vq4->offset = 30;
-    pexp->vq5->offset = 40;
-
-    pexp->vq_var = 0.0;
-    pexp->vq_var_n = 0;
-
-    pexp->state = 0;
-
-    return pexp;
-}
-
-
-/*---------------------------------------------------------------------------* 
\
-
-  phase_experiment_destroy()
-
-\*---------------------------------------------------------------------------*/
-
-void phase_experiment_destroy(struct PEXP *pexp) {
-    assert(pexp != NULL);
-    if (pexp->snr != 0.0)
-       printf("snr: %4.2f dB\n", pexp->snr/pexp->frames);
-    if (pexp->var != 0.0)
-       printf("var...: %4.3f  std dev...: %4.3f (%d non zero phases)\n",
-              pexp->var/pexp->var_n, sqrt(pexp->var/pexp->var_n), pexp->var_n);
-    if (pexp->vq_var != 0.0)
-       printf("vq var: %4.3f  vq std dev: %4.3f (%d non zero phases)\n",
-              pexp->vq_var/pexp->vq_var_n, sqrt(pexp->vq_var/pexp->vq_var_n), 
pexp->vq_var_n);
-    free(pexp);
-}
-
-
-/*---------------------------------------------------------------------------* 
\
-
-  Various test and experimental functions ................
-
-\*---------------------------------------------------------------------------*/
-
-/* Bubblesort to find highest amplitude harmonics */
-
-struct AMPINDEX {
-    float amp;
-    int   index;
-};
-
-static void bubbleSort(struct AMPINDEX numbers[], int array_size)
-{
-    int i, j;
-    struct AMPINDEX temp;
-
-  for (i = (array_size - 1); i > 0; i--)
-  {
-    for (j = 1; j <= i; j++)
-    {
-       //printf("i %d j %d %f %f \n", i, j, numbers[j-1].amp, numbers[j].amp);
-      if (numbers[j-1].amp < numbers[j].amp)
-      {
-        temp = numbers[j-1];
-        numbers[j-1] = numbers[j];
-        numbers[j] = temp;
-      }
-    }
-  }
-}
-
-
-static void print_pred_error(struct PEXP *pexp, MODEL *model, int start, int 
end, float mag_thresh) {
-    int   i;
-    float mag;
-
-    mag = 0.0;
-    for(i=start; i<=end; i++)
-       mag += model->A[i]*model->A[i];
-    mag = 10*log10(mag/(end-start));
-
-    if (mag > mag_thresh) {
-       for(i=start; i<=end; i++) {
-           float pred = pexp->phi_prev[i] + N*i*(model->Wo + 
pexp->Wo_prev)/2.0;
-           float err = pred - model->phi[i];
-           err = atan2(sin(err),cos(err));
-           printf("%f\n",err);
-       }
-       //printf("\n");
-    }
-
-}
-
-
-static void predict_phases(struct PEXP *pexp, MODEL *model, int start, int 
end) {
-    int i;
-
-    for(i=start; i<=end; i++) {
-       model->phi[i] = pexp->phi_prev[i] + N*i*model->Wo;
-    }
-
-}
-static float refine_Wo(struct PEXP     *pexp,
-                      MODEL           *model,
-                      int              start,
-                      int              end);
-
-/* Fancy state based phase prediction.  Actually works OK on most utterances,
-   but could use some tuning.  Breaks down a bit on mmt1. */
-
-static void predict_phases_state(struct PEXP *pexp, MODEL *model, int start, 
int end) {
-    int i, next_state;
-    float best_Wo, dWo;
-
-    //best_Wo = refine_Wo(pexp, model, start, end);
-    //best_Wo = (model->Wo + pexp->Wo_prev)/2.0;
-    best_Wo = model->Wo;
-
-    dWo = fabs(model->Wo - pexp->Wo_prev)/model->Wo;
-    next_state = pexp->state;
-    switch(pexp->state) {
-    case 0:
-       if (dWo < 0.1) {
-           /* UV -> V transition, so start with phases in lock.  They will
-              drift a bit over voiced track which is kinda what we want, so
-              we don't get clicky speech.
-           */
-           next_state = 1;
-           for(i=start; i<=end; i++)
-               pexp->phi_prev[i] = i*pexp->phi1;
-       }
-
-       break;
-    case 1:
-       if (dWo > 0.1)
-           next_state = 0;
-       break;
-    }
-    pexp->state = next_state;
-
-    if (pexp->state == 0)
-       for(i=start; i<=end; i++) {
-           model->phi[i] = PI*(1.0 - 2.0*rand()/RAND_MAX);
-       }
-    else
-       for(i=start; i<=end; i++) {
-           model->phi[i] = pexp->phi_prev[i] + N*i*best_Wo;
-       }
-    printf("state %d\n", pexp->state);
-}
-
-static void struct_phases(struct PEXP *pexp, MODEL *model, int start, int end) 
{
-    int i;
-
-    for(i=start; i<=end; i++)
-       model->phi[i] = pexp->phi1*i;
-
-}
-
-
-static void predict_phases2(struct PEXP *pexp, MODEL *model, int start, int 
end) {
-    int i;
-    float pred, str, diff;
-
-    for(i=start; i<=end; i++) {
-       pred = pexp->phi_prev[i] + N*i*model->Wo;
-       str = pexp->phi1*i;
-       diff = str - pred;
-       diff = atan2(sin(diff), cos(diff));
-       if (diff > 0)
-           pred += PI/16;
-       else
-           pred -= PI/16;
-       model->phi[i] = pred;
-    }
-
-}
-
-static void rand_phases(MODEL *model, int start, int end) {
-    int i;
-
-    for(i=start; i<=end; i++)
-       model->phi[i] = PI*(1.0 - 2.0*(float)rand()/RAND_MAX);
-
-}
-
-static void quant_phase(float *phase, float min, float max, int bits) {
-    int   levels = 1 << bits;
-    int   index;
-    float norm, step;
-
-    norm = (*phase - min)/(max - min);
-    index = floor(levels*norm);
-
-    //printf("phase %f norm %f index %d ", *phase, norm, index);
-    if (index < 0 ) index = 0;
-    if (index > (levels-1)) index = levels-1;
-    //printf("index %d ", index);
-    step = (max - min)/levels;
-    *phase = min + step*index + 0.5*step;
-    //printf("step %f phase %f\n", step, *phase);
-}
-
-static void quant_phases(MODEL *model, int start, int end, int bits) {
-    int i;
-
-    for(i=start; i<=end; i++) {
-       quant_phase(&model->phi[i], -PI, PI, bits);
-    }
-}
-
-static void fixed_bits_per_frame(struct PEXP *pexp, MODEL *model, int m, int 
budget) {
-    int res, finished;
-
-    res = 3;
-    finished = 0;
-
-    while(!finished) {
-       if (m > model->L/2)
-           res = 2;
-       if (((budget - res) < 0) || (m > model->L))
-           finished = 1;
-       else {
-           quant_phase(&model->phi[m], -PI, PI, res);
-           budget -= res;
-           m++;
-       }
-    }
-    printf("m: %d L: %d budget: %d\n", m, model->L, budget);
-    predict_phases(pexp, model, m, model->L);
-    //rand_phases(model, m, model->L);
-}
-
-/* used to plot histogram of quantisation error, for 3 bits, 8 levels,
-   should be uniform between +/- PI/8 */
-
-static void check_phase_quant(MODEL *model, float tol)
-{
-    int m;
-    float phi_before[MAX_AMP];
-
-    for(m=1; m<=model->L; m++)
-       phi_before[m] = model->phi[m];
-
-    quant_phases(model, 1, model->L, 3);
-
-    for(m=1; m<=model->L; m++) {
-       float err = phi_before[m] - model->phi[m];
-       printf("%f\n", err);
-       if (fabs(err) > tol)
-           exit(0);
-    }
-}
-
-
-static float est_phi1(MODEL *model, int start, int end)
-{
-    int m;
-    float delta, s, c, phi1_est;
-
-    if (end > model->L)
-       end = model->L;
-
-    s = c = 0.0;
-    for(m=start; m<end; m++) {
-       delta = model->phi[m+1] - model->phi[m];
-       s += sin(delta);
-       c += cos(delta);
-    }
-
-    phi1_est = atan2(s,c);
-
-    return phi1_est;
-}
-
-static void print_phi1_pred_error(MODEL *model, int start, int end)
-{
-    int m;
-    float phi1_est;
-
-    phi1_est = est_phi1(model, start, end);
-
-    for(m=start; m<end; m++) {
-       float err = model->phi[m+1] - model->phi[m] - phi1_est;
-       err = atan2(sin(err),cos(err));
-       printf("%f\n", err);
-    }
-}
-
-
-static void first_order_band(MODEL *model, int start, int end, float phi1_est)
-{
-    int   m;
-    float pred_err, av_pred_err;
-    float c,s;
-
-    s = c = 0.0;
-    for(m=start; m<end; m++) {
-       pred_err = model->phi[m] - phi1_est*m;
-       s += sin(pred_err);
-       c += cos(pred_err);
-    }
-
-    av_pred_err = atan2(s,c);
-    for(m=start; m<end; m++) {
-       model->phi[m] = av_pred_err + phi1_est*m;
-       model->phi[m] = atan2(sin(model->phi[m]), cos(model->phi[m]));
-    }
-
-}
-
-
-static void sub_linear(MODEL *model, int start, int end, float phi1_est)
-{
-    int   m;
-
-    for(m=start; m<end; m++) {
-       model->phi[m] = m*phi1_est;
-    }
-}
-
-
-static void top_amp(struct PEXP *pexp, MODEL *model, int start, int end, int 
n_harm, int pred)
-{
-    int removed = 0, not_removed = 0;
-    int top, i, j;
-    struct AMPINDEX sorted[MAX_AMP];
-
-    /* sort into ascending order of amplitude */
-
-    printf("\n");
-    for(i=start,j=0; i<end; i++,j++) {
-       sorted[j].amp = model->A[i];
-       sorted[j].index = i;
-       printf("%f ", model->A[i]);
-    }
-    bubbleSort(sorted, end-start);
-
-    printf("\n");
-    for(j=0; j<n_harm; j++)
-       printf("%d %f\n", j, sorted[j].amp);
-
-    /* keep phase of top n_harm, predict others */
-
-    for(i=start; i<end; i++) {
-       top = 0;
-       for(j=0; j<n_harm; j++) {
-           if (model->A[i] == sorted[j].amp) {
-               top = 1;
-               assert(i == sorted[j].index);
-           }
-       }
-
-       #define ALTTOP
-       #ifdef ALTTOP
-       model->phi[i] = 0.0; /* make sure */
-       if (top) {
-           model->phi[i] = i*pexp->phi1;
-           removed++;
-       }
-       else {
-           model->phi[i] = PI*(1.0 - 2.0*(float)rand()/RAND_MAX); // note: try 
rand for higher harms
-           removed++;
-       }
-       #else
-       if (!top) {
-           model->phi[i] = 0.0; /* make sure */
-           if (pred)  {
-               //model->phi[i] = pexp->phi_prev[i] + i*N*(model->Wo + 
pexp->Wo_prev)/2.0;
-               model->phi[i] = i*model->phi[1];
-           }
-           else
-               model->phi[i] = PI*(1.0 - 2.0*(float)rand()/RAND_MAX); // note: 
try rand for higher harms
-           removed++;
-       }
-       else {
-           /* need to make this work thru budget of bits */
-           quant_phase(&model->phi[i], -PI, PI, 3);
-           not_removed++;
-       }
-       #endif
-    }
-    printf("dim: %d rem %d not_rem %d\n", end-start, removed, not_removed);
-
-}
-
-
-static void limit_prediction_error(struct PEXP *pexp, MODEL *model, int start, 
int end, float limit)
-{
-    int   i;
-    float pred, pred_error, error;
-
-    for(i=start; i<=end; i++) {
-       pred = pexp->phi_prev[i] + N*i*(model->Wo + pexp->Wo_prev)/2.0;
-       pred_error = pred - model->phi[i];
-       pred_error -= TWO_PI*floor((pred_error+PI)/TWO_PI);
-       quant_phase(&pred_error, -limit, limit, 2);
-
-       error = pred - pred_error - model->phi[i];
-       error -= TWO_PI*floor((error+PI)/TWO_PI);
-       printf("%f\n", pred_error);
-       model->phi[i] = pred - pred_error;
-    }
-}
-
-
-static void quant_prediction_error(struct PEXP *pexp, MODEL *model, int start, 
int end, float limit)
-{
-    int   i;
-    float pred, pred_error;
-
-    for(i=start; i<=end; i++) {
-       pred = pexp->phi_prev[i] + N*i*(model->Wo + pexp->Wo_prev)/2.0;
-       pred_error = pred - model->phi[i];
-       pred_error -= TWO_PI*floor((pred_error+PI)/TWO_PI);
-
-       printf("%f\n", pred_error);
-       model->phi[i] = pred - pred_error;
-    }
-}
-
-
-static void print_sparse_pred_error(struct PEXP *pexp, MODEL *model, int 
start, int end, float mag_thresh)
-{
-    int    i, index;
-    float  mag, pred, error;
-    float  sparse_pe[MAX_AMP];
-
-    mag = 0.0;
-    for(i=start; i<=end; i++)
-       mag += model->A[i]*model->A[i];
-    mag = 10*log10(mag/(end-start));
-
-    if (mag > mag_thresh) {
-       for(i=0; i<MAX_AMP; i++) {
-           sparse_pe[i] = 0.0;
-       }
-
-       for(i=start; i<=end; i++) {
-           pred = pexp->phi_prev[i] + N*i*(model->Wo + pexp->Wo_prev)/2.0;
-           error = pred - model->phi[i];
-           error = atan2(sin(error),cos(error));
-
-           index = MAX_AMP*i*model->Wo/PI;
-           assert(index < MAX_AMP);
-           sparse_pe[index] = error;
-       }
-
-       /* dump spare phase vector in polar format */
-
-       for(i=0; i<MAX_AMP; i++)
-           printf("%f ", sparse_pe[i]);
-       printf("\n");
-    }
-}
-
-
-static void update_snr_calc(struct PEXP *pexp, MODEL *model, float before[])
-{
-    int m;
-    float signal, noise, diff;
-
-    signal = 0.0; noise = 0.0;
-    for(m=1; m<=model->L; m++) {
-       signal += model->A[m]*model->A[m];
-       diff = cos(model->phi[m]) - cos(before[m]);
-       noise  += pow(model->A[m]*diff, 2.0);
-       diff = sin(model->phi[m]) - sin(before[m]);
-       noise  += pow(model->A[m]*diff, 2.0);
-       //printf("%f %f\n", before[m], model->phi[m]);
-    }
-    //printf("%f %f snr = %f\n", signal, noise, 10.0*log10(signal/noise));
-    pexp->snr += 10.0*log10(signal/noise);
-}
-
-
-static void update_variance_calc(struct PEXP *pexp, MODEL *model, float 
before[])
-{
-    int m;
-    float diff;
-
-    for(m=1; m<model->L; m++) {
-        diff = model->phi[m] - before[m];
-        diff = atan2(sin(diff), cos(diff));
-        pexp->var += diff*diff;
-    }
-    pexp->var_n += model->L;
-}
-
-void print_vec(COMP cb[], int d, int e)
-{
-    int i,j;
-
-    for(j=0; j<e; j++) {
-       for(i=0; i<d; i++)
-           printf("%f %f ", cb[j*d+i].real, cb[j*d+i].imag);
-       printf("\n");
-    }
-}
-
-static COMP cconj(COMP a)
-{
-    COMP res;
-
-    res.real = a.real;
-    res.imag = -a.imag;
-
-    return res;
-}
-
-static COMP cadd(COMP a, COMP b)
-{
-    COMP res;
-
-    res.real = a.real + b.real;
-    res.imag = a.imag + b.imag;
-
-    return res;
-}
-
-static COMP cmult(COMP a, COMP b)
-{
-    COMP res;
-
-    res.real = a.real*b.real - a.imag*b.imag;
-    res.imag = a.real*b.imag + a.imag*b.real;
-
-    return res;
-}
-
-static int vq_phase(COMP cb[], COMP vec[], float weights[], int d, int e, 
float *se)
-{
-   float   error;      /* current error                */
-   int     besti;      /* best index so far            */
-   float   best_error; /* best error so far            */
-   int    i,j;
-   int     ignore;
-   COMP    diffr;
-   float   diffp, metric, best_metric;
-
-   besti = 0;
-   best_metric = best_error = 1E32;
-   for(j=0; j<e; j++) {
-       error = 0.0;
-       metric = 0.0;
-       for(i=0; i<d; i++) {
-           ignore = (vec[i].real == 0.0) && (vec[i].imag == 0.0);
-           if (!ignore) {
-               diffr = cmult(cb[j*d+i], cconj(vec[i]));
-               diffp = atan2(diffr.imag, diffr.real);
-               error  += diffp*diffp;
-               metric += weights[i]*weights[i]*diffp*diffp;
-               //metric += weights[i]*diffp*diffp;
-               //metric = log10(weights[i]*fabs(diffp));
-               //printf("diffp %f metric %f\n", diffp, metric);
-               //if (metric < log10(PI/(8.0*sqrt(3.0))))
-               //   metric = log10(PI/(8.0*sqrt(3.0)));
-           }
-       }
-       if (metric < best_metric) {
-           best_metric = metric;
-           best_error = error;
-           besti = j;
-       }
-   }
-
-   *se += best_error;
-
-   return(besti);
-}
-
-
-static float refine_Wo(struct PEXP     *pexp,
-                      MODEL           *model,
-                      int              start,
-                      int              end)
-
-{
-    int i;
-    float Wo_est, best_var, Wo, var, pred, error, best_Wo;
-
-    /* test variance over a range of Wo values */
-
-    Wo_est = (model->Wo + pexp->Wo_prev)/2.0;
-    best_var = 1E32;
-    for(Wo=0.97*Wo_est; Wo<=1.03*Wo_est; Wo+=0.001*Wo_est) {
-
-       /* predict phase and sum differences between harmonics */
-
-       var = 0.0;
-       for(i=start; i<=end; i++) {
-           pred = pexp->phi_prev[i] + N*i*Wo;
-           error = pred - model->phi[i];
-           error = atan2(sin(error),cos(error));
-           var += error*error;
-       }
-
-       if (var < best_var) {
-           best_var = var;
-           best_Wo = Wo;
-       }
-    }
-
-    return best_Wo;
-}
-
-
-static void split_vq(COMP sparse_pe_out[], struct PEXP *pexp, struct codebook 
*vq, float weights[], COMP sparse_pe_in[])
-{
-    int i, j, non_zero, vq_ind;
-
-    //printf("\n offset %d k %d m %d  j: ", vq->offset, vq->k, vq->m);
-    vq_ind = vq_phase(vq->cb, &sparse_pe_in[vq->offset], &weights[vq->offset], 
vq->k, vq->m, &pexp->vq_var);
-
-    non_zero = 0;
-    for(i=0, j=vq->offset; i<vq->k; i++,j++) {
-       //printf("%f ", atan2(sparse_pe[i].imag, sparse_pe[i].real));
-       if ((sparse_pe_in[j].real != 0.0) && (sparse_pe_in[j].imag != 0.0)) {
-           //printf("%d ", j);
-           sparse_pe_out[j] = vq->cb[vq->k * vq_ind + i];
-           non_zero++;
-       }
-    }
-    pexp->vq_var_n += non_zero;
-}
-
-
-static void sparse_vq_pred_error(struct PEXP     *pexp,
-                                MODEL           *model
-)
-{
-    int              i, index;
-    float            pred, error, error_q_angle, best_Wo;
-    COMP             sparse_pe_in[MAX_AMP], sparse_pe_out[MAX_AMP];
-    float            weights[MAX_AMP];
-    COMP             error_q_rect;
-
-     best_Wo = refine_Wo(pexp, model, 1, model->L);
-    //best_Wo = (model->Wo + pexp->Wo_prev)/2.0;
-
-     /* transform to sparse pred error vector */
-
-    for(i=0; i<MAX_AMP; i++) {
-       sparse_pe_in[i].real = 0.0;
-       sparse_pe_in[i].imag = 0.0;
-       sparse_pe_out[i].real = 0.0;
-       sparse_pe_out[i].imag = 0.0;
-    }
-
-    //printf("\n");
-    for(i=1; i<=model->L; i++) {
-       pred = pexp->phi_prev[i] + N*i*best_Wo;
-       error = pred - model->phi[i];
-
-       index = MAX_AMP*i*model->Wo/PI;
-       assert(index < MAX_AMP);
-       sparse_pe_in[index].real = cos(error);
-       sparse_pe_in[index].imag = sin(error);
-       sparse_pe_out[index] = sparse_pe_in[index];
-       weights[index] = model->A[i];
-       //printf("%d ", index);
-    }
-
-    /* vector quantise */
-
-    split_vq(sparse_pe_out, pexp, pexp->vq1, weights, sparse_pe_in);
-    split_vq(sparse_pe_out, pexp, pexp->vq2, weights, sparse_pe_in);
-    split_vq(sparse_pe_out, pexp, pexp->vq3, weights, sparse_pe_in);
-    split_vq(sparse_pe_out, pexp, pexp->vq4, weights, sparse_pe_in);
-    split_vq(sparse_pe_out, pexp, pexp->vq5, weights, sparse_pe_in);
-
-    /* transform quantised phases back */
-
-    for(i=1; i<=model->L; i++) {
-       pred = pexp->phi_prev[i] + N*i*best_Wo;
-
-       index = MAX_AMP*i*model->Wo/PI;
-       assert(index < MAX_AMP);
-       error_q_rect  = sparse_pe_out[index];
-       error_q_angle = atan2(error_q_rect.imag, error_q_rect.real);
-       model->phi[i] = pred - error_q_angle;
-       model->phi[i] = atan2(sin(model->phi[i]), cos(model->phi[i]));
-    }
-}
-
-
-static void predict_phases1(struct PEXP *pexp, MODEL *model, int start, int 
end) {
-    int i;
-    float best_Wo;
-
-    best_Wo = refine_Wo(pexp, model, 1, model->L);
-
-    for(i=start; i<=end; i++) {
-       model->phi[i] = pexp->phi_prev[i] + N*i*best_Wo;
-    }
-}
-
-
-/*
-  This functions tests theory that some bands can be combined together
-  due to less frequency resolution at higher frequencies.  This will
-  reduce the amount of information we need to encode.
