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{
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|---|---|
| 2 |
"metadata": {
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| 3 |
"kernelspec": {
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| 4 |
"display_name": "Python 2", |
| 5 |
"language": "python", |
| 6 |
"name": "python2" |
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}, |
| 8 |
"language_info": {
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| 9 |
"codemirror_mode": {
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"name": "ipython", |
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"version": 2 |
| 12 |
}, |
| 13 |
"file_extension": ".py", |
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"mimetype": "text/x-python", |
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"name": "python", |
| 16 |
"nbconvert_exporter": "python", |
| 17 |
"pygments_lexer": "ipython2", |
| 18 |
"version": "2.7.10" |
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"name": "" |
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{
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| 27 |
{
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"cell_type": "code", |
| 29 |
"collapsed": true, |
| 30 |
"input": [ |
| 31 |
"import vamp" |
| 32 |
], |
| 33 |
"language": "python", |
| 34 |
"metadata": {},
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| 35 |
"outputs": [], |
| 36 |
"prompt_number": 1 |
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}, |
| 38 |
{
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| 39 |
"cell_type": "code", |
| 40 |
"collapsed": false, |
| 41 |
"input": [ |
| 42 |
"import librosa" |
| 43 |
], |
| 44 |
"language": "python", |
| 45 |
"metadata": {},
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| 46 |
"outputs": [ |
| 47 |
{
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"output_type": "stream", |
| 49 |
"stream": "stderr", |
| 50 |
"text": [ |
| 51 |
"/usr/lib/python2.7/site-packages/librosa/core/audio.py:33: UserWarning: Could not import scikits.samplerate. Falling back to scipy.signal\n", |
| 52 |
" warnings.warn('Could not import scikits.samplerate. '\n"
|
| 53 |
] |
| 54 |
} |
| 55 |
], |
| 56 |
"prompt_number": 2 |
| 57 |
}, |
| 58 |
{
|
| 59 |
"cell_type": "code", |
| 60 |
"collapsed": true, |
| 61 |
"input": [ |
| 62 |
"import matplotlib.pyplot as plt" |
| 63 |
], |
| 64 |
"language": "python", |
| 65 |
"metadata": {},
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| 66 |
"outputs": [], |
| 67 |
"prompt_number": 3 |
| 68 |
}, |
| 69 |
{
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| 70 |
"cell_type": "code", |
| 71 |
"collapsed": true, |
| 72 |
"input": [ |
| 73 |
"%matplotlib inline" |
| 74 |
], |
| 75 |
"language": "python", |
| 76 |
"metadata": {},
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| 77 |
"outputs": [], |
| 78 |
"prompt_number": 4 |
| 79 |
}, |
| 80 |
{
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| 81 |
"cell_type": "code", |
| 82 |
"collapsed": false, |
| 83 |
"input": [ |
| 84 |
"vamp.list_plugins()" |
| 85 |
], |
| 86 |
"language": "python", |
| 87 |
"metadata": {},
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| 88 |
"outputs": [ |
| 89 |
{
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| 90 |
"metadata": {},
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| 91 |
