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1 /*
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2 * cluster_segmenter.c
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3 * soundbite
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4 *
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5 * Created by Mark Levy on 06/04/2006.
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6 * Copyright 2006 Centre for Digital Music, Queen Mary, University of London.
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7
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8 This program is free software; you can redistribute it and/or
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9 modify it under the terms of the GNU General Public License as
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10 published by the Free Software Foundation; either version 2 of the
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11 License, or (at your option) any later version. See the file
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12 COPYING included with this distribution for more information.
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13 *
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14 */
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15
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16 #include "cluster_segmenter.h"
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17
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18 extern int readmatarray_size(const char *filepath, int n_array, int* t, int* d);
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19 extern int readmatarray(const char *filepath, int n_array, int t, int d, double** arr);
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20
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21 /* converts constant-Q features to normalised chroma */
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22 void cq2chroma(double** cq, int nframes, int ncoeff, int bins, double** chroma)
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23 {
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24 int noct = ncoeff / bins; /* number of complete octaves in constant-Q */
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25 int t, b, oct, ix;
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26 //double maxchroma; /* max chroma value at each time, for normalisation */
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27 //double sum; /* for normalisation */
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28
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29 for (t = 0; t < nframes; t++)
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30 {
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31 for (b = 0; b < bins; b++)
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32 chroma[t][b] = 0;
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33 for (oct = 0; oct < noct; oct++)
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34 {
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35 ix = oct * bins;
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36 for (b = 0; b < bins; b++)
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37 chroma[t][b] += fabs(cq[t][ix+b]);
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38 }
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39 /* normalise to unit sum
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40 sum = 0;
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41 for (b = 0; b < bins; b++)
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42 sum += chroma[t][b];
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43 for (b = 0; b < bins; b++)
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44 chroma[t][b] /= sum;
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45 */
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46 /* normalise to unit max - NO this made results much worse!
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47 maxchroma = 0;
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48 for (b = 0; b < bins; b++)
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49 if (chroma[t][b] > maxchroma)
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50 maxchroma = chroma[t][b];
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51 if (maxchroma > 0)
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52 for (b = 0; b < bins; b++)
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53 chroma[t][b] /= maxchroma;
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54 */
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55 }
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56 }
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57
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58 /* applies MPEG-7 normalisation to constant-Q features, storing normalised envelope (norm) in last feature dimension */
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59 void mpeg7_constq(double** features, int nframes, int ncoeff)
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60 {
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61 int i, j;
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62 double ss;
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63 double env;
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64 double maxenv = 0;
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65
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66 /* convert const-Q features to dB scale */
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67 for (i = 0; i < nframes; i++)
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68 for (j = 0; j < ncoeff; j++)
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69 features[i][j] = 10.0 * log10(features[i][j]+DBL_EPSILON);
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70
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71 /* normalise each feature vector and add the norm as an extra feature dimension */
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72 for (i = 0; i < nframes; i++)
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73 {
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74 ss = 0;
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75 for (j = 0; j < ncoeff; j++)
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76 ss += features[i][j] * features[i][j];
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77 env = sqrt(ss);
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78 for (j = 0; j < ncoeff; j++)
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79 features[i][j] /= env;
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80 features[i][ncoeff] = env;
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81 if (env > maxenv)
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82 maxenv = env;
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83 }
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84 /* normalise the envelopes */
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85 for (i = 0; i < nframes; i++)
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86 features[i][ncoeff] /= maxenv;
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87 }
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88
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89 /* return histograms h[nx*m] of data x[nx] into m bins using a sliding window of length h_len (MUST BE ODD) */
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90 /* NB h is a vector in row major order, as required by cluster_melt() */
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91 /* for historical reasons we normalise the histograms by their norm (not to sum to one) */
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92 void create_histograms(int* x, int nx, int m, int hlen, double* h)
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93 {
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94 int i, j, t;
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95 double norm;
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96
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97 for (i = 0; i < nx*m; i++)
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98 h[i] = 0;
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99
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100 for (i = hlen/2; i < nx-hlen/2; i++)
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101 {
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102 for (j = 0; j < m; j++)
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103 h[i*m+j] = 0;
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104 for (t = i-hlen/2; t <= i+hlen/2; t++)
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105 ++h[i*m+x[t]];
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106 norm = 0;
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107 for (j = 0; j < m; j++)
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108 norm += h[i*m+j] * h[i*m+j];
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109 for (j = 0; j < m; j++)
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110 h[i*m+j] /= norm;
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111 }
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112
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113 /* duplicate histograms at beginning and end to create one histogram for each data value supplied */
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114 for (i = 0; i < hlen/2; i++)
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115 for (j = 0; j < m; j++)
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116 h[i*m+j] = h[hlen/2*m+j];
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117 for (i = nx-hlen/2; i < nx; i++)
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118 for (j = 0; j < m; j++)
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119 h[i*m+j] = h[(nx-hlen/2-1)*m+j];
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120 }
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121
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122 /* segment using HMM and then histogram clustering */
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123 void cluster_segment(int* q, double** features, int frames_read, int feature_length, int nHMM_states,
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124 int histogram_length, int nclusters, int neighbour_limit)
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125 {
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126 int i, j;
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127
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128 /*****************************/
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129 if (0) {
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130 /* try just using the predominant bin number as a 'decoded state' */
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131 nHMM_states = feature_length + 1; /* allow a 'zero' state */
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132 double chroma_thresh = 0.05;
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133 double maxval;
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134 int maxbin;
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135 for (i = 0; i < frames_read; i++)
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136 {
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137 maxval = 0;
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138 for (j = 0; j < feature_length; j++)
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139 {
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140 if (features[i][j] > maxval)
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141 {
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142 maxval = features[i][j];
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143 maxbin = j;
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144 }