-*/
-
-void smooth_phase(struct PEXP *pexp, MODEL *model, int mode)
-{
-    int    m, i, j, index, step, v, en, nav, st;
-    COMP   sparse_pe_in[MAX_AMP], av;
-    COMP   sparse_pe_out[MAX_AMP];
-    COMP   smoothed[MAX_AMP];
-    float  best_Wo, pred, err;
-    float  weights[MAX_AMP];
-    float  avw, smoothed_weights[MAX_AMP];
-    COMP   smoothed_in[MAX_AMP], smoothed_out[MAX_AMP];
-
-    best_Wo = refine_Wo(pexp, model, 1, model->L);
-
-    for(m=0; m<MAX_AMP; m++) {
-       sparse_pe_in[m].real = sparse_pe_in[m].imag = 0.0;
-       sparse_pe_out[m].real = sparse_pe_out[m].imag = 0.0;
-    }
-
-    /* set up sparse array */
-
-    for(m=1; m<=model->L; m++) {
-       pred = pexp->phi_prev[m] + N*m*best_Wo;
-       err = model->phi[m] - pred;
-       err = atan2(sin(err),cos(err));
-
-       index = MAX_AMP*m*model->Wo/PI;
-       assert(index < MAX_AMP);
-       sparse_pe_in[index].real = model->A[m]*cos(err);
-       sparse_pe_in[index].imag = model->A[m]*sin(err);
-       sparse_pe_out[index] = sparse_pe_in[index];
-       weights[index] = model->A[m];
-    }
-
-    /* now combine samples at high frequencies to reduce dimension */
-
-    step = 2;
-    st = 0;
-    for(i=st,v=0; i<MAX_AMP; i+=step,v++) {
-
-       /* average over one band */
-
-       av.real = 0.0; av.imag = 0.0; avw = 0.0; nav = 0;
-       en = i+step;
-       if (en > (MAX_AMP-1))
-           en = MAX_AMP-1;
-       for(j=i; j<en; j++) {
-           if ((sparse_pe_in[j].real != 0.0) &&(sparse_pe_in[j].imag != 0.0) ) 
{
-               av = cadd(av, sparse_pe_in[j]);
-               avw += weights[j];
-               nav++;
-           }
-       }
-       if (nav) {
-           smoothed[v] = av;
-           smoothed_weights[v] = avw/nav;
-       }
-       else
-           smoothed[v].real = smoothed[v].imag = 0.0;
-    }
-
-    if (mode == 2) {
-       for(i=0; i<MAX_AMP; i++) {
-           smoothed_in[i] = smoothed[i];
-           smoothed_out[i] = smoothed_in[i];
-       }
-       split_vq(smoothed_out, pexp, pexp->vq1, smoothed_weights, smoothed_in);
-       for(i=0; i<MAX_AMP; i++)
-           smoothed[i] = smoothed_out[i];
-    }
-
-    /* set all samples to smoothed average */
-
-    for(i=st,v=0; i<MAX_AMP; i+=step,v++) {
-       en = i+step;
-       if (en > (MAX_AMP-1))
-           en = MAX_AMP-1;
-       for(j=i; j<en; j++)
-           sparse_pe_out[j] = smoothed[v];
-       if (mode == 1)
-           printf("%f ", atan2(smoothed[v].imag, smoothed[v].real));
-    }
-    if (mode == 1)
-       printf("\n");
-
-    /* convert back to Am */
-
-    for(m=1; m<=model->L; m++) {
-       index = MAX_AMP*m*model->Wo/PI;
-       assert(index < MAX_AMP);
-       pred = pexp->phi_prev[m] + N*m*best_Wo;
-       err = atan2(sparse_pe_out[index].imag, sparse_pe_out[index].real);
-       model->phi[m] = pred + err;
-    }
-
-}
-
-/*
-  Another version of a functions that tests the theory that some bands
-  can be combined together due to less frequency resolution at higher
-  frequencies.  This will reduce the amount of information we need to
-  encode.
-*/
-
-void smooth_phase2(struct PEXP *pexp, MODEL *model) {
-    float m;
-    float step;
-    int   a,b,h,i;
-    float best_Wo, pred, err, s,c, phi1_;
-
-    best_Wo = refine_Wo(pexp, model, 1, model->L);
-
-    step = (float)model->L/30;
-    printf("\nL: %d step: %3.2f am,bm: ", model->L, step);
-    for(m=(float)model->L/4; m<=model->L; m+=step) {
-       a = floor(m);
-       b = floor(m+step);
-       if (b > model->L) b = model->L;
-       h = b-a;
-
-       printf("%d,%d,(%d)  ", a, b, h);
-       c = s = 0.0;
-       if (h>1) {
-           for(i=a; i<b; i++) {
-               pred = pexp->phi_prev[i] + N*i*best_Wo;
-               err = model->phi[i] - pred;
-               c += cos(err); s += sin(err);
-           }
-           phi1_ = atan2(s,c);
-           for(i=a; i<b; i++) {
-               pred = pexp->phi_prev[i] + N*i*best_Wo;
-               printf("%d: %4.3f -> ", i, model->phi[i]);
-               model->phi[i] = pred + phi1_;
-               model->phi[i] = atan2(sin(model->phi[i]),cos(model->phi[i]));
-               printf("%4.3f  ", model->phi[i]);
-           }
-       }
-    }
-}
-
-
-#define MAX_BINS 40
-//static float bins[] = {2600.0, 2800.0, 3000.0, 3200.0, 3400.0, 3600.0, 
3800.0, 4000.0};
-static float bins[] = {/*
-
-                       1000.0, 1100.0, 1200.0, 1300.0, 1400.0,
-                      1500.0, 1600.0, 1700.0, 1800.0, 1900.0,*/
-
-    2000.0, 2400.0, 2800.0,
-    3000.0, 3400.0, 3600.0, 4000.0};
-
-void smooth_phase3(struct PEXP *pexp, MODEL *model) {
-    int    m, i;
-    int   nbins;
-    int   b;
-    float f, best_Wo, pred, err;
-    COMP  av[MAX_BINS];
-
-    nbins = sizeof(bins)/sizeof(float);
-    best_Wo = refine_Wo(pexp, model, 1, model->L);
-
-    /* clear all bins */
-
-    for(i=0; i<MAX_BINS; i++) {
-       av[i].real = 0.0;
-       av[i].imag = 0.0;
-    }
-
-    /* add phases into each bin */
-
-    for(m=1; m<=model->L; m++) {
-       f = m*model->Wo*FS/TWO_PI;
-       if (f > bins[0]) {
-
-           /* find bin  */
-
-           for(i=0; i<nbins; i++)
-               if ((f > bins[i]) && (f <= bins[i+1]))
-                   b = i;
-           assert(b < MAX_BINS);
-
-           /* est predicted phase from average */
-
-           pred = pexp->phi_prev[m] + N*m*best_Wo;
-           err = model->phi[m] - pred;
-           av[b].real += cos(err); av[b].imag += sin(err);
-       }
-
-    }
-
-    /* use averages to est phases */
-
-    for(m=1; m<=model->L; m++) {
-       f = m*model->Wo*FS/TWO_PI;
-       if (f > bins[0]) {
-
-           /* find bin */
-
-           for(i=0; i<nbins; i++)
-               if ((f > bins[i]) && (f <= bins[i+1]))
-                   b = i;
-           assert(b < MAX_BINS);
-
-           /* add predicted phase error to this bin */
-
-           printf("L %d m %d f %4.f b %d\n", model->L, m, f, b);
-
-           pred = pexp->phi_prev[m] + N*m*best_Wo;
-           err = atan2(av[b].imag, av[b].real);
-           printf(" %d: %4.3f -> ", m, model->phi[m]);
-           model->phi[m] = pred + err;
-           model->phi[m] = atan2(sin(model->phi[m]),cos(model->phi[m]));
-           printf("%4.3f\n", model->phi[m]);
-       }
-    }
-    printf("\n");
-}
-
-
-/*
-   Try to code the phase of the largest amplitude in each band.  Randomise the
-   phase of the other harmonics. The theory is that only the largest harmonic
-   will be audible.
-*/
-
-void cb_phase1(struct PEXP *pexp, MODEL *model) {
-    int   m, i;
-    int   nbins;
-    int   b;
-    float f, best_Wo;
-    float max_val[MAX_BINS];
-    int   max_ind[MAX_BINS];
-
-    nbins = sizeof(bins)/sizeof(float);
-    best_Wo = refine_Wo(pexp, model, 1, model->L);
-
-    for(i=0; i<nbins; i++)
-       max_val[i] = 0.0;
-
-    /* determine max amplitude for each bin */
-
-    for(m=1; m<=model->L; m++) {
-       f = m*model->Wo*FS/TWO_PI;
-       if (f > bins[0]) {
-
-           /* find bin  */
-
-           for(i=0; i<nbins; i++)
-               if ((f > bins[i]) && (f <= bins[i+1]))
-                   b = i;
-           assert(b < MAX_BINS);
-
-           if (model->A[m] > max_val[b]) {
-               max_val[b] = model->A[m];
-               max_ind[b] = m;
-           }
-       }
-
-    }
-
-    /* randomise phase of other harmonics */
-
-    for(m=1; m<=model->L; m++) {
-       f = m*model->Wo*FS/TWO_PI;
-       if (f > bins[0]) {
-
-           /* find bin */
-
-           for(i=0; i<nbins; i++)
-               if ((f > bins[i]) && (f <= bins[i+1]))
-                   b = i;
-           assert(b < MAX_BINS);
-
-           if (m != max_ind[b])
-               model->phi[m] = pexp->phi_prev[m] + N*m*best_Wo;
-       }
-    }
-}
-
-
-/*
-   Theory is only the phase of the envelope of signal matters within a
-   Critical Band. So we estimate the position of an impulse that
-   approximates the envelope of the signal.
-*/
-
-void cb_phase2(struct PEXP *pexp, MODEL *model) {
-    int   st, m, i, a, b, step;
-    float diff,w,c,s,phi1_;
-    float A[MAX_AMP];
-
-    for(m=1; m<=model->L; m++) {
-       A[m] = model->A[m];
-       model->A[m] = 0;
-    }
-
-    st = 2*model->L/4;
-    step = 3;
-    model->phi[1] = pexp->phi_prev[1] + (pexp->Wo_prev+model->Wo)*N/2.0;
-
-    printf("L=%d ", model->L);
-    for(m=st; m<st+step*2; m+=step) {
-       a = m; b=a+step;
-       if (b > model->L)
-           b = model->L;
-
-       c = s = 0;
-       for(i=a; i<b-1; i++) {
-           printf("diff %d,%d ", i, i+1);
-           diff = model->phi[i+1] - model->phi[i];
-           //w = (model->A[i+1] + model->A[i])/2;
-           w = 1.0;
-           c += w*cos(diff); s += w*sin(diff);
-       }
-       phi1_ = atan2(s,c);
-       printf("replacing: ");
-       for(i=a; i<b; i++) {
-           //model->phi[i] = i*phi1_;
-           //model->phi[i] = i*model->phi[1];
-           //model->phi[i] = m*(pexp->Wo_prev+model->Wo)*N/2.0;
-           model->A[m] = A[m];
-           printf("%d ", i);
-       }
-       printf(" . ");
-    }
-    printf("\n");
-}
-
-
-static void smooth_phase4(MODEL *model) {
-    int    m;
-    float  phi_m, phi_m_1;
-
-    if (model->L > 25) {
-       printf("\nL %d\n", model->L);
-       for(m=model->L/2; m<=model->L; m+=2) {
-           if ((m+1) <= model->L) {
-               phi_m   = (model->phi[m] - model->phi[m+1])/2.0;
-               phi_m_1 = (model->phi[m+1] - model->phi[m])/2.0;
-               model->phi[m] = phi_m;
-               model->phi[m+1] = phi_m_1;
-               printf("%d %4.3f %4.3f  ", m, phi_m, phi_m_1);
-           }
-       }
-    }
-
-}
-
-/* try repeating last frame, just advance phases to account for time shift */
-
-static void repeat_phases(struct PEXP *pexp, MODEL *model) {
-    int m;
-
-    *model = pexp->prev_model;
-    for(m=1; m<=model->L; m++)
-       model->phi[m] += N*m*model->Wo;
-
-}
-
-/*---------------------------------------------------------------------------*\
-
-  phase_experiment()
-
-  Phase quantisation experiments.