"output_type": "pyout", |
| 92 |
"prompt_number": 5, |
| 93 |
"text": [ |
| 94 |
"['bbc-vamp-plugins:bbc-energy',\n", |
| 95 |
" 'bbc-vamp-plugins:bbc-intensity',\n", |
| 96 |
" 'bbc-vamp-plugins:bbc-peaks',\n", |
| 97 |
" 'bbc-vamp-plugins:bbc-rhythm',\n", |
| 98 |
" 'bbc-vamp-plugins:bbc-spectral-contrast',\n", |
| 99 |
" 'bbc-vamp-plugins:bbc-spectral-flux',\n", |
| 100 |
" 'bbc-vamp-plugins:bbc-speechmusic-segmenter',\n", |
| 101 |
" 'cepstral-pitchtracker:cepstral-pitchtracker',\n", |
| 102 |
" 'chp:constrainedharmonicpeak',\n", |
| 103 |
" 'cqvamp:cqchromavamp',\n", |
| 104 |
" 'cqvamp:cqvamp',\n", |
| 105 |
" 'cqvamp:cqvampmidi',\n", |
| 106 |
" 'match-vamp-plugin:match',\n", |
| 107 |
" 'nnls-chroma:chordino',\n", |
| 108 |
" 'nnls-chroma:nnls-chroma',\n", |
| 109 |
" 'nnls-chroma:tuning',\n", |
| 110 |
" 'pyin:localcandidatepyin',\n", |
| 111 |
" 'pyin:pyin',\n", |
| 112 |
" 'pyin:yin',\n", |
| 113 |
" 'pyin:yinfc',\n", |
| 114 |
" 'qm-vamp-plugins:qm-adaptivespectrogram',\n", |
| 115 |
" 'qm-vamp-plugins:qm-barbeattracker',\n", |
| 116 |
" 'qm-vamp-plugins:qm-chromagram',\n", |
| 117 |
" 'qm-vamp-plugins:qm-constantq',\n", |
| 118 |
" 'qm-vamp-plugins:qm-dwt',\n", |
| 119 |
" 'qm-vamp-plugins:qm-keydetector',\n", |
| 120 |
" 'qm-vamp-plugins:qm-mfcc',\n", |
| 121 |
" 'qm-vamp-plugins:qm-onsetdetector',\n", |
| 122 |
" 'qm-vamp-plugins:qm-segmenter',\n", |
| 123 |
" 'qm-vamp-plugins:qm-similarity',\n", |
| 124 |
" 'qm-vamp-plugins:qm-tempotracker',\n", |
| 125 |
" 'qm-vamp-plugins:qm-tonalchange',\n", |
| 126 |
" 'qm-vamp-plugins:qm-transcription',\n", |
| 127 |
" 'segmentino:segmentino',\n", |
| 128 |
" 'silvet:silvet',\n", |
| 129 |
" 'simple-cepstrum:simple-cepstrum',\n", |
| 130 |
" 'tempogram:tempogram',\n", |
| 131 |
" 'vamp-aubio:aubionotes',\n", |
| 132 |
" 'vamp-aubio:aubioonset',\n", |
| 133 |
" 'vamp-aubio:aubiopitch',\n", |
| 134 |
" 'vamp-aubio:aubiosilence',\n", |
| 135 |
" 'vamp-aubio:aubiotempo',\n", |
| 136 |
" 'vamp-example-plugins:amplitudefollower',\n", |
| 137 |
" 'vamp-example-plugins:fixedtempo',\n", |
| 138 |
" 'vamp-example-plugins:percussiononsets',\n", |
| 139 |
" 'vamp-example-plugins:powerspectrum',\n", |
| 140 |
" 'vamp-example-plugins:spectralcentroid',\n", |
| 141 |
" 'vamp-example-plugins:zerocrossing',\n", |
| 142 |
" 'vamp-libxtract:amdf',\n", |
| 143 |
" 'vamp-libxtract:asdf',\n", |
| 144 |
" 'vamp-libxtract:autocorrelation',\n", |
| 145 |
" 'vamp-libxtract:average_deviation',\n", |
| 146 |
" 'vamp-libxtract:bark_coefficients',\n", |
| 147 |
" 'vamp-libxtract:crest',\n", |
| 148 |
" 'vamp-libxtract:dct',\n", |
| 149 |
" 'vamp-libxtract:f0',\n", |
| 150 |
" 'vamp-libxtract:failsafe_f0',\n", |
| 151 |
" 'vamp-libxtract:flatness',\n", |
| 152 |
" 'vamp-libxtract:harmonic_spectrum',\n", |
| 153 |
" 'vamp-libxtract:highest_value',\n", |
| 154 |
" 'vamp-libxtract:irregularity_j',\n", |
| 155 |
" 'vamp-libxtract:irregularity_k',\n", |
| 156 |
" 'vamp-libxtract:kurtosis',\n", |
| 157 |
" 'vamp-libxtract:loudness',\n", |
| 158 |
" 'vamp-libxtract:lowest_value',\n", |
| 159 |
" 'vamp-libxtract:mean',\n", |
| 160 |
" 'vamp-libxtract:mfcc',\n", |
| 161 |
" 'vamp-libxtract:noisiness',\n", |
| 162 |
" 'vamp-libxtract:nonzero_count',\n", |
| 163 |
" 'vamp-libxtract:odd_even_ratio',\n", |
| 164 |
" 'vamp-libxtract:peak_spectrum',\n", |
| 165 |
" 'vamp-libxtract:rms_amplitude',\n", |
| 166 |