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145 }
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146 if (maxval > chroma_thresh)
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147 q[i] = maxbin;
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148 else
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149 q[i] = feature_length;
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150 }
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151
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152 }
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153 if (1) {
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154 /*****************************/
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155
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156
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157 /* scale all the features to 'balance covariances' during HMM training */
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158 double scale = 10;
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159 for (i = 0; i < frames_read; i++)
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160 for (j = 0; j < feature_length; j++)
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161 features[i][j] *= scale;
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162
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163 /* train an HMM on the features */
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164
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165 /* create a model */
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166 model_t* model = hmm_init(features, frames_read, feature_length, nHMM_states);
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167
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168 /* train the model */
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169 hmm_train(features, frames_read, model);
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170 /*
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171 printf("\n\nafter training:\n");
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172 hmm_print(model);
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173 */
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174 /* decode the hidden state sequence */
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175 viterbi_decode(features, frames_read, model, q);
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176 hmm_close(model);
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177
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178 /*****************************/
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179 }
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180 /*****************************/
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181
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182
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183 /*
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184 fprintf(stderr, "HMM state sequence:\n");
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185 for (i = 0; i < frames_read; i++)
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186 fprintf(stderr, "%d ", q[i]);
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187 fprintf(stderr, "\n\n");
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188 */
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189
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190 /* create histograms of states */
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191 double* h = (double*) malloc(frames_read*nHMM_states*sizeof(double)); /* vector in row major order */
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192 create_histograms(q, frames_read, nHMM_states, histogram_length, h);
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193
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194 /* cluster the histograms */
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195 int nbsched = 20; /* length of inverse temperature schedule */
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196 double* bsched = (double*) malloc(nbsched*sizeof(double)); /* inverse temperature schedule */
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197 double b0 = 100;
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198 double alpha = 0.7;
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199 bsched[0] = b0;
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200 for (i = 1; i < nbsched; i++)
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201 bsched[i] = alpha * bsched[i-1];
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202 cluster_melt(h, nHMM_states, frames_read, bsched, nbsched, nclusters, neighbour_limit, q);
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203
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204 /* now q holds a sequence of cluster assignments */
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205
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206 free(h);
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207 free(bsched);
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208 }
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209
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210 /* segment constant-Q or chroma features */
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211 void constq_segment(int* q, double** features, int frames_read, int bins, int ncoeff, int feature_type,
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212 int nHMM_states, int histogram_length, int nclusters, int neighbour_limit)
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213 {
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214 int feature_length;
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215 double** chroma;
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216 int i;
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217
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218 if (feature_type == FEATURE_TYPE_CONSTQ)
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219 {
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220 /* fprintf(stderr, "Converting to dB and normalising...\n");
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221 */
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222 mpeg7_constq(features, frames_read, ncoeff);
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223 /*
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224 fprintf(stderr, "Running PCA...\n");
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225 */
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226 /* do PCA on the features (but not the envelope) */
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227 int ncomponents = 20;
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228 pca_project(features, frames_read, ncoeff, ncomponents);
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229
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230 /* copy the envelope so that it immediatly follows the chosen components */
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231 for (i = 0; i < frames_read; i++)
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232 features[i][ncomponents] = features[i][ncoeff];
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233
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234 feature_length = ncomponents + 1;
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235
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236 /**************************************
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237 //TEST
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238 // feature file name
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239 char* dir = "/Users/mark/documents/semma/audio/";
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240 char* file_name = (char*) malloc((strlen(dir) + strlen(trackname) + strlen("_features_c20r8h0.2f0.6.mat") + 1)*sizeof(char));
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241 strcpy(file_name, dir);
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242 strcat(file_name, trackname);
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243 strcat(file_name, "_features_c20r8h0.2f0.6.mat");
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244
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245 // get the features from Matlab from mat-file
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246 int frames_in_file;
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247 readmatarray_size(file_name, 2, &frames_in_file, &feature_length);
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248 readmatarray(file_name, 2, frames_in_file, feature_length, features);
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249 // copy final frame to ensure that we get as many as we expected
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250 int missing_frames = frames_read - frames_in_file;
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251 while (missing_frames > 0)
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252 {
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253 for (i = 0; i < feature_length; i++)
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254 features[frames_read-missing_frames][i] = features[frames_read-missing_frames-1][i];
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255 --missing_frames;
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256 }
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257
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258 free(file_name);
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259 ******************************************/
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260
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261 cluster_segment(q, features, frames_read, feature_length, nHMM_states, histogram_length, nclusters, neighbour_limit);
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262 }
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263
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264 if (feature_type == FEATURE_TYPE_CHROMA)
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265 {
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266 /*
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267 fprintf(stderr, "Converting to chroma features...\n");
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268 */
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269 /* convert constant-Q to normalised chroma features */
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270 chroma = (double**) malloc(frames_read*sizeof(double*));
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271 for (i = 0; i < frames_read; i++)
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272 chroma[i] = (double*) malloc(bins*sizeof(double));
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273 cq2chroma(features, frames_read, ncoeff, bins, chroma);
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274 feature_length = bins;
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275
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276 cluster_segment(q, chroma, frames_read, feature_length, nHMM_states, histogram_length, nclusters, neighbour_limit);
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277
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278 for (i = 0; i < frames_read; i++)
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279 free(chroma[i]);
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280 free(chroma);
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281 }
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282 }
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283
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284
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285
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