-
-\*---------------------------------------------------------------------------*/
-
-void phase_experiment(struct PEXP *pexp, MODEL *model, char *arg) {
-    int              m;
-    float            before[MAX_AMP];
-
-    assert(pexp != NULL);
-    memcpy(before, &model->phi[0], sizeof(float)*MAX_AMP);
-
-    if (strcmp(arg,"q3") == 0) {
-       quant_phases(model, 1, model->L, 3);
-       update_snr_calc(pexp, model, before);
-       update_variance_calc(pexp, model, before);
-    }
-
-    if (strcmp(arg,"dec2") == 0) {
-       if ((pexp->frames % 2) != 0) {
-           predict_phases(pexp, model, 1, model->L);
-           update_snr_calc(pexp, model, before);
-           update_variance_calc(pexp, model, before);
-       }
-    }
-
-    if (strcmp(arg,"repeat") == 0) {
-       if ((pexp->frames % 2) != 0) {
-           repeat_phases(pexp, model);
-           update_snr_calc(pexp, model, before);
-           update_variance_calc(pexp, model, before);
-       }
-    }
-
-    if (strcmp(arg,"vq") == 0) {
-       sparse_vq_pred_error(pexp, model);
-       update_snr_calc(pexp, model, before);
-       update_variance_calc(pexp, model, before);
-    }
-
-    if (strcmp(arg,"pred") == 0)
-       predict_phases_state(pexp, model, 1, model->L);
-
-    if (strcmp(arg,"pred1k") == 0)
-       predict_phases(pexp, model, 1, model->L/4);
-
-    if (strcmp(arg,"smooth") == 0) {
-       smooth_phase(pexp, model,0);
-       update_snr_calc(pexp, model, before);
-    }
-    if (strcmp(arg,"smoothtrain") == 0)
-       smooth_phase(pexp, model,1);
-    if (strcmp(arg,"smoothvq") == 0) {
-       smooth_phase(pexp, model,2);
-       update_snr_calc(pexp, model, before);
-    }
-
-    if (strcmp(arg,"smooth2") == 0)
-       smooth_phase2(pexp, model);
-    if (strcmp(arg,"smooth3") == 0)
-       smooth_phase3(pexp, model);
-    if (strcmp(arg,"smooth4") == 0)
-       smooth_phase4(model);
-    if (strcmp(arg,"vqsmooth3") == 0)  {
-       sparse_vq_pred_error(pexp, model);
-       smooth_phase3(pexp, model);
-    }
-
-    if (strcmp(arg,"cb1") == 0) {
-       cb_phase1(pexp, model);
-       update_snr_calc(pexp, model, before);
-    }
-
-    if (strcmp(arg,"top") == 0) {
-       //top_amp(pexp, model, 1, model->L/4, 4, 1);
-       //top_amp(pexp, model, model->L/4, model->L/3, 4, 1);
-       //top_amp(pexp, model, model->L/3+1, model->L/2, 4, 1);
-       //top_amp(pexp, model, model->L/2, model->L, 6, 1);
-        //rand_phases(model, model->L/2, 3*model->L/4);
-       //struct_phases(pexp, model, model->L/2, 3*model->L/4);
-       //update_snr_calc(pexp, model, before);
-    }
-
-    if (strcmp(arg,"pred23") == 0) {
-       predict_phases2(pexp, model, model->L/2, model->L);
-       update_snr_calc(pexp, model, before);
-    }
-
-    if (strcmp(arg,"struct23") == 0) {
-       struct_phases(pexp, model, model->L/2, 3*model->L/4 );
-       update_snr_calc(pexp, model, before);
-    }
-
-    if (strcmp(arg,"addnoise") == 0) {
-       int m;
-       float max;
-
-       max = 0;
-       for(m=1; m<=model->L; m++)
-           if (model->A[m] > max)
-               max = model->A[m];
-       max = 20.0*log10(max);
-       for(m=1; m<=model->L; m++)
-           if (20.0*log10(model->A[m]) < (max-20)) {
-               model->phi[m] += (PI/4)*(1.0 -2.0*rand()/RAND_MAX);
-               //printf("m %d\n", m);
-           }
-    }
-
-    /* normalise phases */
-
-    for(m=1; m<=model->L; m++)
-       model->phi[m] = atan2(sin(model->phi[m]), cos(model->phi[m]));
-
-    /* update states */
-
-    //best_Wo = refine_Wo(pexp, model,  model->L/2, model->L);
-    pexp->phi1 += N*model->Wo;
-
-    for(m=1; m<=model->L; m++)
-       pexp->phi_prev[m] = model->phi[m];
-    pexp->Wo_prev = model->Wo;
-    pexp->frames++;
-    pexp->prev_model = *model;
-}
-
-#ifdef OLD_STUFF
-    //quant_phases(model, 1, model->L, 3);
-    //update_variance_calc(pexp, model, before);
-    //print_sparse_pred_error(pexp, model, 1, model->L, 40.0);
-
-    //sparse_vq_pred_error(pexp, model);
-
-    //quant_phases(model, model->L/4+1, model->L, 3);
-
-    //predict_phases1(pexp, model, 1, model->L/4);
-    //quant_phases(model, model->L/4+1, model->L, 3);
-
-    //quant_phases(model, 1, model->L/8, 3);
-
-    //update_snr_calc(pexp, model, before);
-    //update_variance_calc(pexp, model, before);
-
-    //fixed_bits_per_frame(pexp, model, 40);
-    //struct_phases(pexp, model, 1, model->L/4);
-    //rand_phases(model, 10, model->L);
-    //for(m=1; m<=model->L; m++)
-    // model->A[m] = 0.0;
-    //model->A[model->L/2] = 1000;
-    //repeat_phases(model, 20);
-    //predict_phases(pexp, model, 1, model->L/4);
-    //quant_phases(model, 1, 10, 3);
-    //quant_phases(model, 10, 20, 2);
-    //repeat_phases(model, 20);
-    //rand_phases(model, 3*model->L/4, model->L);
-    // print_phi1_pred_error(model, 1, model->L);
-    //predict_phases(pexp, model, 1, model->L/4);
-    //first_order_band(model, model->L/4, model->L/2);
-    //first_order_band(model, model->L/2, 3*model->L/4);
-    //if (fabs(model->Wo - pexp->Wo_prev)< 0.1*model->Wo)
-
-    //print_pred_error(pexp, model, 1, model->L, 40.0);
-    //print_sparse_pred_error(pexp, model, 1, model->L, 40.0);
-
-    //phi1_est = est_phi1(model, 1, model->L/4);
-    //print_phi1_pred_error(model, 1, model->L/4);
-
-    //first_order_band(model, 1, model->L/4, phi1_est);
-    //sub_linear(model, 1, model->L/4, phi1_est);
-
-    //top_amp(pexp, model, 1, model->L/4, 4);
-    //top_amp(pexp, model, model->L/4, model->L/2, 4);
-
-    //first_order_band(model, 1, model->L/4, phi1_est);
-    //first_order_band(model, model->L/4, model->L/2, phi1_est);
-
-    //if (fabs(model->Wo - pexp->Wo_prev) > 0.2*model->Wo)
-    // rand_phases(model, model->L/2, model->L);
-
-    //top_amp(pexp, model, 1, model->L/4, 4);
-    //top_amp(pexp, model, model->L/4, model->L/2, 8);
-    //top_amp(pexp, model, model->L/4+1, model->L/2, 10, 1);
-    //top_amp(pexp, model, 1, model->L/4, 10, 1);
-    //top_amp(pexp, model, model->L/4+1, 3*model->L/4, 10, 1);
-    //top_amp(pexp, model, 1, 3*model->L/4, 20, 1);
-
-    #ifdef REAS_CAND1
-    predict_phases(pexp, model, 1, model->L/4);
-    top_amp(pexp, model, model->L/4+1, 3*model->L/4, 10, 1);
-    rand_phases(model, 3*model->L/4+1, model->L);
-    #endif
-
-    #ifdef REAS_CAND2
-    if ((pexp->frames % 2) == 0) {
-       //printf("quant\n");
-       predict_phases(pexp, model, 1, model->L/4);
-       //top_amp(pexp, model, model->L/4+1, 3*model->L/4, 20, 1);
-       top_amp(pexp, model,  model->L/4+1, 7*model->L/8, 20, 1);
-       rand_phases(model, 7*model->L/8+1, model->L);
-     }
-    else {
-       //printf("predict\n");
-       predict_phases(pexp, model, 1, model->L);
-    }
-    #endif
-
-    //#define REAS_CAND3
-    #ifdef REAS_CAND3
-    if ((pexp->frames % 3) != 0) {
-       printf("pred\n");
-       predict_phases(pexp, model, 1, model->L);
-    }
-    else {
-       predict_phases(pexp, model, 1, model->L/4);
-       fixed_bits_per_frame(pexp, model, model->L/4+1, 60);
-    }
-    #endif
-    //predict_phases(pexp, model, model->L/4, model->L);
-
-
-    //print_pred_error(pexp, model, 1, model->L);
-    //limit_prediction_error(pexp, model, model->L/2, model->L, PI/2);
-#endif
diff --git a/gr-vocoder/lib/codec2/phaseexp.h b/gr-vocoder/lib/codec2/phaseexp.h
deleted file mode 100644
index 865e8ae..0000000
--- a/gr-vocoder/lib/codec2/phaseexp.h
+++ /dev/null
@@ -1,39 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: phaseexp.h
-  AUTHOR......: David Rowe
-  DATE CREATED: June 2012
-
-  Experimental functions for quantising, modelling and synthesising phase.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2012 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#ifndef __PHASEEXP__
-#define __PHASEEXP__
-
-#include "kiss_fft.h"
-
-struct PEXP;
-
-struct PEXP * phase_experiment_create();
-void phase_experiment_destroy(struct PEXP *pexp);
-void phase_experiment(struct PEXP *pexp, MODEL *model, char *arg);
-
-#endif
diff --git a/gr-vocoder/lib/codec2/pilot_coeff.h 
b/gr-vocoder/lib/codec2/pilot_coeff.h
deleted file mode 100644
index 66e7501..0000000
--- a/gr-vocoder/lib/codec2/pilot_coeff.h
+++ /dev/null
@@ -1,34 +0,0 @@
-/* Generated by pilot_coeff_file() Octave function */
-
-const float pilot_coeff[]={
-  0.00204705,
-  0.00276339,
-  0.00432595,
-  0.00697042,
-  0.0108452,
-  0.0159865,
-  0.0223035,
-  0.029577,
-  0.0374709,
-  0.045557,
-  0.0533491,
-  0.0603458,
-  0.0660751,
-  0.070138,
-  0.0722452,
-  0.0722452,
-  0.070138,
-  0.0660751,
-  0.0603458,
-  0.0533491,
-  0.045557,
-  0.0374709,
-  0.029577,
-  0.0223035,
-  0.0159865,
-  0.0108452,
-  0.00697042,
-  0.00432595,
-  0.00276339,
-  0.00204705
-};
diff --git a/gr-vocoder/lib/codec2/postfilter.c 
b/gr-vocoder/lib/codec2/postfilter.c
deleted file mode 100644
index 7c1a606..0000000
--- a/gr-vocoder/lib/codec2/postfilter.c
+++ /dev/null
@@ -1,142 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: postfilter.c
-  AUTHOR......: David Rowe
-  DATE CREATED: 13/09/09
-
-  Postfilter to improve sound quality for speech with high levels of
-  background noise.  Unlike mixed-excitation models requires no bits
-  to be transmitted to handle background noise.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2009 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#include <assert.h>
-#include <stdlib.h>
-#include <stdio.h>
-#include <math.h>
-
-#include "defines.h"
-#include "comp.h"
-#include "dump.h"
-#include "sine.h"
-#include "postfilter.h"
-
-/*---------------------------------------------------------------------------*\
-
-                                DEFINES
-
-\*---------------------------------------------------------------------------*/
-
-#define BG_THRESH 40.0     /* only consider low levels signals for bg_est */
-#define BG_BETA    0.1     /* averaging filter constant                   */
-#define BG_MARGIN  6.0     /* harmonics this far above BG noise are
-                             randomised.  Helped make bg noise less
-                             spikey (impulsive) for mmt1, but speech was
-                              perhaps a little rougher.
-                          */
-
-/*---------------------------------------------------------------------------*\
-
-  postfilter()
-
-  The post filter is designed to help with speech corrupted by
-  background noise.  The zero phase model tends to make speech with
-  background noise sound "clicky".  With high levels of background
-  noise the low level inter-formant parts of the spectrum will contain
-  noise rather than speech harmonics, so modelling them as voiced
-  (i.e. a continuous, non-random phase track) is inaccurate.
-
-  Some codecs (like MBE) have a mixed voicing model that breaks the
-  spectrum into voiced and unvoiced regions.  Several bits/frame
-  (5-12) are required to transmit the frequency selective voicing
-  information.  Mixed excitation also requires accurate voicing
-  estimation (parameter estimators always break occasionally under
-  exceptional conditions).
-
-  In our case we use a post filter approach which requires no
-  additional bits to be transmitted.  The decoder measures the average
-  level of the background noise during unvoiced frames.  If a harmonic
-  is less than this level it is made unvoiced by randomising it's
-  phases.
-
-  This idea is rather experimental.  Some potential problems that may
-  happen:
-
-  1/ If someone says "aaaaaaaahhhhhhhhh" will background estimator track
-     up to speech level?  This would be a bad thing.
-
-  2/ If background noise suddenly dissapears from the source speech does
-     estimate drop quickly?  What is noise suddenly re-appears?
-
-  3/ Background noise with a non-flat sepctrum.  Current algorithm just
-     comsiders scpetrum as a whole, but this could be broken up into
-     bands, each with their own estimator.
-
-  4/ Males and females with the same level of background noise.  Check
-     performance the same.  Changing Wo affects width of each band, may
-     affect bg energy estimates.
-
-  5/ Not sure what happens during long periods of voiced speech
-     e.g. "sshhhhhhh"
-
-\*---------------------------------------------------------------------------*/
-
-void postfilter(
-  MODEL *model,
-  float *bg_est
-)
-{
-  int   m, uv;
-  float e, thresh;
-
-  /* determine average energy across spectrum */
-
-  e = 1E-12;
-  for(m=1; m<=model->L; m++)
-      e += model->A[m]*model->A[m];
-
-  assert(e > 0.0);
-  e = 10.0*log10f(e/model->L);
-
-  /* If beneath threhold, update bg estimate.  The idea
-     of the threshold is to prevent updating during high level
-     speech. */
-
-  if ((e < BG_THRESH) && !model->voiced)
-      *bg_est =  *bg_est*(1.0 - BG_BETA) + e*BG_BETA;
-
-  /* now mess with phases during voiced frames to make any harmonics
-     less then our background estimate unvoiced.
-  */
-
-  uv = 0;
-  thresh = powf(10.0, (*bg_est + BG_MARGIN)/20.0);
-  if (model->voiced)
-      for(m=1; m<=model->L; m++)
-         if (model->A[m] < thresh) {
-             model->phi[m] = TWO_PI*(float)codec2_rand()/CODEC2_RAND_MAX;
-             uv++;
-         }
-
-#ifdef DUMP
-  dump_bg(e, *bg_est, 100.0*uv/model->L);
-#endif
-
-}
diff --git a/gr-vocoder/lib/codec2/postfilter.h 
b/gr-vocoder/lib/codec2/postfilter.h
deleted file mode 100644
index 156714e..0000000
--- a/gr-vocoder/lib/codec2/postfilter.h
+++ /dev/null
@@ -1,33 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: postfilter.h
-  AUTHOR......: David Rowe
-  DATE CREATED: 13/09/09
-
-  Postfilter header file.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2009 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#ifndef __POSTFILTER__
-#define __POSTFILTER__
-
-void postfilter(MODEL *model, float *bg_est);
-
-#endif
diff --git a/gr-vocoder/lib/codec2/quantise.c b/gr-vocoder/lib/codec2/quantise.c
deleted file mode 100644
index f7326c4..0000000
--- a/gr-vocoder/lib/codec2/quantise.c
+++ /dev/null
@@ -1,1970 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: quantise.c
-  AUTHOR......: David Rowe
-  DATE CREATED: 31/5/92
-
-  Quantisation functions for the sinusoidal coder.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-
-*/
-
-#include <assert.h>
-#include <ctype.h>
-#include <stdio.h>
-#include <stdlib.h>
-#include <string.h>
-#include <math.h>
-
-#include "defines.h"
-#include "dump.h"
-#include "quantise.h"
-#include "lpc.h"
-#include "lsp.h"
-#include "kiss_fft.h"
-#undef TIMER
-#include "machdep.h"
-
-#define LSP_DELTA1 0.01         /* grid spacing for LSP root searches */
-
-/*---------------------------------------------------------------------------*\
-
-                          FUNCTION HEADERS
-
-\*---------------------------------------------------------------------------*/
-
-float speech_to_uq_lsps(float lsp[], float ak[], float Sn[], float w[],
-                       int order);
-
-/*---------------------------------------------------------------------------*\
-
-                             FUNCTIONS
-
-\*---------------------------------------------------------------------------*/
-
-int lsp_bits(int i) {
-    return lsp_cb[i].log2m;
-}
-
-int lspd_bits(int i) {
-    return lsp_cbd[i].log2m;
-}
-
-#ifdef __EXPERIMENTAL__
-int lspdt_bits(int i) {
-    return lsp_cbdt[i].log2m;
-}
-#endif
-
-int lsp_pred_vq_bits(int i) {
-    return lsp_cbjvm[i].log2m;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  quantise_init
-
-  Loads the entire LSP quantiser comprised of several vector quantisers
-  (codebooks).
-
-\*---------------------------------------------------------------------------*/
-
-void quantise_init()
-{
-}
-
-/*---------------------------------------------------------------------------*\
-
-  quantise
-
-  Quantises vec by choosing the nearest vector in codebook cb, and
-  returns the vector index.  The squared error of the quantised vector
-  is added to se.
-
-\*---------------------------------------------------------------------------*/
-
-long quantise(const float * cb, float vec[], float w[], int k, int m, float 
*se)
-/* float   cb[][K];    current VQ codebook             */
-/* float   vec[];      vector to quantise              */
-/* float   w[];         weighting vector                */
-/* int    k;           dimension of vectors            */
-/* int     m;          size of codebook                */
-/* float   *se;                accumulated squared error       */
-{
-   float   e;          /* current error                */
-   long           besti;       /* best index so far            */
-   float   beste;      /* best error so far            */
-   long           j;
-   int     i;
-   float   diff;
-
-   besti = 0;
-   beste = 1E32;
-   for(j=0; j<m; j++) {
-       e = 0.0;
-       for(i=0; i<k; i++) {
-           diff = cb[j*k+i]-vec[i];
-           e += powf(diff*w[i],2.0);
-       }
-       if (e < beste) {
-           beste = e;
-           besti = j;
-       }
-   }
-
-   *se += beste;
-
-   return(besti);
-}
-
-/*---------------------------------------------------------------------------*\
-
-  encode_lspds_scalar()
-
-  Scalar/VQ LSP difference quantiser.