" 'vamp-libxtract:rolloff',\n", |
| 167 |
" 'vamp-libxtract:sharpness',\n", |
| 168 |
" 'vamp-libxtract:skewness',\n", |
| 169 |
" 'vamp-libxtract:smoothness',\n", |
| 170 |
" 'vamp-libxtract:spectral_centroid',\n", |
| 171 |
" 'vamp-libxtract:spectral_inharmonicity',\n", |
| 172 |
" 'vamp-libxtract:spectral_kurtosis',\n", |
| 173 |
" 'vamp-libxtract:spectral_skewness',\n", |
| 174 |
" 'vamp-libxtract:spectral_slope',\n", |
| 175 |
" 'vamp-libxtract:spectral_standard_deviation',\n", |
| 176 |
" 'vamp-libxtract:spectral_variance',\n", |
| 177 |
" 'vamp-libxtract:spectrum',\n", |
| 178 |
" 'vamp-libxtract:spread',\n", |
| 179 |
" 'vamp-libxtract:standard_deviation',\n", |
| 180 |
" 'vamp-libxtract:sum',\n", |
| 181 |
" 'vamp-libxtract:tonality',\n", |
| 182 |
" 'vamp-libxtract:tristimulus_1',\n", |
| 183 |
" 'vamp-libxtract:tristimulus_2',\n", |
| 184 |
" 'vamp-libxtract:tristimulus_3',\n", |
| 185 |
" 'vamp-libxtract:variance',\n", |
| 186 |
" 'vamp-libxtract:zcr',\n", |
| 187 |
" 'vamp-rubberband:rubberband',\n", |
| 188 |
" 'vamp-test-plugin:vamp-test-plugin',\n", |
| 189 |
" 'vamp-test-plugin:vamp-test-plugin-freq']" |
| 190 |
] |
| 191 |
} |
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], |
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"prompt_number": 5 |
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}, |
| 195 |
{
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| 196 |
"cell_type": "code", |
| 197 |
"collapsed": true, |
| 198 |
"input": [ |
| 199 |
"librosa.load?" |
| 200 |
], |
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"language": "python", |
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"metadata": {},
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| 203 |
"outputs": [], |
| 204 |
"prompt_number": 6 |
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}, |
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{
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| 207 |
"cell_type": "code", |
| 208 |
"collapsed": true, |
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"input": [ |
| 210 |
"vamp.collect?" |
| 211 |
], |
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"language": "python", |
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"metadata": {},
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| 214 |
"outputs": [], |
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"prompt_number": 7 |
| 216 |
}, |
| 217 |
{
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| 218 |
"cell_type": "code", |
| 219 |
"collapsed": false, |
| 220 |
"input": [ |
| 221 |
"data, rate = librosa.load(\"data/piano-scale.wav\")" |
| 222 |
], |
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"language": "python", |
| 224 |
"metadata": {},
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| 225 |
"outputs": [], |
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"prompt_number": 8 |
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}, |
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{
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| 229 |
"cell_type": "code", |
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"collapsed": false, |
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"input": [ |
| 232 |
"rate" |
| 233 |
], |
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"language": "python", |
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"metadata": {},
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{
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"text": [ |
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"22050" |
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}, |
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{
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| 249 |
"cell_type": "code", |
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"collapsed": true, |
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"input": [ |
| 252 |
"plugin_params = { \"tuningmode\": 1, \"s\": 0.9, \"chromanormalize\": 3 }"
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], |
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"language": "python", |
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{
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"cell_type": "code", |
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"collapsed": false, |
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"input": [ |
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"out = vamp.collect(data, rate, \"nnls-chroma:nnls-chroma\", output = \"chroma\", parameters = plugin_params, process_timestamp_method = vamp.vampyhost.SHIFT_DATA)" |
| 264 |
], |
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| 372 |
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| 373 |
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| 374 |
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| 375 |
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| 376 |
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| 379 |
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| 380 |
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| 384 |
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| 566 |
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| 568 |
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| 571 |
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| 572 |
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| 575 |
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| 576 |
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| 578 |
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| 579 |
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| 580 |
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| 581 |
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| 583 |
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| 584 |
" 7.22065493e-02, 8.75575293e-04, 5.66987647e-03],\n", |
| 585 |
" [ 1.40741259e-01, 2.77895574e-02, 1.73567645e-02,\n", |
| 586 |
" 9.07734573e-01, 7.42862932e-03, 2.24477738e-01,\n", |
| 587 |
" 3.04128051e-01, 5.42865787e-03, 5.90750622e-03,\n", |
| 588 |
" 1.04962960e-01, 1.62259471e-02, 2.91900449e-02],\n", |
| 589 |
" [ 1.27348348e-01, 1.07598603e-02, 1.18422986e-03,\n", |
| 590 |
" 8.94889832e-01, 7.23825302e-03, 2.36309320e-01,\n", |
| 591 |
" 3.41708928e-01, 1.28864544e-02, 0.00000000e+00,\n", |
| 592 |
" 9.47451070e-02, 9.87819675e-03, 3.06219123e-02],\n", |
| 593 |
" [ 1.17779538e-01, 0.00000000e+00, 1.24025333e-03,\n", |
| 594 |
" 8.85621727e-01, 7.06024608e-03, 2.27433771e-01,\n", |
| 595 |
" 3.75163913e-01, 1.33218318e-02, 0.00000000e+00,\n", |
| 596 |
" 8.89331475e-02, 1.81943830e-02, 2.93087736e-02],\n", |
| 597 |
" [ 1.02612011e-01, 0.00000000e+00, 1.19107720e-02,\n", |