-
-\*---------------------------------------------------------------------------*/
-
-void encode_lspds_scalar(
-                int   indexes[],
-                float lsp[],
-                int   order
-)
-{
-    int   i,k,m;
-    float lsp_hz[LPC_MAX];
-    float lsp__hz[LPC_MAX];
-    float dlsp[LPC_MAX];
-    float dlsp_[LPC_MAX];
-    float wt[LPC_MAX];
-    const float *cb;
-    float se = 0.0f;
-
-    assert(order == LPC_ORD);
-
-    for(i=0; i<order; i++) {
-       wt[i] = 1.0;
-    }
-
-    /* convert from radians to Hz so we can use human readable
-       frequencies */
-
-    for(i=0; i<order; i++)
-       lsp_hz[i] = (4000.0/PI)*lsp[i];
-
-    //printf("\n");
-
-    wt[0] = 1.0;
-    for(i=0; i<order; i++) {
-
-       /* find difference from previous qunatised lsp */
-
-       if (i)
-           dlsp[i] = lsp_hz[i] - lsp__hz[i-1];
-       else
-           dlsp[0] = lsp_hz[0];
-
-       k = lsp_cbd[i].k;
-       m = lsp_cbd[i].m;
-       cb = lsp_cbd[i].cb;
-       indexes[i] = quantise(cb, &dlsp[i], wt, k, m, &se);
-       dlsp_[i] = cb[indexes[i]*k];
-
-
-       if (i)
-           lsp__hz[i] = lsp__hz[i-1] + dlsp_[i];
-       else
-           lsp__hz[0] = dlsp_[0];
-
-       //printf("%d lsp %3.2f dlsp %3.2f dlsp_ %3.2f lsp_ %3.2f\n", i, 
lsp_hz[i], dlsp[i], dlsp_[i], lsp__hz[i]);
-    }
-
-}
-
-void decode_lspds_scalar(
-                float lsp_[],
-                int   indexes[],
-                int   order
-)
-{
-    int   i,k;
-    float lsp__hz[LPC_MAX];
-    float dlsp_[LPC_MAX];
-    const float *cb;
-
-    assert(order == LPC_ORD);
-
-     for(i=0; i<order; i++) {
-
-       k = lsp_cbd[i].k;
-       cb = lsp_cbd[i].cb;
-       dlsp_[i] = cb[indexes[i]*k];
-
-       if (i)
-           lsp__hz[i] = lsp__hz[i-1] + dlsp_[i];
-       else
-           lsp__hz[0] = dlsp_[0];
-
-       lsp_[i] = (PI/4000.0)*lsp__hz[i];
-
-       //printf("%d dlsp_ %3.2f lsp_ %3.2f\n", i, dlsp_[i], lsp__hz[i]);
-    }
-
-}
-
-#ifdef __EXPERIMENTAL__
-/*---------------------------------------------------------------------------*\
-
-  lspvq_quantise
-
-  Vector LSP quantiser.
-
-\*---------------------------------------------------------------------------*/
-
-void lspvq_quantise(
-  float lsp[],
-  float lsp_[],
-  int   order
-)
-{
-    int   i,k,m,ncb, nlsp;
-    float  wt[LPC_ORD], lsp_hz[LPC_ORD];
-    const float *cb;
-    float se = 0.0f;
-    int   index;
-
-    for(i=0; i<LPC_ORD; i++) {
-       wt[i] = 1.0;
-       lsp_hz[i] = 4000.0*lsp[i]/PI;
-    }
-
-    /* scalar quantise LSPs 1,2,3,4 */
-
-    /* simple uniform scalar quantisers */
-
-   for(i=0; i<4; i++) {
-       k = lsp_cb[i].k;
-       m = lsp_cb[i].m;
-       cb = lsp_cb[i].cb;
-       index = quantise(cb, &lsp_hz[i], wt, k, m, &se);
-       lsp_[i] = cb[index*k]*PI/4000.0;
-    }
-
-   //#define WGHT
-#ifdef WGHT
-    for(i=4; i<9; i++) {
-       wt[i] = 1.0/(lsp[i]-lsp[i-1]) + 1.0/(lsp[i+1]-lsp[i]);
-       //printf("wt[%d] = %f\n", i, wt[i]);
-    }
-    wt[9] = 1.0/(lsp[i]-lsp[i-1]);
-#endif
-
-    /* VQ LSPs 5,6,7,8,9,10 */
-
-    ncb = 4;
-    nlsp = 4;
-    k = lsp_cbjnd[ncb].k;
-    m = lsp_cbjnd[ncb].m;
-    cb = lsp_cbjnd[ncb].cb;
-    index = quantise(cb, &lsp_hz[nlsp], &wt[nlsp], k, m, &se);
-    for(i=4; i<LPC_ORD; i++) {
-       lsp_[i] = cb[index*k+i-4]*(PI/4000.0);
-       //printf("%4.f (%4.f) ", lsp_hz[i], cb[index*k+i-4]);
-    }
-}
-
-/*---------------------------------------------------------------------------*\
-
-  lspjnd_quantise
-
-  Experimental JND LSP quantiser.
-
-\*---------------------------------------------------------------------------*/
-
-void lspjnd_quantise(float lsps[], float lsps_[], int order)
-{
-    int   i,k,m;
-    float  wt[LPC_ORD], lsps_hz[LPC_ORD];
-    const float *cb;
-    float se = 0.0f;
-    int   index;
-
-    for(i=0; i<LPC_ORD; i++) {
-       wt[i] = 1.0;
-    }
-
-    /* convert to Hz */
-
-    for(i=0; i<LPC_ORD; i++) {
-       lsps_hz[i] = lsps[i]*(4000.0/PI);
-       lsps_[i] = lsps[i];
-    }
-
-    /* simple uniform scalar quantisers */
-
-    for(i=0; i<4; i++) {
-       k = lsp_cbjnd[i].k;
-       m = lsp_cbjnd[i].m;
-       cb = lsp_cbjnd[i].cb;
-       index = quantise(cb, &lsps_hz[i], wt, k, m, &se);
-       lsps_[i] = cb[index*k]*(PI/4000.0);
-    }
-
-    /* VQ LSPs 5,6,7,8,9,10 */
-
-    k = lsp_cbjnd[4].k;
-    m = lsp_cbjnd[4].m;
-    cb = lsp_cbjnd[4].cb;
-    index = quantise(cb, &lsps_hz[4], &wt[4], k, m, &se);
-    //printf("k = %d m = %d c[0] %f cb[k] %f\n", k,m,cb[0],cb[k]);
-    //printf("index = %4d: ", index);
-    for(i=4; i<LPC_ORD; i++) {
-       lsps_[i] = cb[index*k+i-4]*(PI/4000.0);
-       //printf("%4.f (%4.f) ", lsps_hz[i], cb[index*k+i-4]);
-    }
-    //printf("\n");
-}
-
-void compute_weights(const float *x, float *w, int ndim);
-
-/*---------------------------------------------------------------------------*\
-
-  lspdt_quantise
-
-  LSP difference in time quantiser.  Split VQ, encoding LSPs 1-4 with
-  one VQ, and LSPs 5-10 with a second.  Update of previous lsp memory
-  is done outside of this function to handle dT between 10 or 20ms
-  frames.
-
-  mode        action
-  ------------------
-
-  LSPDT_ALL   VQ LSPs 1-4 and 5-10
-  LSPDT_LOW   Just VQ LSPs 1-4, for LSPs 5-10 just copy previous
-  LSPDT_HIGH  Just VQ LSPs 5-10, for LSPs 1-4 just copy previous
-
-\*---------------------------------------------------------------------------*/
-
-void lspdt_quantise(float lsps[], float lsps_[], float lsps__prev[], int mode)
-{
-    int   i;
-    float wt[LPC_ORD];
-    float lsps_dt[LPC_ORD];
-#ifdef TRY_LSPDT_VQ
-    int k,m;
-    int   index;
-    const float *cb;
-    float se = 0.0f;
-#endif // TRY_LSPDT_VQ
-
-    //compute_weights(lsps, wt, LPC_ORD);
-    for(i=0; i<LPC_ORD; i++) {
-    wt[i] = 1.0;
-    }
-
-    //compute_weights(lsps, wt, LPC_ORD );
-
-    for(i=0; i<LPC_ORD; i++) {
-       lsps_dt[i] = lsps[i] - lsps__prev[i];
-       lsps_[i] = lsps__prev[i];
-    }
-
-    //#define TRY_LSPDT_VQ
-#ifdef TRY_LSPDT_VQ
-    /* this actually improves speech a bit, but 40ms updates works surprsingly 
well.... */
-    k = lsp_cbdt[0].k;
-    m = lsp_cbdt[0].m;
-    cb = lsp_cbdt[0].cb;
-    index = quantise(cb, lsps_dt, wt, k, m, &se);
-    for(i=0; i<LPC_ORD; i++) {
-       lsps_[i] += cb[index*k + i];
-    }
-#endif
-
-}
-#endif
-
-#define MIN(a,b) ((a)<(b)?(a):(b))
-#define MAX_ENTRIES 16384
-
-void compute_weights(const float *x, float *w, int ndim)
-{
-  int i;
-  w[0] = MIN(x[0], x[1]-x[0]);
-  for (i=1;i<ndim-1;i++)
-    w[i] = MIN(x[i]-x[i-1], x[i+1]-x[i]);
-  w[ndim-1] = MIN(x[ndim-1]-x[ndim-2], PI-x[ndim-1]);
-
-  for (i=0;i<ndim;i++)
-    w[i] = 1./(.01+w[i]);
-  //w[0]*=3;
-  //w[1]*=2;
-}
-
-/* LSP weight calculation ported from m-file function kindly submitted
-   by Anssi, OH3GDD */
-
-void compute_weights_anssi_mode2(const float *x, float *w, int ndim)
-{
-  int i;
-  float d[LPC_ORD];
-
-  assert(ndim == LPC_ORD);
-
-  for(i=0; i<LPC_ORD; i++)
-      d[i] = 1.0;
-
-  d[0] = x[1];
-  for (i=1; i<LPC_ORD-1; i++)
-      d[i] = x[i+1] - x[i-1];
-  d[LPC_ORD-1] = PI - x[8];
-  for (i=0; i<LPC_ORD; i++) {
-        if (x[i]<((400.0/4000.0)*PI))
-            w[i]=5.0/(0.01+d[i]);
-        else if (x[i]<((700.0/4000.0)*PI))
-            w[i]=4.0/(0.01+d[i]);
-        else if (x[i]<((1200.0/4000.0)*PI))
-            w[i]=3.0/(0.01+d[i]);
-        else if (x[i]<((2000.0/4000.0)*PI))
-            w[i]=2.0/(0.01+d[i]);
-        else
-            w[i]=1.0/(0.01+d[i]);
-
-        w[i]=pow(w[i]+0.3, 0.66);
-  }
-}
-
-int find_nearest(const float *codebook, int nb_entries, float *x, int ndim)
-{
-  int i, j;
-  float min_dist = 1e15;
-  int nearest = 0;
-
-  for (i=0;i<nb_entries;i++)
-  {
-    float dist=0;
-    for (j=0;j<ndim;j++)
-      dist += (x[j]-codebook[i*ndim+j])*(x[j]-codebook[i*ndim+j]);
-    if (dist<min_dist)
-    {
-      min_dist = dist;
-      nearest = i;
-    }
-  }
-  return nearest;
-}
-
-int find_nearest_weighted(const float *codebook, int nb_entries, float *x, 
const float *w, int ndim)
-{
-  int i, j;
-  float min_dist = 1e15;
-  int nearest = 0;
-
-  for (i=0;i<nb_entries;i++)
-  {
-    float dist=0;
-    for (j=0;j<ndim;j++)
-      dist += w[j]*(x[j]-codebook[i*ndim+j])*(x[j]-codebook[i*ndim+j]);
-    if (dist<min_dist)
-    {
-      min_dist = dist;
-      nearest = i;
-    }
-  }
-  return nearest;
-}
-
-void lspjvm_quantise(float *x, float *xq, int ndim)
-{
-  int i, n1, n2, n3;
-  float err[LPC_ORD], err2[LPC_ORD], err3[LPC_ORD];
-  float w[LPC_ORD], w2[LPC_ORD], w3[LPC_ORD];
-  const float *codebook1 = lsp_cbjvm[0].cb;
-  const float *codebook2 = lsp_cbjvm[1].cb;
-  const float *codebook3 = lsp_cbjvm[2].cb;
-
-  w[0] = MIN(x[0], x[1]-x[0]);
-  for (i=1;i<ndim-1;i++)
-    w[i] = MIN(x[i]-x[i-1], x[i+1]-x[i]);
-  w[ndim-1] = MIN(x[ndim-1]-x[ndim-2], PI-x[ndim-1]);
-
-  compute_weights(x, w, ndim);
-
-  n1 = find_nearest(codebook1, lsp_cbjvm[0].m, x, ndim);
-
-  for (i=0;i<ndim;i++)
-  {
-    xq[i] = codebook1[ndim*n1+i];
-    err[i] = x[i] - xq[i];
-  }
-  for (i=0;i<ndim/2;i++)
-  {
-    err2[i] = err[2*i];
-    err3[i] = err[2*i+1];
-    w2[i] = w[2*i];
-    w3[i] = w[2*i+1];
-  }
-  n2 = find_nearest_weighted(codebook2, lsp_cbjvm[1].m, err2, w2, ndim/2);
-  n3 = find_nearest_weighted(codebook3, lsp_cbjvm[2].m, err3, w3, ndim/2);
-
-  for (i=0;i<ndim/2;i++)
-  {
-    xq[2*i] += codebook2[ndim*n2/2+i];
-    xq[2*i+1] += codebook3[ndim*n3/2+i];
-  }
-}
-
-#ifdef __EXPERIMENTAL__
-
-#define MBEST_STAGES 4
-
-struct MBEST_LIST {
-    int   index[MBEST_STAGES];    /* index of each stage that lead us to this 
error */
-    float error;
-};
-
-struct MBEST {
-    int                entries;   /* number of entries in mbest list   */
-    struct MBEST_LIST *list;
-};
-
-
-static struct MBEST *mbest_create(int entries) {
-    int           i,j;
-    struct MBEST *mbest;
-
-    assert(entries > 0);
-    mbest = (struct MBEST *)malloc(sizeof(struct MBEST));
-    assert(mbest != NULL);
-
-    mbest->entries = entries;
-    mbest->list = (struct MBEST_LIST *)malloc(entries*sizeof(struct 
MBEST_LIST));
-    assert(mbest->list != NULL);
-
-    for(i=0; i<mbest->entries; i++) {
-       for(j=0; j<MBEST_STAGES; j++)
-           mbest->list[i].index[j] = 0;
-       mbest->list[i].error = 1E32;
-    }
-
-    return mbest;
-}
-
-
-static void mbest_destroy(struct MBEST *mbest) {
-    assert(mbest != NULL);
-    free(mbest->list);
-    free(mbest);
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  mbest_insert
-
-  Insert the results of a vector to codebook entry comparison. The
-  list is ordered in order or error, so those entries with the
-  smallest error will be first on the list.
-
-\*---------------------------------------------------------------------------*/
-
-static void mbest_insert(struct MBEST *mbest, int index[], float error) {
-    int                i, j, found;
-    struct MBEST_LIST *list    = mbest->list;
-    int                entries = mbest->entries;
-
-    found = 0;
-    for(i=0; i<entries && !found; i++)
-       if (error < list[i].error) {
-           found = 1;
-           for(j=entries-1; j>i; j--)
-               list[j] = list[j-1];
-           for(j=0; j<MBEST_STAGES; j++)
-               list[i].index[j] = index[j];
-           list[i].error = error;
-       }
-}
-
-
-static void mbest_print(char title[], struct MBEST *mbest) {
-    int i,j;
-
-    printf("%s\n", title);
-    for(i=0; i<mbest->entries; i++) {
-       for(j=0; j<MBEST_STAGES; j++)
-           printf("  %4d ", mbest->list[i].index[j]);
-       printf(" %f\n", mbest->list[i].error);
-    }
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  mbest_search
-
-  Searches vec[] to a codebbook of vectors, and maintains a list of the mbest
-  closest matches.
-
-\*---------------------------------------------------------------------------*/
-
-static void mbest_search(
-                 const float  *cb,     /* VQ codebook to search         */
-                 float         vec[],  /* target vector                 */
-                 float         w[],    /* weighting vector              */
-                 int           k,      /* dimension of vector           */
-                 int           m,      /* number on entries in codebook */
-                 struct MBEST *mbest,  /* list of closest matches       */
-                 int           index[] /* indexes that lead us here     */
-)
-{
-   float   e;
-   int     i,j;
-   float   diff;
-
-   for(j=0; j<m; j++) {
-       e = 0.0;
-       for(i=0; i<k; i++) {
-           diff = cb[j*k+i]-vec[i];
-           e += pow(diff*w[i],2.0);
-       }
-       index[0] = j;
-       mbest_insert(mbest, index, e);
-   }
-}
-
-
-/* 3 stage VQ LSP quantiser.  Design and guidance kindly submitted by Anssi, 
OH3GDD */
-
-void lspanssi_quantise(float *x, float *xq, int ndim, int mbest_entries)
-{
-  int i, j, n1, n2, n3, n4;
-  float w[LPC_ORD];
-  const float *codebook1 = lsp_cbvqanssi[0].cb;
-  const float *codebook2 = lsp_cbvqanssi[1].cb;
-  const float *codebook3 = lsp_cbvqanssi[2].cb;
-  const float *codebook4 = lsp_cbvqanssi[3].cb;
-  struct MBEST *mbest_stage1, *mbest_stage2, *mbest_stage3, *mbest_stage4;
-  float target[LPC_ORD];
-  int   index[MBEST_STAGES];
-
-  mbest_stage1 = mbest_create(mbest_entries);
-  mbest_stage2 = mbest_create(mbest_entries);
-  mbest_stage3 = mbest_create(mbest_entries);
-  mbest_stage4 = mbest_create(mbest_entries);
-  for(i=0; i<MBEST_STAGES; i++)
-      index[i] = 0;
-
-  compute_weights_anssi_mode2(x, w, ndim);
-
-  #ifdef DUMP
-  dump_weights(w, ndim);
-  #endif
-
-  /* Stage 1 */
-
-  mbest_search(codebook1, x, w, ndim, lsp_cbvqanssi[0].m, mbest_stage1, index);
-  mbest_print("Stage 1:", mbest_stage1);
-
-  /* Stage 2 */
-
-  for (j=0; j<mbest_entries; j++) {
-      index[1] = n1 = mbest_stage1->list[j].index[0];
-      for(i=0; i<ndim; i++)
-         target[i] = x[i] - codebook1[ndim*n1+i];
-      mbest_search(codebook2, target, w, ndim, lsp_cbvqanssi[1].m, 
mbest_stage2, index);
-  }
-  mbest_print("Stage 2:", mbest_stage2);
-
-  /* Stage 3 */
-
-  for (j=0; j<mbest_entries; j++) {
-      index[2] = n1 = mbest_stage2->list[j].index[1];
-      index[1] = n2 = mbest_stage2->list[j].index[0];
-      for(i=0; i<ndim; i++)
-         target[i] = x[i] - codebook1[ndim*n1+i] - codebook2[ndim*n2+i];
-      mbest_search(codebook3, target, w, ndim, lsp_cbvqanssi[2].m, 
mbest_stage3, index);
-  }
-  mbest_print("Stage 3:", mbest_stage3);
-
-  /* Stage 4 */
-
-  for (j=0; j<mbest_entries; j++) {
-      index[3] = n1 = mbest_stage3->list[j].index[2];
-      index[2] = n2 = mbest_stage3->list[j].index[1];
-      index[1] = n3 = mbest_stage3->list[j].index[0];
-      for(i=0; i<ndim; i++)
-         target[i] = x[i] - codebook1[ndim*n1+i] - codebook2[ndim*n2+i] - 
codebook3[ndim*n3+i];
-      mbest_search(codebook4, target, w, ndim, lsp_cbvqanssi[3].m, 
mbest_stage4, index);
-  }
-  mbest_print("Stage 4:", mbest_stage4);
-
-  n1 = mbest_stage4->list[0].index[3];
-  n2 = mbest_stage4->list[0].index[2];
-  n3 = mbest_stage4->list[0].index[1];
-  n4 = mbest_stage4->list[0].index[0];
-  for (i=0;i<ndim;i++)
-      xq[i] = codebook1[ndim*n1+i] + codebook2[ndim*n2+i] + 
codebook3[ndim*n3+i] + codebook4[ndim*n4+i];
-
-  mbest_destroy(mbest_stage1);
-  mbest_destroy(mbest_stage2);
-  mbest_destroy(mbest_stage3);
-  mbest_destroy(mbest_stage4);
-}
-#endif
-
-int check_lsp_order(float lsp[], int lpc_order)
-{
-    int   i;
-    float tmp;
-    int   swaps = 0;
-
-    for(i=1; i<lpc_order; i++)
-       if (lsp[i] < lsp[i-1]) {
-           //fprintf(stderr, "swap %d\n",i);
-           swaps++;
-           tmp = lsp[i-1];
-           lsp[i-1] = lsp[i]-0.1;
-           lsp[i] = tmp+0.1;
-            i = 1; /* start check again, as swap may have caused out of order 
*/
-       }
-
-    return swaps;
-}
-
-void force_min_lsp_dist(float lsp[], int lpc_order)
-{
-    int   i;
-
-    for(i=1; i<lpc_order; i++)
-       if ((lsp[i]-lsp[i-1]) < 0.01) {
-           lsp[i] += 0.01;
-       }
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-   lpc_post_filter()
-
-   Applies a post filter to the LPC synthesis filter power spectrum
-   Pw, which supresses the inter-formant energy.
-
-   The algorithm is from p267 (Section 8.6) of "Digital Speech",
-   edited by A.M. Kondoz, 1994 published by Wiley and Sons.  Chapter 8
-   of this text is on the MBE vocoder, and this is a freq domain
-   adaptation of post filtering commonly used in CELP.
-
-   I used the Octave simulation lpcpf.m to get an understaing of the
-   algorithm.
-
-   Requires two more FFTs which is significantly more MIPs.  However
-   it should be possible to implement this more efficiently in the
-   time domain.  Just not sure how to handle relative time delays
-   between the synthesis stage and updating these coeffs.  A smaller
-   FFT size might also be accetable to save CPU.
-
-   TODO:
-   [ ] sync var names between Octave and C version
-   [ ] doc gain normalisation
-   [ ] I think the first FFT is not rqd as we do the same
-       thing in aks_to_M2().
-
-\*---------------------------------------------------------------------------*/
-
-void lpc_post_filter(kiss_fft_cfg fft_fwd_cfg, MODEL *model, COMP Pw[], float 
ak[],
-                     int order, int dump, float beta, float gamma, int 
bass_boost)
-{
-    int   i;
-    COMP  x[FFT_ENC];   /* input to FFTs                */
-    COMP  Aw[FFT_ENC];  /* LPC analysis filter spectrum */
-    COMP  Ww[FFT_ENC];  /* weighting spectrum           */
-    float Rw[FFT_ENC];  /* R = WA                       */
-    float e_before, e_after, gain;
-    float Pfw[FFT_ENC]; /* Post filter mag spectrum     */
-    float max_Rw, min_Rw;
-    float coeff;
-    TIMER_VAR(tstart, tfft1, taw, tfft2, tww, tr);
-
-    TIMER_SAMPLE(tstart);
-
-    /* Determine LPC inverse filter spectrum 1/A(exp(jw)) -----------*/
-
-    /* we actually want the synthesis filter A(exp(jw)) but the
-       inverse (analysis) filter is easier to find as it's FIR, we
-       just use the inverse of 1/A to get the synthesis filter
-       A(exp(jw)) */
-
-    for(i=0; i<FFT_ENC; i++) {
-       x[i].real = 0.0;
-       x[i].imag = 0.0;
-    }
-
-    for(i=0; i<=order; i++)
-       x[i].real = ak[i];
-    kiss_fft(fft_fwd_cfg, (kiss_fft_cpx *)x, (kiss_fft_cpx *)Aw);
-
-    TIMER_SAMPLE_AND_LOG(tfft1, tstart, "        fft1");
-
-    for(i=0; i<FFT_ENC/2; i++) {
-       Aw[i].real = 1.0/(Aw[i].real*Aw[i].real + Aw[i].imag*Aw[i].imag);
-    }
-
-    TIMER_SAMPLE_AND_LOG(taw, tfft1, "        Aw");
-
-    /* Determine weighting filter spectrum W(exp(jw)) ---------------*/
-
-    for(i=0; i<FFT_ENC; i++) {
-       x[i].real = 0.0;
-       x[i].imag = 0.0;
-    }
-
-    x[0].real = ak[0];
-    coeff = gamma;
-    for(i=1; i<=order; i++) {
-       x[i].real = ak[i] * coeff;
-        coeff *= gamma;
-    }
-    kiss_fft(fft_fwd_cfg, (kiss_fft_cpx *)x, (kiss_fft_cpx *)Ww);
-
-    TIMER_SAMPLE_AND_LOG(tfft2, taw, "        fft2");
-
-    for(i=0; i<FFT_ENC/2; i++) {
-       Ww[i].real = Ww[i].real*Ww[i].real + Ww[i].imag*Ww[i].imag;
-    }
-
-    TIMER_SAMPLE_AND_LOG(tww, tfft2, "        Ww");
-
-    /* Determined combined filter R = WA ---------------------------*/
-
-    max_Rw = 0.0; min_Rw = 1E32;
-    for(i=0; i<FFT_ENC/2; i++) {
-       Rw[i] = sqrtf(Ww[i].real * Aw[i].real);
-       if (Rw[i] > max_Rw)
-           max_Rw = Rw[i];
-       if (Rw[i] < min_Rw)
-           min_Rw = Rw[i];
-
-    }
-
-    TIMER_SAMPLE_AND_LOG(tr, tww, "        R");
-
-    #ifdef DUMP
-    if (dump)
-      dump_Rw(Rw);
-    #endif
-
-    /* create post filter mag spectrum and apply ------------------*/
-
-    /* measure energy before post filtering */
-
-    e_before = 1E-4;
-    for(i=0; i<FFT_ENC/2; i++)
-       e_before += Pw[i].real;
-
-    /* apply post filter and measure energy  */
-
-    #ifdef DUMP
-    if (dump)
-       dump_Pwb(Pw);
-    #endif
-
-    e_after = 1E-4;
-    for(i=0; i<FFT_ENC/2; i++) {
-       Pfw[i] = powf(Rw[i], beta);
-       Pw[i].real *= Pfw[i] * Pfw[i];
-       e_after += Pw[i].real;
-    }
-    gain = e_before/e_after;
-
-    /* apply gain factor to normalise energy */
-
-    for(i=0; i<FFT_ENC/2; i++) {
-       Pw[i].real *= gain;
-    }
-
-    if (bass_boost) {
-        /* add 3dB to first 1 kHz to account for LP effect of PF */
-
-        for(i=0; i<FFT_ENC/8; i++) {
-            Pw[i].real *= 1.4*1.4;
-        }
-    }
-
-    TIMER_SAMPLE_AND_LOG2(tr, "        filt");
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-   aks_to_M2()
-
-   Transforms the linear prediction coefficients to spectral amplitude
-   samples.  This function determines A(m) from the average energy per
-   band using an FFT.
-
-\*---------------------------------------------------------------------------*/
-
-void aks_to_M2(
-  kiss_fft_cfg  fft_fwd_cfg,
-  float         ak[],       /* LPC's */
-  int           order,
-  MODEL        *model,      /* sinusoidal model parameters for this frame */
-  float         E,          /* energy term */
-  float        *snr,        /* signal to noise ratio for this frame in dB */
-  int           dump,        /* true to dump sample to dump file */
-  int           sim_pf,      /* true to simulate a post filter */
-  int           pf,          /* true to LPC post filter */
-  int           bass_boost,  /* enable LPC filter 0-1khz 3dB boost */
-  float         beta,
-  float         gamma        /* LPC post filter parameters */
-)
-{
-  COMP pw[FFT_ENC];    /* input to FFT for power spectrum */
-  COMP Pw[FFT_ENC];    /* output power spectrum */
-  int i,m;             /* loop variables */
-  int am,bm;           /* limits of current band */
-  float r;             /* no. rads/bin */
-  float Em;            /* energy in band */
-  float Am;            /* spectral amplitude sample */
-  float signal, noise;
-  TIMER_VAR(tstart, tfft, tpw, tpf);
-
-  TIMER_SAMPLE(tstart);
-
-  r = TWO_PI/(FFT_ENC);
-
-  /* Determine DFT of A(exp(jw)) --------------------------------------------*/
-
-  for(i=0; i<FFT_ENC; i++) {
-    pw[i].real = 0.0;
-    pw[i].imag = 0.0;
-  }
-
-  for(i=0; i<=order; i++)
-    pw[i].real = ak[i];
-  kiss_fft(fft_fwd_cfg, (kiss_fft_cpx *)pw, (kiss_fft_cpx *)Pw);
-
-  TIMER_SAMPLE_AND_LOG(tfft, tstart, "      fft");
-
-  /* Determine power spectrum P(w) = E/(A(exp(jw))^2 ------------------------*/
-
-  for(i=0; i<FFT_ENC/2; i++)
-    Pw[i].real = E/(Pw[i].real*Pw[i].real + Pw[i].imag*Pw[i].imag);
-
-  TIMER_SAMPLE_AND_LOG(tpw, tfft, "      Pw");
-
-  if (pf)
-      lpc_post_filter(fft_fwd_cfg, model, Pw, ak, order, dump, beta, gamma, 
bass_boost);
-
-  TIMER_SAMPLE_AND_LOG(tpf, tpw, "      LPC post filter");
-
-  #ifdef DUMP
-  if (dump)
-      dump_Pw(Pw);
-  #endif
-
-  /* Determine magnitudes from P(w) ----------------------------------------*/
-
-  /* when used just by decoder {A} might be all zeroes so init signal
-     and noise to prevent log(0) errors */
-
-  signal = 1E-30; noise = 1E-32;
-
-  for(m=1; m<=model->L; m++) {
-      am = (int)((m - 0.5)*model->Wo/r + 0.5);
-      bm = (int)((m + 0.5)*model->Wo/r + 0.5);
-      Em = 0.0;
-
-      for(i=am; i<bm; i++)
-          Em += Pw[i].real;
-      Am = sqrtf(Em);
-
-      signal += model->A[m]*model->A[m];
-      noise  += (model->A[m] - Am)*(model->A[m] - Am);
-
-      /* This code significantly improves perf of LPC model, in
-         particular when combined with phase0.  The LPC spectrum tends
-         to track just under the peaks of the spectral envelope, and
-         just above nulls.  This algorithm does the reverse to
-         compensate - raising the amplitudes of spectral peaks, while
-         attenuating the null.  This enhances the formants, and
-         supresses the energy between formants. */
-
-      if (sim_pf) {
-          if (Am > model->A[m])
-              Am *= 0.7;
-          if (Am < model->A[m])
-              Am *= 1.4;
-      }
-
-      model->A[m] = Am;
-  }
-  *snr = 10.0*log10f(signal/noise);
-
-  TIMER_SAMPLE_AND_LOG2(tpf, "      rec");
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: encode_Wo()
-  AUTHOR......: David Rowe
-  DATE CREATED: 22/8/2010
-
-  Encodes Wo using a WO_LEVELS quantiser.
-
-\*---------------------------------------------------------------------------*/
-
-int encode_Wo(float Wo)
-{
-    int   index;
-    float Wo_min = TWO_PI/P_MAX;
-    float Wo_max = TWO_PI/P_MIN;
-    float norm;
-
-    norm = (Wo - Wo_min)/(Wo_max - Wo_min);
-    index = floorf(WO_LEVELS * norm + 0.5);
-    if (index < 0 ) index = 0;
-    if (index > (WO_LEVELS-1)) index = WO_LEVELS-1;
-
-    return index;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: decode_Wo()
-  AUTHOR......: David Rowe
-  DATE CREATED: 22/8/2010
-
-  Decodes Wo using a WO_LEVELS quantiser.
-
-\*---------------------------------------------------------------------------*/
-
-float decode_Wo(int index)
-{
-    float Wo_min = TWO_PI/P_MAX;
-    float Wo_max = TWO_PI/P_MIN;
-    float step;
-    float Wo;
-
-    step = (Wo_max - Wo_min)/WO_LEVELS;
-    Wo   = Wo_min + step*(index);
-
-    return Wo;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: encode_Wo_dt()
-  AUTHOR......: David Rowe
-  DATE CREATED: 6 Nov 2011
-
-  Encodes Wo difference from last frame.
-
-\*---------------------------------------------------------------------------*/
-
-int encode_Wo_dt(float Wo, float prev_Wo)
-{
-    int   index, mask, max_index, min_index;
-    float Wo_min = TWO_PI/P_MAX;
-    float Wo_max = TWO_PI/P_MIN;
-    float norm;
-
-    norm = (Wo - prev_Wo)/(Wo_max - Wo_min);
-    index = floor(WO_LEVELS * norm + 0.5);
-    //printf("ENC index: %d ", index);
-
-    /* hard limit */
-
-    max_index = (1 << (WO_DT_BITS-1)) - 1;
-    min_index = - (max_index+1);
-    if (index > max_index) index = max_index;
-    if (index < min_index) index = min_index;
-    //printf("max_index: %d  min_index: %d hard index: %d ",
-    //    max_index,  min_index, index);
-
-    /* mask so that only LSB WO_DT_BITS remain, bit WO_DT_BITS is the sign bit 
*/
-
-    mask = ((1 << WO_DT_BITS) - 1);
-    index &= mask;
-    //printf("mask: 0x%x index: 0x%x\n", mask, index);
-
-    return index;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: decode_Wo_dt()
-  AUTHOR......: David Rowe
-  DATE CREATED: 6 Nov 2011
-
-  Decodes Wo using WO_DT_BITS difference from last frame.
-
-\*---------------------------------------------------------------------------*/
-
-float decode_Wo_dt(int index, float prev_Wo)
-{
-    float Wo_min = TWO_PI/P_MAX;
-    float Wo_max = TWO_PI/P_MIN;
-    float step;
-    float Wo;
-    int   mask;
-
-    /* sign extend index */
-
-    //printf("DEC index: %d ");
-    if (index & (1 << (WO_DT_BITS-1))) {
-       mask = ~((1 << WO_DT_BITS) - 1);
-       index |= mask;
-    }
-    //printf("DEC mask: 0x%x  index: %d \n", mask, index);
-
-    step = (Wo_max - Wo_min)/WO_LEVELS;
-    Wo   = prev_Wo + step*(index);
-
-    /* bit errors can make us go out of range leading to all sorts of
-       probs like seg faults */
-
-    if (Wo > Wo_max) Wo = Wo_max;
-    if (Wo < Wo_min) Wo = Wo_min;
-
-    return Wo;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: speech_to_uq_lsps()
-  AUTHOR......: David Rowe
-  DATE CREATED: 22/8/2010
-
-  Analyse a windowed frame of time domain speech to determine LPCs
-  which are the converted to LSPs for quantisation and transmission
-  over the channel.
-
-\*---------------------------------------------------------------------------*/
-
-float speech_to_uq_lsps(float lsp[],
-                       float ak[],
-                       float Sn[],
-                       float w[],
-                       int   order
-)
-{
-    int   i, roots;
-    float Wn[M];
-    float R[LPC_MAX+1];
-    float e, E;
-
-    e = 0.0;
-    for(i=0; i<M; i++) {
-       Wn[i] = Sn[i]*w[i];
-       e += Wn[i]*Wn[i];
-    }
-
-    /* trap 0 energy case as LPC analysis will fail */
-
-    if (e == 0.0) {
-       for(i=0; i<order; i++)
-           lsp[i] = (PI/order)*(float)i;
-       return 0.0;
-    }
-
-    autocorrelate(Wn, R, M, order);
-    levinson_durbin(R, ak, order);
-
-    E = 0.0;
-    for(i=0; i<=order; i++)
-       E += ak[i]*R[i];
-
-    /* 15 Hz BW expansion as I can't hear the difference and it may help
-       help occasional fails in the LSP root finding.  Important to do this
-       after energy calculation to avoid -ve energy values.
-    */
-
-    for(i=0; i<=order; i++)
-       ak[i] *= powf(0.994,(float)i);
-
-    roots = lpc_to_lsp(ak, order, lsp, 5, LSP_DELTA1);
-    if (roots != order) {
-       /* if root finding fails use some benign LSP values instead */
-       for(i=0; i<order; i++)
-           lsp[i] = (PI/order)*(float)i;
-    }
-
-    return E;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: encode_lsps_scalar()
-  AUTHOR......: David Rowe
-  DATE CREATED: 22/8/2010
-
-  Thirty-six bit sclar LSP quantiser. From a vector of unquantised
-  (floating point) LSPs finds the quantised LSP indexes.
-
-\*---------------------------------------------------------------------------*/
-
-void encode_lsps_scalar(int indexes[], float lsp[], int order)
-{
-    int    i,k,m;
-    float  wt[1];
-    float  lsp_hz[LPC_MAX];
-    const float * cb;
-    float se = 0.0f;
-
-    /* convert from radians to Hz so we can use human readable
-       frequencies */
-
-    for(i=0; i<order; i++)
-       lsp_hz[i] = (4000.0/PI)*lsp[i];
-
-    /* scalar quantisers */
-
-    wt[0] = 1.0;
-    for(i=0; i<order; i++) {
-       k = lsp_cb[i].k;
-       m = lsp_cb[i].m;
-       cb = lsp_cb[i].cb;
-       indexes[i] = quantise(cb, &lsp_hz[i], wt, k, m, &se);
-    }
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: decode_lsps_scalar()
-  AUTHOR......: David Rowe
-  DATE CREATED: 22/8/2010
-
-  From a vector of quantised LSP indexes, returns the quantised
-  (floating point) LSPs.