| 598 |
" 8.53048503e-01, 7.52635021e-03, 2.57968783e-01,\n", |
| 599 |
" 4.22296256e-01, 1.49089722e-02, 0.00000000e+00,\n", |
| 600 |
" 1.20436154e-01, 2.86021344e-02, 3.39591093e-02],\n", |
| 601 |
" [ 2.23645344e-01, 7.00941384e-02, 2.90339235e-02,\n", |
| 602 |
" 8.11006844e-01, 1.22231124e-02, 1.77608401e-01,\n", |
| 603 |
" 4.94134247e-01, 6.94465777e-03, 0.00000000e+00,\n", |
| 604 |
" 8.01459849e-02, 2.53690537e-02, 5.93009964e-02],\n", |
| 605 |
" [ 3.20195317e-01, 0.00000000e+00, 5.79862818e-02,\n", |
| 606 |
" 8.01172554e-01, 1.55903110e-02, 1.03361912e-01,\n", |
| 607 |
" 4.87446874e-01, 1.80881284e-03, 0.00000000e+00,\n", |
| 608 |
" 0.00000000e+00, 3.16866152e-02, 5.19289337e-02]], dtype=float32))}" |
| 609 |
] |
| 610 |
} |
| 611 |
], |
| 612 |
"prompt_number": 12 |
| 613 |
}, |
| 614 |
{
|
| 615 |
"cell_type": "code", |
| 616 |
"collapsed": false, |
| 617 |
"input": [ |
| 618 |
"step, chroma = out[\"matrix\"]" |
| 619 |
], |
| 620 |
"language": "python", |
| 621 |
"metadata": {},
|
| 622 |
"outputs": [], |
| 623 |
"prompt_number": 13 |
| 624 |
}, |
| 625 |
{
|
| 626 |
"cell_type": "code", |
| 627 |
"collapsed": false, |
| 628 |
"input": [ |
| 629 |
"step" |
| 630 |
], |
| 631 |
"language": "python", |
| 632 |
"metadata": {},
|
| 633 |
"outputs": [ |
| 634 |
{
|
| 635 |
"metadata": {},
|
| 636 |
"output_type": "pyout", |
| 637 |
"prompt_number": 14, |
| 638 |
"text": [ |
| 639 |
" 0.092879819" |
| 640 |
] |
| 641 |
} |
| 642 |
], |
| 643 |
"prompt_number": 14 |
| 644 |
}, |
| 645 |
{
|
| 646 |
"cell_type": "code", |
| 647 |
"collapsed": false, |
| 648 |
"input": [ |
| 649 |
"float(step) * rate" |
| 650 |
], |
| 651 |
"language": "python", |
| 652 |
"metadata": {},
|
| 653 |
"outputs": [ |
| 654 |
{
|
| 655 |
"metadata": {},
|
| 656 |
"output_type": "pyout", |
| 657 |
"prompt_number": 15, |
| 658 |
"text": [ |
| 659 |
"2048.00000895" |
| 660 |
] |
| 661 |
} |
| 662 |
], |
| 663 |
"prompt_number": 15 |
| 664 |
}, |
| 665 |
{
|
| 666 |
"cell_type": "code", |
| 667 |
"collapsed": false, |
| 668 |
"input": [ |
| 669 |
"vamp.vampyhost.RealTime.to_frame(step, rate)" |
| 670 |
], |
| 671 |
"language": "python", |
| 672 |
"metadata": {},
|
| 673 |
"outputs": [ |
| 674 |
{
|
| 675 |
"metadata": {},
|
| 676 |
"output_type": "pyout", |
| 677 |
"prompt_number": 16, |
| 678 |
"text": [ |
| 679 |
"2048" |
| 680 |
] |
| 681 |
} |
| 682 |
], |
| 683 |
"prompt_number": 16 |
| 684 |
}, |
| 685 |
{
|
| 686 |
"cell_type": "code", |
| 687 |
"collapsed": false, |
| 688 |
"input": [ |
| 689 |
"plt.imshow(chroma.transpose(), origin=\"lower\")" |
| 690 |
], |
| 691 |
"language": "python", |
| 692 |
"metadata": {},
|
| 693 |
"outputs": [ |
| 694 |
{
|
| 695 |
"metadata": {},
|
| 696 |
"output_type": "pyout", |
| 697 |
"prompt_number": 17, |
| 698 |
"text": [ |
| 699 |
"<matplotlib.image.AxesImage at 0x7f1b8e6ca7d0>" |
| 700 |
] |
| 701 |
}, |
| 702 |
{
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| 703 |
"metadata": {},
|
| 704 |
"output_type": "display_data", |
| 705 |
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Wpys3XFvHECfQ68FwQJT26KEZUrNvNxz2lm69SdToMd11k68CgCQHPYPquXUx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\nYII=\n", |
| 706 |
"text": [ |
| 707 |
"<matplotlib.figure.Figure at 0x7f1b8e99ee10>" |
| 708 |
] |
| 709 |
} |
| 710 |
], |
| 711 |
"prompt_number": 17 |
| 712 |
}, |
| 713 |
{
|
| 714 |