-
-\*---------------------------------------------------------------------------*/
-
-void decode_lsps_scalar(float lsp[], int indexes[], int order)
-{
-    int    i,k;
-    float  lsp_hz[LPC_MAX];
-    const float * cb;
-
-    for(i=0; i<order; i++) {
-       k = lsp_cb[i].k;
-       cb = lsp_cb[i].cb;
-       lsp_hz[i] = cb[indexes[i]*k];
-    }
-
-    /* convert back to radians */
-
-    for(i=0; i<order; i++)
-       lsp[i] = (PI/4000.0)*lsp_hz[i];
-}
-
-
-#ifdef __EXPERIMENTAL__
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: encode_lsps_diff_freq_vq()
-  AUTHOR......: David Rowe
-  DATE CREATED: 15 November 2011
-
-  Twenty-five bit LSP quantiser.  LSPs 1-4 are quantised with scalar
-  LSP differences (in frequency, i.e difference from the previous
-  LSP).  LSPs 5-10 are quantised with a VQ trained generated using
-  vqtrainjnd.c
-
-\*---------------------------------------------------------------------------*/
-
-void encode_lsps_diff_freq_vq(int indexes[], float lsp[], int order)
-{
-    int    i,k,m;
-    float  lsp_hz[LPC_MAX];
-    float lsp__hz[LPC_MAX];
-    float dlsp[LPC_MAX];
-    float dlsp_[LPC_MAX];
-    float wt[LPC_MAX];
-    const float * cb;
-    float se = 0.0f;
-
-    for(i=0; i<LPC_ORD; i++) {
-       wt[i] = 1.0;
-    }
-
-    /* convert from radians to Hz so we can use human readable
-       frequencies */
-
-    for(i=0; i<order; i++)
-       lsp_hz[i] = (4000.0/PI)*lsp[i];
-
-    /* scalar quantisers for LSP differences 1..4 */
-
-    wt[0] = 1.0;
-    for(i=0; i<4; i++) {
-       if (i)
-           dlsp[i] = lsp_hz[i] - lsp__hz[i-1];
-       else
-           dlsp[0] = lsp_hz[0];
-
-       k = lsp_cbd[i].k;
-       m = lsp_cbd[i].m;
-       cb = lsp_cbd[i].cb;
-       indexes[i] = quantise(cb, &dlsp[i], wt, k, m, &se);
-       dlsp_[i] = cb[indexes[i]*k];
-
-       if (i)
-           lsp__hz[i] = lsp__hz[i-1] + dlsp_[i];
-       else
-           lsp__hz[0] = dlsp_[0];
-    }
-
-    /* VQ LSPs 5,6,7,8,9,10 */
-
-    k = lsp_cbjnd[4].k;
-    m = lsp_cbjnd[4].m;
-    cb = lsp_cbjnd[4].cb;
-    indexes[4] = quantise(cb, &lsp_hz[4], &wt[4], k, m, &se);
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: decode_lsps_diff_freq_vq()
-  AUTHOR......: David Rowe
-  DATE CREATED: 15 Nov 2011
-
-  From a vector of quantised LSP indexes, returns the quantised
-  (floating point) LSPs.
-
-\*---------------------------------------------------------------------------*/
-
-void decode_lsps_diff_freq_vq(float lsp_[], int indexes[], int order)
-{
-    int    i,k,m;
-    float  dlsp_[LPC_MAX];
-    float  lsp__hz[LPC_MAX];
-    const float * cb;
-
-    /* scalar LSP differences */
-
-    for(i=0; i<4; i++) {
-       cb = lsp_cbd[i].cb;
-       dlsp_[i] = cb[indexes[i]];
-       if (i)
-           lsp__hz[i] = lsp__hz[i-1] + dlsp_[i];
-       else
-           lsp__hz[0] = dlsp_[0];
-    }
-
-    /* VQ */
-
-    k = lsp_cbjnd[4].k;
-    m = lsp_cbjnd[4].m;
-    cb = lsp_cbjnd[4].cb;
-    for(i=4; i<order; i++)
-       lsp__hz[i] = cb[indexes[4]*k+i-4];
-
-    /* convert back to radians */
-
-    for(i=0; i<order; i++)
-       lsp_[i] = (PI/4000.0)*lsp__hz[i];
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: encode_lsps_diff_time()
-  AUTHOR......: David Rowe
-  DATE CREATED: 12 Sep 2012
-
-  Encode difference from preious frames's LSPs using
-  3,3,2,2,2,2,1,1,1,1 scalar quantisers (18 bits total).
-
-\*---------------------------------------------------------------------------*/
-
-void encode_lsps_diff_time(int indexes[],
-                              float lsps[],
-                              float lsps__prev[],
-                              int order)
-{
-    int    i,k,m;
-    float  lsps_dt[LPC_ORD];
-    float  wt[LPC_MAX];
-    const  float * cb;
-    float  se = 0.0f;
-
-    /* Determine difference in time and convert from radians to Hz so
-       we can use human readable frequencies */
-
-    for(i=0; i<LPC_ORD; i++) {
-       lsps_dt[i] = (4000/PI)*(lsps[i] - lsps__prev[i]);
-    }
-
-    /* scalar quantisers */
-
-    wt[0] = 1.0;
-    for(i=0; i<order; i++) {
-       k = lsp_cbdt[i].k;
-       m = lsp_cbdt[i].m;
-       cb = lsp_cbdt[i].cb;
-       indexes[i] = quantise(cb, &lsps_dt[i], wt, k, m, &se);
-    }
-
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: decode_lsps_diff_time()
-  AUTHOR......: David Rowe
-  DATE CREATED: 15 Nov 2011
-
-  From a quantised LSP indexes, returns the quantised
-  (floating point) LSPs.
-
-\*---------------------------------------------------------------------------*/
-
-void decode_lsps_diff_time(
-                             float lsps_[],
-                             int indexes[],
-                             float lsps__prev[],
-                             int order)
-{
-    int    i,k,m;
-    const  float * cb;
-
-    for(i=0; i<order; i++)
-       lsps_[i] = lsps__prev[i];
-
-    for(i=0; i<order; i++) {
-       k = lsp_cbdt[i].k;
-       cb = lsp_cbdt[i].cb;
-       lsps_[i] += (PI/4000.0)*cb[indexes[i]*k];
-    }
-
-}
-#endif
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: encode_lsps_vq()
-  AUTHOR......: David Rowe
-  DATE CREATED: 15 Feb 2012
-
-  Multi-stage VQ LSP quantiser developed by Jean-Marc Valin.
-
-\*---------------------------------------------------------------------------*/
-
-void encode_lsps_vq(int *indexes, float *x, float *xq, int ndim)
-{
-  int i, n1, n2, n3;
-  float err[LPC_ORD], err2[LPC_ORD], err3[LPC_ORD];
-  float w[LPC_ORD], w2[LPC_ORD], w3[LPC_ORD];
-  const float *codebook1 = lsp_cbjvm[0].cb;
-  const float *codebook2 = lsp_cbjvm[1].cb;
-  const float *codebook3 = lsp_cbjvm[2].cb;
-
-  assert(ndim <= LPC_ORD);
-
-  w[0] = MIN(x[0], x[1]-x[0]);
-  for (i=1;i<ndim-1;i++)
-    w[i] = MIN(x[i]-x[i-1], x[i+1]-x[i]);
-  w[ndim-1] = MIN(x[ndim-1]-x[ndim-2], PI-x[ndim-1]);
-
-  compute_weights(x, w, ndim);
-
-  n1 = find_nearest(codebook1, lsp_cbjvm[0].m, x, ndim);
-
-  for (i=0;i<ndim;i++)
-  {
-    xq[i]  = codebook1[ndim*n1+i];
-    err[i] = x[i] - xq[i];
-  }
-  for (i=0;i<ndim/2;i++)
-  {
-    err2[i] = err[2*i];
-    err3[i] = err[2*i+1];
-    w2[i] = w[2*i];
-    w3[i] = w[2*i+1];
-  }
-  n2 = find_nearest_weighted(codebook2, lsp_cbjvm[1].m, err2, w2, ndim/2);
-  n3 = find_nearest_weighted(codebook3, lsp_cbjvm[2].m, err3, w3, ndim/2);
-
-  indexes[0] = n1;
-  indexes[1] = n2;
-  indexes[2] = n3;
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: decode_lsps_vq()
-  AUTHOR......: David Rowe
-  DATE CREATED: 15 Feb 2012
-
-\*---------------------------------------------------------------------------*/
-
-void decode_lsps_vq(int *indexes, float *xq, int ndim)
-{
-  int i, n1, n2, n3;
-  const float *codebook1 = lsp_cbjvm[0].cb;
-  const float *codebook2 = lsp_cbjvm[1].cb;
-  const float *codebook3 = lsp_cbjvm[2].cb;
-
-  n1 = indexes[0];
-  n2 = indexes[1];
-  n3 = indexes[2];
-
-  for (i=0;i<ndim;i++)
-  {
-    xq[i] = codebook1[ndim*n1+i];
-  }
-  for (i=0;i<ndim/2;i++)
-  {
-    xq[2*i] += codebook2[ndim*n2/2+i];
-    xq[2*i+1] += codebook3[ndim*n3/2+i];
-  }
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: bw_expand_lsps()
-  AUTHOR......: David Rowe
-  DATE CREATED: 22/8/2010
-
-  Applies Bandwidth Expansion (BW) to a vector of LSPs.  Prevents any
-  two LSPs getting too close together after quantisation.  We know
-  from experiment that LSP quantisation errors < 12.5Hz (25Hz step
-  size) are inaudible so we use that as the minimum LSP separation.
-
-\*---------------------------------------------------------------------------*/
-
-void bw_expand_lsps(float lsp[], int order, float min_sep_low, float 
min_sep_high)
-{
-    int i;
-
-    for(i=1; i<4; i++) {
-
-       if ((lsp[i] - lsp[i-1]) < min_sep_low*(PI/4000.0))
-           lsp[i] = lsp[i-1] + min_sep_low*(PI/4000.0);
-
-    }
-
-    /* As quantiser gaps increased, larger BW expansion was required
-       to prevent twinkly noises.  This may need more experiment for
-       different quanstisers.
-    */
-
-    for(i=4; i<order; i++) {
-       if (lsp[i] - lsp[i-1] < min_sep_high*(PI/4000.0))
-           lsp[i] = lsp[i-1] + min_sep_high*(PI/4000.0);
-    }
-}
-
-void bw_expand_lsps2(float lsp[],
-                   int   order
-)
-{
-    int i;
-
-    for(i=1; i<4; i++) {
-
-       if ((lsp[i] - lsp[i-1]) < 100.0*(PI/4000.0))
-           lsp[i] = lsp[i-1] + 100.0*(PI/4000.0);
-
-    }
-
-    /* As quantiser gaps increased, larger BW expansion was required
-       to prevent twinkly noises.  This may need more experiment for
-       different quanstisers.
-    */
-
-    for(i=4; i<order; i++) {
-       if (lsp[i] - lsp[i-1] < 200.0*(PI/4000.0))
-           lsp[i] = lsp[i-1] + 200.0*(PI/4000.0);
-    }
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: locate_lsps_jnd_steps()
-  AUTHOR......: David Rowe
-  DATE CREATED: 27/10/2011
-
-  Applies a form of Bandwidth Expansion (BW) to a vector of LSPs.
-  Listening tests have determined that "quantising" the position of
-  each LSP to the non-linear steps below introduces a "just noticable
-  difference" in the synthesised speech.
-
-  This operation can be used before quantisation to limit the input
-  data to the quantiser to a number of discrete steps.
-
-  This operation can also be used during quantisation as a form of
-  hysteresis in the calculation of quantiser error.  For example if
-  the quantiser target of lsp1 is 500 Hz, candidate vectors with lsp1
-  of 515 and 495 Hz sound effectively the same.
-
-\*---------------------------------------------------------------------------*/
-
-void locate_lsps_jnd_steps(float lsps[], int order)
-{
-    int   i;
-    float lsp_hz, step;
-
-    assert(order == 10);
-
-    /* quantise to 25Hz steps */
-
-    step = 25;
-    for(i=0; i<2; i++) {
-       lsp_hz = lsps[i]*4000.0/PI;
-       lsp_hz = floorf(lsp_hz/step + 0.5)*step;
-       lsps[i] = lsp_hz*PI/4000.0;
-       if (i) {
-           if (lsps[i] == lsps[i-1])
-               lsps[i]   += step*PI/4000.0;
-
-       }
-    }
-
-    /* quantise to 50Hz steps */
-
-    step = 50;
-    for(i=2; i<4; i++) {
-       lsp_hz = lsps[i]*4000.0/PI;
-       lsp_hz = floorf(lsp_hz/step + 0.5)*step;
-       lsps[i] = lsp_hz*PI/4000.0;
-       if (i) {
-           if (lsps[i] == lsps[i-1])
-               lsps[i] += step*PI/4000.0;
-
-       }
-    }
-
-    /* quantise to 100Hz steps */
-
-    step = 100;
-    for(i=4; i<10; i++) {
-       lsp_hz = lsps[i]*4000.0/PI;
-       lsp_hz = floorf(lsp_hz/step + 0.5)*step;
-       lsps[i] = lsp_hz*PI/4000.0;
-       if (i) {
-           if (lsps[i] == lsps[i-1])
-               lsps[i] += step*PI/4000.0;
-
-       }
-    }
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: apply_lpc_correction()
-  AUTHOR......: David Rowe
-  DATE CREATED: 22/8/2010
-
-  Apply first harmonic LPC correction at decoder.  This helps improve
-  low pitch males after LPC modelling, like hts1a and morig.
-
-\*---------------------------------------------------------------------------*/
-
-void apply_lpc_correction(MODEL *model)
-{
-    if (model->Wo < (PI*150.0/4000)) {
-       model->A[1] *= 0.032;
-    }
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: encode_energy()
-  AUTHOR......: David Rowe
-  DATE CREATED: 22/8/2010
-
-  Encodes LPC energy using an E_LEVELS quantiser.
-
-\*---------------------------------------------------------------------------*/
-
-int encode_energy(float e)
-{
-    int   index;
-    float e_min = E_MIN_DB;
-    float e_max = E_MAX_DB;
-    float norm;
-
-    e = 10.0*log10f(e);
-    norm = (e - e_min)/(e_max - e_min);
-    index = floorf(E_LEVELS * norm + 0.5);
-    if (index < 0 ) index = 0;
-    if (index > (E_LEVELS-1)) index = E_LEVELS-1;
-
-    return index;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: decode_energy()
-  AUTHOR......: David Rowe
-  DATE CREATED: 22/8/2010
-
-  Decodes energy using a E_LEVELS quantiser.
-
-\*---------------------------------------------------------------------------*/
-
-float decode_energy(int index)
-{
-    float e_min = E_MIN_DB;
-    float e_max = E_MAX_DB;
-    float step;
-    float e;
-
-    step = (e_max - e_min)/E_LEVELS;
-    e    = e_min + step*(index);
-    e    = powf(10.0,e/10.0);
-
-    return e;
-}
-
-#ifdef NOT_USED
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: decode_amplitudes()
-  AUTHOR......: David Rowe
-  DATE CREATED: 22/8/2010
-
-  Given the amplitude quantiser indexes recovers the harmonic
-  amplitudes.
-
-\*---------------------------------------------------------------------------*/
-
-float decode_amplitudes(kiss_fft_cfg  fft_fwd_cfg,
-                       MODEL *model,
-                       float  ak[],
-                       int    lsp_indexes[],
-                       int    energy_index,
-                       float  lsps[],
-                       float *e
-)
-{
-    float snr;
-
-    decode_lsps_scalar(lsps, lsp_indexes, LPC_ORD);
-    bw_expand_lsps(lsps, LPC_ORD);
-    lsp_to_lpc(lsps, ak, LPC_ORD);
-    *e = decode_energy(energy_index);
-    aks_to_M2(ak, LPC_ORD, model, *e, &snr, 1, 0, 0, 1);
-    apply_lpc_correction(model);
-
-    return snr;
-}
-#endif
-
-static float ge_coeff[2] = {0.8, 0.9};
-
-void compute_weights2(const float *x, const float *xp, float *w, int ndim)
-{
-  w[0] = 30;
-  w[1] = 1;
-  if (x[1]<0)
-  {
-     w[0] *= .6;
-     w[1] *= .3;
-  }
-  if (x[1]<-10)
-  {
-     w[0] *= .3;
-     w[1] *= .3;
-  }
-  /* Higher weight if pitch is stable */
-  if (fabsf(x[0]-xp[0])<.2)
-  {
-     w[0] *= 2;
-     w[1] *= 1.5;
-  } else if (fabsf(x[0]-xp[0])>.5) /* Lower if not stable */
-  {
-     w[0] *= .5;
-  }
-
-  /* Lower weight for low energy */
-  if (x[1] < xp[1]-10)
-  {
-     w[1] *= .5;
-  }
-  if (x[1] < xp[1]-20)
-  {
-     w[1] *= .5;
-  }
-
-  //w[0] = 30;
-  //w[1] = 1;
-
-  /* Square the weights because it's applied on the squared error */
-  w[0] *= w[0];
-  w[1] *= w[1];
-
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: quantise_WoE()
-  AUTHOR......: Jean-Marc Valin & David Rowe
-  DATE CREATED: 29 Feb 2012
-
-  Experimental joint Wo and LPC energy vector quantiser developed by
-  Jean-Marc Valin.  Exploits correlations between the difference in
-  the log pitch and log energy from frame to frame.  For example
-  both the pitch and energy tend to only change by small amounts
-  during voiced speech, however it is important that these changes be
-  coded carefully.  During unvoiced speech they both change a lot but
-  the ear is less sensitve to errors so coarser quantisation is OK.
-
-  The ear is sensitive to log energy and loq pitch so we quantise in
-  these domains.  That way the error measure used to quantise the
-  values is close to way the ear senses errors.
-
-  See http://jmspeex.livejournal.com/10446.html
-
-\*---------------------------------------------------------------------------*/
-
-void quantise_WoE(MODEL *model, float *e, float xq[])
-{
-  int          i, n1;
-  float        x[2];
-  float        err[2];
-  float        w[2];
-  const float *codebook1 = ge_cb[0].cb;
-  int          nb_entries = ge_cb[0].m;
-  int          ndim = ge_cb[0].k;
-  float Wo_min = TWO_PI/P_MAX;
-  float Wo_max = TWO_PI/P_MIN;
-
-  x[0] = log10f((model->Wo/PI)*4000.0/50.0)/log10f(2);
-  x[1] = 10.0*log10f(1e-4 + *e);
-
-  compute_weights2(x, xq, w, ndim);
-  for (i=0;i<ndim;i++)
-    err[i] = x[i]-ge_coeff[i]*xq[i];
-  n1 = find_nearest_weighted(codebook1, nb_entries, err, w, ndim);
-
-  for (i=0;i<ndim;i++)
-  {
-    xq[i] = ge_coeff[i]*xq[i] + codebook1[ndim*n1+i];
-    err[i] -= codebook1[ndim*n1+i];
-  }
-
-  /*
-    x = log2(4000*Wo/(PI*50));
-    2^x = 4000*Wo/(PI*50)
-    Wo = (2^x)*(PI*50)/4000;
-  */
-
-  model->Wo = powf(2.0, xq[0])*(PI*50.0)/4000.0;
-
-  /* bit errors can make us go out of range leading to all sorts of
-     probs like seg faults */
-
-  if (model->Wo > Wo_max) model->Wo = Wo_max;
-  if (model->Wo < Wo_min) model->Wo = Wo_min;
-
-  model->L  = PI/model->Wo; /* if we quantise Wo re-compute L */
-
-  *e = powf(10.0, xq[1]/10.0);
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: encode_WoE()
-  AUTHOR......: Jean-Marc Valin & David Rowe
-  DATE CREATED: 11 May 2012
-
-  Joint Wo and LPC energy vector quantiser developed my Jean-Marc
-  Valin.  Returns index, and updated states xq[].
-
-\*---------------------------------------------------------------------------*/
-
-int encode_WoE(MODEL *model, float e, float xq[])
-{
-  int          i, n1;
-  float        x[2];
-  float        err[2];
-  float        w[2];
-  const float *codebook1 = ge_cb[0].cb;
-  int          nb_entries = ge_cb[0].m;
-  int          ndim = ge_cb[0].k;
-
-  assert((1<<WO_E_BITS) == nb_entries);
-
-  if (e < 0.0) e = 0;  /* occasional small negative energies due LPC round off 
I guess */
-
-  x[0] = log10f((model->Wo/PI)*4000.0/50.0)/log10f(2);
-  x[1] = 10.0*log10f(1e-4 + e);
-
-  compute_weights2(x, xq, w, ndim);
-  for (i=0;i<ndim;i++)
-    err[i] = x[i]-ge_coeff[i]*xq[i];
-  n1 = find_nearest_weighted(codebook1, nb_entries, err, w, ndim);
-
-  for (i=0;i<ndim;i++)
-  {
-    xq[i] = ge_coeff[i]*xq[i] + codebook1[ndim*n1+i];
-    err[i] -= codebook1[ndim*n1+i];
-  }
-
-  //printf("enc: %f %f (%f)(%f) \n", xq[0], xq[1], e, 10.0*log10(1e-4 + e));
-  return n1;
-}
-
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: decode_WoE()
-  AUTHOR......: Jean-Marc Valin & David Rowe
-  DATE CREATED: 11 May 2012
-
-  Joint Wo and LPC energy vector quantiser developed my Jean-Marc
-  Valin.  Given index and states xq[], returns Wo & E, and updates
-  states xq[].
-
-\*---------------------------------------------------------------------------*/
-
-void decode_WoE(MODEL *model, float *e, float xq[], int n1)
-{
-  int          i;
-  const float *codebook1 = ge_cb[0].cb;
-  int          ndim = ge_cb[0].k;
-  float Wo_min = TWO_PI/P_MAX;
-  float Wo_max = TWO_PI/P_MIN;
-
-  for (i=0;i<ndim;i++)
-  {
-    xq[i] = ge_coeff[i]*xq[i] + codebook1[ndim*n1+i];
-  }
-
-  //printf("dec: %f %f\n", xq[0], xq[1]);
-  model->Wo = powf(2.0, xq[0])*(PI*50.0)/4000.0;
-
-  /* bit errors can make us go out of range leading to all sorts of
-     probs like seg faults */
-
-  if (model->Wo > Wo_max) model->Wo = Wo_max;
-  if (model->Wo < Wo_min) model->Wo = Wo_min;
-
-  model->L  = PI/model->Wo; /* if we quantise Wo re-compute L */
-
-  *e = powf(10.0, xq[1]/10.0);
-}
-
diff --git a/gr-vocoder/lib/codec2/quantise.h b/gr-vocoder/lib/codec2/quantise.h
deleted file mode 100644
index cb9dd07..0000000
--- a/gr-vocoder/lib/codec2/quantise.h
+++ /dev/null
@@ -1,126 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: quantise.h
-  AUTHOR......: David Rowe
-  DATE CREATED: 31/5/92
-
-  Quantisation functions for the sinusoidal coder.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#ifndef __QUANTISE__
-#define __QUANTISE__
-
-#include "kiss_fft.h"
-
-#define WO_BITS     7
-#define WO_LEVELS   (1<<WO_BITS)
-#define WO_DT_BITS  3
-
-#define E_BITS      5
-#define E_LEVELS    (1<<E_BITS)
-#define E_MIN_DB   -10.0
-#define E_MAX_DB    40.0
-
-#define LSP_SCALAR_INDEXES    10
-#define LSPD_SCALAR_INDEXES    10
-#define LSP_PRED_VQ_INDEXES    3
-#define LSP_DIFF_FREQ_INDEXES  5
-#define LSP_DIFF_TIME_BITS     7
-
-#define LSPDT_ALL   0
-#define LSPDT_LOW   1
-#define LSPDT_HIGH  2
-
-#define WO_E_BITS   8
-
-#define LPCPF_GAMMA 0.5
-#define LPCPF_BETA  0.2
-
-void quantise_init();
-float lpc_model_amplitudes(float Sn[], float w[], MODEL *model, int order,
-                          int lsp,float ak[]);
-void aks_to_M2(kiss_fft_cfg fft_fwd_cfg, float ak[], int order, MODEL *model,
-              float E, float *snr, int dump, int sim_pf,
-               int pf, int bass_boost, float beta, float gamma);
-
-int   encode_Wo(float Wo);
-float decode_Wo(int index);
-int   encode_Wo_dt(float Wo, float prev_Wo);
-float decode_Wo_dt(int index, float prev_Wo);
-void  encode_lsps_scalar(int indexes[], float lsp[], int order);
-void  decode_lsps_scalar(float lsp[], int indexes[], int order);
-void  encode_lspds_scalar(int indexes[], float lsp[], int order);
-void  decode_lspds_scalar(float lsp[], int indexes[], int order);
-void  encode_lsps_diff_freq_vq(int indexes[], float lsp[], int order);
-void  decode_lsps_diff_freq_vq(float lsp_[], int indexes[], int order);
-void  encode_lsps_diff_time(int indexes[],
-                           float lsp[],
-                           float lsp__prev[],
-                           int order);
-void decode_lsps_diff_time(float lsp_[],
-                          int indexes[],
-                          float lsp__prev[],
-                          int order);
-
-void encode_lsps_vq(int *indexes, float *x, float *xq, int ndim);
-void decode_lsps_vq(int *indexes, float *xq, int ndim);
-
-long quantise(const float * cb, float vec[], float w[], int k, int m, float 
*se);
-void lspvq_quantise(float lsp[], float lsp_[], int order);
-void lspjnd_quantise(float lsp[], float lsp_[], int order);
-void lspdt_quantise(float lsps[], float lsps_[], float lsps__prev[], int mode);
-void lspjvm_quantise(float lsps[], float lsps_[], int order);
-void lspanssi_quantise(float lsps[], float lsps_[], int order, int 
mbest_entries);
-
-void quantise_WoE(MODEL *model, float *e, float xq[]);
-int  encode_WoE(MODEL *model, float e, float xq[]);
-void decode_WoE(MODEL *model, float *e, float xq[], int n1);
-
-int encode_energy(float e);
-float decode_energy(int index);
-
-void pack(unsigned char * bits, unsigned int *nbit, int index, unsigned int 
index_bits);
-void pack_natural_or_gray(unsigned char * bits, unsigned int *nbit, int index, 
unsigned int index_bits, unsigned int gray);
-int  unpack(const unsigned char * bits, unsigned int *nbit, unsigned int 
index_bits);
-int  unpack_natural_or_gray(const unsigned char * bits, unsigned int *nbit, 
unsigned int index_bits, unsigned int gray);
-
-int lsp_bits(int i);
-int lspd_bits(int i);
-int lspdt_bits(int i);
-int lsp_pred_vq_bits(int i);
-
-void apply_lpc_correction(MODEL *model);
-float speech_to_uq_lsps(float lsp[],
-                       float ak[],
-                       float Sn[],
-                       float w[],
-                       int   order
-                       );
-int check_lsp_order(float lsp[], int lpc_order);
-void bw_expand_lsps(float lsp[], int order, float min_sep_low, float 
min_sep_high);
-void bw_expand_lsps2(float lsp[], int order);
-void locate_lsps_jnd_steps(float lsp[], int order);
-float decode_amplitudes(MODEL *model,
-                       float  ak[],
-                       int    lsp_indexes[],
-                       int    energy_index,
-                       float  lsps[],
-                       float *e);
-
-#endif
diff --git a/gr-vocoder/lib/codec2/rn.h b/gr-vocoder/lib/codec2/rn.h
deleted file mode 100644
index 934f458..0000000
--- a/gr-vocoder/lib/codec2/rn.h
+++ /dev/null
@@ -1,964 +0,0 @@
-/* Generated by rn_file() Octave function */
-
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-  -9.39481e-05,
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-  -6.65082e-05,
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-  -3.99444e-05,
-  -2.70061e-05,
-  -1.43041e-05,
-  -1.844e-06,
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-  9.8679e-05,
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-  0.000106157,
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-  9.43895e-05,
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-  4.75467e-05,
-  4.18011e-05,
-  3.60975e-05,
-  3.04382e-05,
-  2.483e-05,
-  1.9275e-05,
-  1.37796e-05,
-  8.34567e-06,
-  2.97965e-06,
-  -2.31702e-06,
-  -7.53795e-06,
-  -1.2682e-05,
-  -1.77428e-05,
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-  -9.43199e-05,
-  -9.71528e-05,
-  -9.98553e-05,
-  -0.000102424,
-  -0.00010486,
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-  -9.9026e-05,
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-  -9.16888e-05,
-  -8.9085e-05,
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-  -8.36678e-05,
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-  -4.97179e-05,
-  -4.63581e-05,
-  -4.29778e-05,
-  -3.95556e-05,
-  -3.61199e-05,
-  -3.26453e-05,
-  -2.91642e-05,
-  -2.56455e-05,
-  -2.21275e-05,
-  -1.85712e-05,
-  -1.50227e-05,
-  -1.14317e-05,
-  -7.85603e-06,
-  -4.22748e-06,
-  -6.22187e-07,
-  3.05918e-06,
-  6.70859e-06,
-  1.04905e-05,
-  1.42303e-05,
-  1.82863e-05,
-  2.2286e-05
-};
diff --git a/gr-vocoder/lib/codec2/sine.c b/gr-vocoder/lib/codec2/sine.c
deleted file mode 100644
index be4df00..0000000
--- a/gr-vocoder/lib/codec2/sine.c
+++ /dev/null
@@ -1,648 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: sine.c
-  AUTHOR......: David Rowe
-  DATE CREATED: 19/8/2010
-
-  Sinusoidal analysis and synthesis functions.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 1990-2010 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-/*---------------------------------------------------------------------------*\
-
-                               INCLUDES
-
-\*---------------------------------------------------------------------------*/
-
-#include <stdlib.h>
-#include <stdio.h>
-#include <math.h>
-
-#include "defines.h"
-#include "sine.h"
-#include "kiss_fft.h"
-
-#define HPF_BETA 0.125
-
-/*---------------------------------------------------------------------------*\
-
-                               HEADERS
-
-\*---------------------------------------------------------------------------*/
-
-void hs_pitch_refinement(MODEL *model, COMP Sw[], float pmin, float pmax,
-                        float pstep);
-
-/*---------------------------------------------------------------------------*\
-
-                               FUNCTIONS
-
-\*---------------------------------------------------------------------------*/
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: make_analysis_window
-  AUTHOR......: David Rowe
-  DATE CREATED: 11/5/94
-
-  Init function that generates the time domain analysis window and it's DFT.
-
-\*---------------------------------------------------------------------------*/
-
-void make_analysis_window(kiss_fft_cfg fft_fwd_cfg, float w[], COMP W[])
-{
-  float m;
-  COMP  wshift[FFT_ENC];
-  COMP  temp;
-  int   i,j;
-
-  /*
-     Generate Hamming window centered on M-sample pitch analysis window
-
-  0            M/2           M-1
-  |-------------|-------------|
-        |-------|-------|
-            NW samples
-
-     All our analysis/synthsis is centred on the M/2 sample.
-  */
-
-  m = 0.0;
-  for(i=0; i<M/2-NW/2; i++)
-    w[i] = 0.0;
-  for(i=M/2-NW/2,j=0; i<M/2+NW/2; i++,j++) {
-    w[i] = 0.5 - 0.5*cosf(TWO_PI*j/(NW-1));
-    m += w[i]*w[i];
-  }
-  for(i=M/2+NW/2; i<M; i++)
-    w[i] = 0.0;
-
-  /* Normalise - makes freq domain amplitude estimation straight
-     forward */
-
-  m = 1.0/sqrtf(m*FFT_ENC);
-  for(i=0; i<M; i++) {
-    w[i] *= m;
-  }
-
-  /*
-     Generate DFT of analysis window, used for later processing.  Note
-     we modulo FFT_ENC shift the time domain window w[], this makes the
-     imaginary part of the DFT W[] equal to zero as the shifted w[] is
-     even about the n=0 time axis if NW is odd.  Having the imag part
-     of the DFT W[] makes computation easier.
-
-     0                      FFT_ENC-1
-     |-------------------------|
-
-      ----\               /----
-           \             /
-            \           /          <- shifted version of window w[n]
-             \         /
-              \       /
-               -------
-
-     |---------|     |---------|
-       NW/2              NW/2
-  */
-
-  for(i=0; i<FFT_ENC; i++) {
-    wshift[i].real = 0.0;
-    wshift[i].imag = 0.0;
-  }
-  for(i=0; i<NW/2; i++)
-    wshift[i].real = w[i+M/2];
-  for(i=FFT_ENC-NW/2,j=M/2-NW/2; i<FFT_ENC; i++,j++)
-   wshift[i].real = w[j];
-
-  kiss_fft(fft_fwd_cfg, (kiss_fft_cpx *)wshift, (kiss_fft_cpx *)W);
-
-  /*
-      Re-arrange W[] to be symmetrical about FFT_ENC/2.  Makes later
-      analysis convenient.
-
-   Before:
-
-
-     0                 FFT_ENC-1
-     |----------|---------|
-     __                   _
-       \                 /
-        \_______________/
-
-   After:
-
-     0                 FFT_ENC-1
-     |----------|---------|
-               ___
-              /   \
-     ________/     \_______
-
-  */
-
-
-  for(i=0; i<FFT_ENC/2; i++) {
-    temp.real = W[i].real;
-    temp.imag = W[i].imag;
-    W[i].real = W[i+FFT_ENC/2].real;
-    W[i].imag = W[i+FFT_ENC/2].imag;
-    W[i+FFT_ENC/2].real = temp.real;
-    W[i+FFT_ENC/2].imag = temp.imag;
-  }
-
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: hpf
-  AUTHOR......: David Rowe
-  DATE CREATED: 16 Nov 2010
-
-  High pass filter with a -3dB point of about 160Hz.
-
-    y(n) = -HPF_BETA*y(n-1) + x(n) - x(n-1)
-
-\*---------------------------------------------------------------------------*/
-
-float hpf(float x, float states[])
-{
-    states[0] += -HPF_BETA*states[0] + x - states[1];
-    states[1] = x;
-
-    return states[0];
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: dft_speech
-  AUTHOR......: David Rowe
-  DATE CREATED: 27/5/94
-
-  Finds the DFT of the current speech input speech frame.
-
-\*---------------------------------------------------------------------------*/
-
-void dft_speech(kiss_fft_cfg fft_fwd_cfg, COMP Sw[], float Sn[], float w[])
-{
-  int  i;
-  COMP sw[FFT_ENC];
-
-  for(i=0; i<FFT_ENC; i++) {
-    sw[i].real = 0.0;
-    sw[i].imag = 0.0;
-  }
-
-  /* Centre analysis window on time axis, we need to arrange input
-     to FFT this way to make FFT phases correct */
-
-  /* move 2nd half to start of FFT input vector */
-
-  for(i=0; i<NW/2; i++)
-    sw[i].real = Sn[i+M/2]*w[i+M/2];
-
-  /* move 1st half to end of FFT input vector */
-
-  for(i=0; i<NW/2; i++)
-    sw[FFT_ENC-NW/2+i].real = Sn[i+M/2-NW/2]*w[i+M/2-NW/2];
-
-  kiss_fft(fft_fwd_cfg, (kiss_fft_cpx *)sw, (kiss_fft_cpx *)Sw);
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: two_stage_pitch_refinement
-  AUTHOR......: David Rowe
-  DATE CREATED: 27/5/94
-
-  Refines the current pitch estimate using the harmonic sum pitch
-  estimation technique.
-
-\*---------------------------------------------------------------------------*/
-
-void two_stage_pitch_refinement(MODEL *model, COMP Sw[])
-{
-  float pmin,pmax,pstep;       /* pitch refinment minimum, maximum and step */
-
-  /* Coarse refinement */
-
-  pmax = TWO_PI/model->Wo + 5;
-  pmin = TWO_PI/model->Wo - 5;
-  pstep = 1.0;
-  hs_pitch_refinement(model,Sw,pmin,pmax,pstep);
-
-  /* Fine refinement */
-
-  pmax = TWO_PI/model->Wo + 1;
-  pmin = TWO_PI/model->Wo - 1;
-  pstep = 0.25;
-  hs_pitch_refinement(model,Sw,pmin,pmax,pstep);
-
-  /* Limit range */
-
-  if (model->Wo < TWO_PI/P_MAX)
-    model->Wo = TWO_PI/P_MAX;
-  if (model->Wo > TWO_PI/P_MIN)
-    model->Wo = TWO_PI/P_MIN;
-
-  model->L = floor(PI/model->Wo);
-}
-
-/*---------------------------------------------------------------------------*\
-
- FUNCTION....: hs_pitch_refinement
- AUTHOR......: David Rowe
- DATE CREATED: 27/5/94
-
- Harmonic sum pitch refinement function.