"cell_type": "code", |
| 715 |
"collapsed": true, |
| 716 |
"input": [ |
| 717 |
"import csv" |
| 718 |
], |
| 719 |
"language": "python", |
| 720 |
"metadata": {},
|
| 721 |
"outputs": [], |
| 722 |
"prompt_number": 18 |
| 723 |
}, |
| 724 |
{
|
| 725 |
"cell_type": "code", |
| 726 |
"collapsed": true, |
| 727 |
"input": [ |
| 728 |
"out_file = open('features.csv', 'w')"
|
| 729 |
], |
| 730 |
"language": "python", |
| 731 |
"metadata": {},
|
| 732 |
"outputs": [], |
| 733 |
"prompt_number": 19 |
| 734 |
}, |
| 735 |
{
|
| 736 |
"cell_type": "code", |
| 737 |
"collapsed": true, |
| 738 |
"input": [ |
| 739 |
"writer = csv.writer(out_file)" |
| 740 |
], |
| 741 |
"language": "python", |
| 742 |
"metadata": {},
|
| 743 |
"outputs": [], |
| 744 |
"prompt_number": 20 |
| 745 |
}, |
| 746 |
{
|
| 747 |
"cell_type": "code", |
| 748 |
"collapsed": true, |
| 749 |
"input": [ |
| 750 |
"writer.writerows(chroma)" |
| 751 |
], |
| 752 |
"language": "python", |
| 753 |
"metadata": {},
|
| 754 |
"outputs": [], |
| 755 |
"prompt_number": 21 |
| 756 |
}, |
| 757 |
{
|
| 758 |
"cell_type": "code", |
| 759 |
"collapsed": true, |
| 760 |
"input": [ |
| 761 |
"out_file.close()" |
| 762 |
], |
| 763 |
"language": "python", |
| 764 |
"metadata": {},
|
| 765 |
"outputs": [], |
| 766 |
"prompt_number": 22 |
| 767 |
}, |
| 768 |
{
|
| 769 |
"cell_type": "code", |
| 770 |
"collapsed": true, |
| 771 |
"input": [ |
| 772 |
"import os, glob" |
| 773 |
], |
| 774 |
"language": "python", |
| 775 |
"metadata": {},
|
| 776 |
"outputs": [], |
| 777 |
"prompt_number": 23 |
| 778 |
}, |
| 779 |
{
|
| 780 |
"cell_type": "code", |
| 781 |
"collapsed": true, |
| 782 |
"input": [ |
| 783 |
"def extract_chroma(audiofile):\n", |
| 784 |
" data, rate = librosa.load(audiofile, sr = None)\n", |
| 785 |
" out = vamp.collect(data, rate,\n", |
| 786 |
" plugin_key = \"nnls-chroma:nnls-chroma\",\n", |
| 787 |
" output = \"chroma\",\n", |
| 788 |
" process_timestamp_method = vamp.vampyhost.SHIFT_DATA)\n", |
| 789 |
" step, chroma = out[\"matrix\"]\n", |
| 790 |
" print(\"File \" + audiofile +\n", |
| 791 |
" \": sample rate = \" + str(rate) +\n", |
| 792 |
" \", chroma step = \" + str(vamp.vampyhost.RealTime.to_frame(step, rate)))\n", |
| 793 |
" out_file = open(os.path.splitext(audiofile)[0] + \"_chroma.csv\", \"w\")\n", |
| 794 |
" csv.writer(out_file).writerows(chroma)\n", |
| 795 |
" out_file.close()" |
| 796 |
], |
| 797 |
"language": "python", |
| 798 |
"metadata": {},
|
| 799 |
"outputs": [], |
| 800 |
"prompt_number": 24 |
| 801 |
}, |
| 802 |
{
|
| 803 |
"cell_type": "code", |
| 804 |
"collapsed": false, |
| 805 |
"input": [ |
| 806 |
"for file in glob.glob(\"data/Music/*.flac\"):\n", |
| 807 |
" extract_chroma(file)" |
| 808 |
], |
| 809 |
"language": "python", |
| 810 |
"metadata": {},
|
| 811 |
"outputs": [ |
| 812 |
{
|
| 813 |
"output_type": "stream", |
| 814 |
"stream": "stdout", |
| 815 |
"text": [ |
| 816 |
"File data/Music/07 - King Henry.flac: sample rate = 44100, chroma step = 2048\n" |
| 817 |
] |
| 818 |
} |
| 819 |
], |
| 820 |
"prompt_number": 25 |
| 821 |
}, |
| 822 |
{
|
| 823 |
"cell_type": "code", |
| 824 |
"collapsed": true, |
| 825 |
"input": [], |
| 826 |
"language": "python", |
| 827 |
"metadata": {},
|
| 828 |
"outputs": [], |
| 829 |
"prompt_number": null |
| 830 |
} |
| 831 |
], |
| 832 |
"metadata": {}
|
| 833 |
} |
| 834 |
] |
| 835 |
} |