-
- pmin   pitch search range minimum
- pmax  pitch search range maximum
- step   pitch search step size
- model current pitch estimate in model.Wo
-
- model         refined pitch estimate in model.Wo
-
-\*---------------------------------------------------------------------------*/
-
-void hs_pitch_refinement(MODEL *model, COMP Sw[], float pmin, float pmax, 
float pstep)
-{
-  int m;               /* loop variable */
-  int b;               /* bin for current harmonic centre */
-  float E;             /* energy for current pitch*/
-  float Wo;            /* current "test" fundamental freq. */
-  float Wom;           /* Wo that maximises E */
-  float Em;            /* mamimum energy */
-  float r, one_on_r;   /* number of rads/bin */
-  float p;             /* current pitch */
-
-  /* Initialisation */
-
-  model->L = PI/model->Wo;     /* use initial pitch est. for L */
-  Wom = model->Wo;
-  Em = 0.0;
-  r = TWO_PI/FFT_ENC;
-  one_on_r = 1.0/r;
-
-  /* Determine harmonic sum for a range of Wo values */
-
-  for(p=pmin; p<=pmax; p+=pstep) {
-    E = 0.0;
-    Wo = TWO_PI/p;
-
-    /* Sum harmonic magnitudes */
-    for(m=1; m<=model->L; m++) {
-        b = (int)(m*Wo*one_on_r + 0.5);
-        E += Sw[b].real*Sw[b].real + Sw[b].imag*Sw[b].imag;
-    }
-    /* Compare to see if this is a maximum */
-
-    if (E > Em) {
-      Em = E;
-      Wom = Wo;
-    }
-  }
-
-  model->Wo = Wom;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: estimate_amplitudes
-  AUTHOR......: David Rowe
-  DATE CREATED: 27/5/94
-
-  Estimates the complex amplitudes of the harmonics.
-
-\*---------------------------------------------------------------------------*/
-
-void estimate_amplitudes(MODEL *model, COMP Sw[], COMP W[], int est_phase)
-{
-  int   i,m;           /* loop variables */
-  int   am,bm;         /* bounds of current harmonic */
-  int   b;             /* DFT bin of centre of current harmonic */
-  float den;           /* denominator of amplitude expression */
-  float r, one_on_r;   /* number of rads/bin */
-  int   offset;
-  COMP  Am;
-
-  r = TWO_PI/FFT_ENC;
-  one_on_r = 1.0/r;
-
-  for(m=1; m<=model->L; m++) {
-    den = 0.0;
-    am = (int)((m - 0.5)*model->Wo*one_on_r + 0.5);
-    bm = (int)((m + 0.5)*model->Wo*one_on_r + 0.5);
-    b = (int)(m*model->Wo/r + 0.5);
-
-    /* Estimate ampltude of harmonic */
-
-    den = 0.0;
-    Am.real = Am.imag = 0.0;
-    offset = FFT_ENC/2 - (int)(m*model->Wo*one_on_r + 0.5);
-    for(i=am; i<bm; i++) {
-      den += Sw[i].real*Sw[i].real + Sw[i].imag*Sw[i].imag;
-      Am.real += Sw[i].real*W[i + offset].real;
-      Am.imag += Sw[i].imag*W[i + offset].real;
-    }
-
-    model->A[m] = sqrtf(den);
-
-    if (est_phase) {
-
-        /* Estimate phase of harmonic, this is expensive in CPU for
-           embedded devicesso we make it an option */
-
-        model->phi[m] = atan2(Sw[b].imag,Sw[b].real);
-    }
-  }
-}
-
-/*---------------------------------------------------------------------------*\
-
-  est_voicing_mbe()
-
-  Returns the error of the MBE cost function for a fiven F0.
-
-  Note: I think a lot of the operations below can be simplified as
-  W[].imag = 0 and has been normalised such that den always equals 1.
-
-\*---------------------------------------------------------------------------*/
-
-float est_voicing_mbe(
-    MODEL *model,
-    COMP   Sw[],
-    COMP   W[],
-    COMP   Sw_[],         /* DFT of all voiced synthesised signal  */
-                          /* useful for debugging/dump file        */
-    COMP   Ew[],          /* DFT of error                          */
-    float prev_Wo)
-{
-    int   i,l,al,bl,m;    /* loop variables */
-    COMP  Am;             /* amplitude sample for this band */
-    int   offset;         /* centers Hw[] about current harmonic */
-    float den;            /* denominator of Am expression */
-    float error;          /* accumulated error between original and 
synthesised */
-    float Wo;
-    float sig, snr;
-    float elow, ehigh, eratio;
-    float sixty;
-
-    sig = 1E-4;
-    for(l=1; l<=model->L/4; l++) {
-       sig += model->A[l]*model->A[l];
-    }
-    for(i=0; i<FFT_ENC; i++) {
-       Sw_[i].real = 0.0;
-       Sw_[i].imag = 0.0;
-       Ew[i].real = 0.0;
-       Ew[i].imag = 0.0;
-    }
-
-    Wo = model->Wo;
-    error = 1E-4;
-
-    /* Just test across the harmonics in the first 1000 Hz (L/4) */
-
-    for(l=1; l<=model->L/4; l++) {
-       Am.real = 0.0;
-       Am.imag = 0.0;
-       den = 0.0;
-       al = ceil((l - 0.5)*Wo*FFT_ENC/TWO_PI);
-       bl = ceil((l + 0.5)*Wo*FFT_ENC/TWO_PI);
-
-       /* Estimate amplitude of harmonic assuming harmonic is totally voiced */
-
-        offset = FFT_ENC/2 - l*Wo*FFT_ENC/TWO_PI + 0.5;
-       for(m=al; m<bl; m++) {
-           Am.real += Sw[m].real*W[offset+m].real;
-           Am.imag += Sw[m].imag*W[offset+m].real;
-           den += W[offset+m].real*W[offset+m].real;
-        }
-
-        Am.real = Am.real/den;
-        Am.imag = Am.imag/den;
-
-        /* Determine error between estimated harmonic and original */
-
-        offset = FFT_ENC/2 - l*Wo*FFT_ENC/TWO_PI + 0.5;
-        for(m=al; m<bl; m++) {
-           Sw_[m].real = Am.real*W[offset+m].real;
-           Sw_[m].imag = Am.imag*W[offset+m].real;
-           Ew[m].real = Sw[m].real - Sw_[m].real;
-           Ew[m].imag = Sw[m].imag - Sw_[m].imag;
-           error += Ew[m].real*Ew[m].real;
-           error += Ew[m].imag*Ew[m].imag;
-       }
-    }
-
-    snr = 10.0*log10f(sig/error);
-    if (snr > V_THRESH)
-       model->voiced = 1;
-    else
-       model->voiced = 0;
-
-    /* post processing, helps clean up some voicing errors ------------------*/
-
-    /*
-       Determine the ratio of low freqency to high frequency energy,
-       voiced speech tends to be dominated by low frequency energy,
-       unvoiced by high frequency. This measure can be used to
-       determine if we have made any gross errors.
-    */
-
-    elow = ehigh = 1E-4;
-    for(l=1; l<=model->L/2; l++) {
-       elow += model->A[l]*model->A[l];
-    }
-    for(l=model->L/2; l<=model->L; l++) {
-       ehigh += model->A[l]*model->A[l];
-    }
-    eratio = 10.0*log10f(elow/ehigh);
-
-    /* Look for Type 1 errors, strongly V speech that has been
-       accidentally declared UV */
-
-    if (model->voiced == 0)
-       if (eratio > 10.0)
-           model->voiced = 1;
-
-    /* Look for Type 2 errors, strongly UV speech that has been
-       accidentally declared V */
-
-    if (model->voiced == 1) {
-       if (eratio < -10.0)
-           model->voiced = 0;
-
-       /* A common source of Type 2 errors is the pitch estimator
-          gives a low (50Hz) estimate for UV speech, which gives a
-          good match with noise due to the close harmoonic spacing.
-          These errors are much more common than people with 50Hz3
-          pitch, so we have just a small eratio threshold. */
-
-       sixty = 60.0*TWO_PI/FS;
-       if ((eratio < -4.0) && (model->Wo <= sixty))
-           model->voiced = 0;
-    }
-    //printf(" v: %d snr: %f eratio: %3.2f %f\n",model->voiced,snr,eratio,dF0);
-
-    return snr;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: make_synthesis_window
-  AUTHOR......: David Rowe
-  DATE CREATED: 11/5/94
-
-  Init function that generates the trapezoidal (Parzen) sythesis window.
-
-\*---------------------------------------------------------------------------*/
-
-void make_synthesis_window(float Pn[])
-{
-  int   i;
-  float win;
-
-  /* Generate Parzen window in time domain */
-
-  win = 0.0;
-  for(i=0; i<N/2-TW; i++)
-    Pn[i] = 0.0;
-  win = 0.0;
-  for(i=N/2-TW; i<N/2+TW; win+=1.0/(2*TW), i++ )
-    Pn[i] = win;
-  for(i=N/2+TW; i<3*N/2-TW; i++)
-    Pn[i] = 1.0;
-  win = 1.0;
-  for(i=3*N/2-TW; i<3*N/2+TW; win-=1.0/(2*TW), i++)
-    Pn[i] = win;
-  for(i=3*N/2+TW; i<2*N; i++)
-    Pn[i] = 0.0;
-}
-
-/*---------------------------------------------------------------------------*\
-
-  FUNCTION....: synthesise
-  AUTHOR......: David Rowe
-  DATE CREATED: 20/2/95
-
-  Synthesise a speech signal in the frequency domain from the
-  sinusodal model parameters.  Uses overlap-add with a trapezoidal
-  window to smoothly interpolate betwen frames.
-
-\*---------------------------------------------------------------------------*/
-
-void synthesise(
-  kiss_fft_cfg fft_inv_cfg,
-  float  Sn_[],                /* time domain synthesised signal              
*/
-  MODEL *model,                /* ptr to model parameters for this frame      
*/
-  float  Pn[],         /* time domain Parzen window                   */
-  int    shift          /* flag used to handle transition frames       */
-)
-{
-    int   i,l,j,b;     /* loop variables */
-    COMP  Sw_[FFT_DEC];        /* DFT of synthesised signal */
-    COMP  sw_[FFT_DEC];        /* synthesised signal */
-
-    if (shift) {
-       /* Update memories */
-       for(i=0; i<N-1; i++) {
-           Sn_[i] = Sn_[i+N];
-       }
-       Sn_[N-1] = 0.0;
-    }
-
-    for(i=0; i<FFT_DEC; i++) {
-       Sw_[i].real = 0.0;
-       Sw_[i].imag = 0.0;
-    }
-
-    /*
-      Nov 2010 - found that synthesis using time domain cos() functions
-      gives better results for synthesis frames greater than 10ms.  Inverse
-      FFT synthesis using a 512 pt FFT works well for 10ms window.  I think
-      (but am not sure) that the problem is related to the quantisation of
-      the harmonic frequencies to the FFT bin size, e.g. there is a
-      8000/512 Hz step between FFT bins.  For some reason this makes
-      the speech from longer frame > 10ms sound poor.  The effect can also
-      be seen when synthesising test signals like single sine waves, some
-      sort of amplitude modulation at the frame rate.
-
-      Another possibility is using a larger FFT size (1024 or 2048).
-    */
-
-#define FFT_SYNTHESIS
-#ifdef FFT_SYNTHESIS
-    /* Now set up frequency domain synthesised speech */
-    for(l=1; l<=model->L; l++) {
-    //for(l=model->L/2; l<=model->L; l++) {
-    //for(l=1; l<=model->L/4; l++) {
-       b = (int)(l*model->Wo*FFT_DEC/TWO_PI + 0.5);
-       if (b > ((FFT_DEC/2)-1)) {
-               b = (FFT_DEC/2)-1;
-       }
-       Sw_[b].real = model->A[l]*cosf(model->phi[l]);
-       Sw_[b].imag = model->A[l]*sinf(model->phi[l]);
-       Sw_[FFT_DEC-b].real = Sw_[b].real;
-       Sw_[FFT_DEC-b].imag = -Sw_[b].imag;
-    }
-
-    /* Perform inverse DFT */
-
-    kiss_fft(fft_inv_cfg, (kiss_fft_cpx *)Sw_, (kiss_fft_cpx *)sw_);
-#else
-    /*
-       Direct time domain synthesis using the cos() function.  Works
-       well at 10ms and 20ms frames rates.  Note synthesis window is
-       still used to handle overlap-add between adjacent frames.  This
-       could be simplified as we don't need to synthesise where Pn[]
-       is zero.
-    */
-    for(l=1; l<=model->L; l++) {
-       for(i=0,j=-N+1; i<N-1; i++,j++) {
-           Sw_[FFT_DEC-N+1+i].real += 2.0*model->A[l]*cos(j*model->Wo*l + 
model->phi[l]);
-       }
-       for(i=N-1,j=0; i<2*N; i++,j++)
-           Sw_[j].real += 2.0*model->A[l]*cos(j*model->Wo*l + model->phi[l]);
-    }
-#endif
-
-    /* Overlap add to previous samples */
-
-    for(i=0; i<N-1; i++) {
-       Sn_[i] += sw_[FFT_DEC-N+1+i].real*Pn[i];
-    }
-
-    if (shift)
-       for(i=N-1,j=0; i<2*N; i++,j++)
-           Sn_[i] = sw_[j].real*Pn[i];
-    else
-       for(i=N-1,j=0; i<2*N; i++,j++)
-           Sn_[i] += sw_[j].real*Pn[i];
-}
-
-
-static unsigned long next = 1;
-
-int codec2_rand(void) {
-    next = next * 1103515245 + 12345;
-    return((unsigned)(next/65536) % 32768);
-}
-
diff --git a/gr-vocoder/lib/codec2/sine.h b/gr-vocoder/lib/codec2/sine.h
deleted file mode 100644
index 3a3ce46..0000000
--- a/gr-vocoder/lib/codec2/sine.h
+++ /dev/null
@@ -1,48 +0,0 @@
-/*---------------------------------------------------------------------------*\
-
-  FILE........: sine.h
-  AUTHOR......: David Rowe
-  DATE CREATED: 1/11/94
-
-  Header file for sinusoidal analysis and synthesis functions.
-
-\*---------------------------------------------------------------------------*/
-
-/*
-  Copyright (C) 2009 David Rowe
-
-  All rights reserved.
-
-  This program is free software; you can redistribute it and/or modify
-  it under the terms of the GNU Lesser General Public License version 2.1, as
-  published by the Free Software Foundation.  This program is
-  distributed in the hope that it will be useful, but WITHOUT ANY
-  WARRANTY; without even the implied warranty of MERCHANTABILITY or
-  FITNESS FOR A PARTICULAR PURPOSE.  See the GNU General Public
-  License for more details.
-
-  You should have received a copy of the GNU Lesser General Public License
-  along with this program; if not, see <http://www.gnu.org/licenses/>.
-*/
-
-#ifndef __SINE__
-#define __SINE__
-
-#include "defines.h"
-#include "comp.h"
-#include "kiss_fft.h"
-
-void make_analysis_window(kiss_fft_cfg fft_fwd_cfg, float w[], COMP W[]);
-float hpf(float x, float states[]);
-void dft_speech(kiss_fft_cfg fft_fwd_cfg, COMP Sw[], float Sn[], float w[]);
-void two_stage_pitch_refinement(MODEL *model, COMP Sw[]);
-void estimate_amplitudes(MODEL *model, COMP Sw[], COMP W[], int est_phase);
-float est_voicing_mbe(MODEL *model, COMP Sw[], COMP W[], COMP Sw_[],COMP Ew[],
-                     float prev_Wo);
-void make_synthesis_window(float Pn[]);
-void synthesise(kiss_fft_cfg fft_inv_cfg, float Sn_[], MODEL *model, float 
Pn[], int shift);
-
-#define CODEC2_RAND_MAX 32767
-int codec2_rand(void);
-
-#endif
diff --git a/gr-vocoder/lib/codec2/test_bits.h 
b/gr-vocoder/lib/codec2/test_bits.h
deleted file mode 100644
index d1c01a0..0000000
--- a/gr-vocoder/lib/codec2/test_bits.h
+++ /dev/null
@@ -1,164 +0,0 @@
-/* Generated by test_bits_file() Octave function */
-
-const int test_bits[]={
-  0,
-  1,
-  1,
-  0,
-  0,
-  0,
-  1,
-  1,
-  0,
-  0,
-  1,
-  0,
-  1,
-  0,
-  0,
-  1,
-  0,
-  1,
-  1,
-  0,
-  0,
-  1,
-  1,
-  0,
-  0,
-  0,
-  0,
-  0,
-  0,
-  0,
-  0,
-  0,
-  0,
-  0,
-  0,
-  0,
-  1,
-  1,
-  1,
-  0,
-  1,
-  1,
-  0,
-  0,
-  1,
-  1,
-  1,
-  0,
-  1,
-  1,
-  0,
-  1,
-  1,
-  1,
-  1,
-  1,
-  0,
-  0,
-  1,
-  0,
-  0,
-  1,
-  1,
-  1,
-  0,
-  0,
-  1,
-  1,
-  1,
-  0,
-  0,
-  0,
-  0,
-  1,
-  1,
-  1,
-  0,
-  0,
-  1,
-  1,
-  1,
-  1,
-  1,
-  0,
-  1,
-  1,
-  1,
-  0,
-  0,
-  1,
-  1,
-  0,
-  1,
-  1,
-  1,
-  1,
-  1,
-  1,
-  1,
-  0,
-  0,
-  1,
-  1,
-  0,
-  1,
-  0,
-  0,
-  0,
-  1,
-  1,
-  1,
-  0,
-  0,
-  0,
-  0,
-  1,
-  1,
-  1,
-  1,
-  1,
-  0,
-  1,
-  1,
-  0,
-  0,
-  0,
-  1,
-  0,
-  0,
-  1,
-  0,
-  0,
-  0,
-  1,
-  0,
-  0,
-  1,
-  0,
-  0,
-  0,
-  0,
-  0,
-  0,
-  0,
-  0,
-  1,
-  1,
-  0,
-  1,
-  1,
-  0,
-  0,
-  0,
-  1,
-  0,
-  1,
-  1,
-  1,
-  0,
-  1
-};



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