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52bbb69c65
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52bbb69c65 | |
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03edd935ea | |
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a7f1451a7f |
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@ -113,7 +113,9 @@ def plot_segments(collection_name = 'story_test_segments'):
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def generate_spec(aiff_file):
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phrase_sample = pm_snd(aiff_file)
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phrase_spec = phrase_sample.to_spectrogram(window_length=SPEC_WINDOW_SIZE, maximum_frequency=SPEC_MAX_FREQUENCY)
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sg_db = 10 * np.log10(phrase_spec.values)
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sshow_abs = np.abs(phrase_spec.values + np.finfo(phrase_spec.values.dtype).eps)
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sg_db = 10 * np.log10(sshow_abs)
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sg_db[sg_db < 0] = 0
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return sg_db,phrase_spec
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@ -142,6 +144,7 @@ def create_segments_tfrecords(collection_name='story_test_segments',sample_count
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fname = g.iloc[0]['filename']
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sg_db,phrase_spec = generate_spec(g.iloc[0]['file_path'])
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phon_stops = []
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phrase_groups.set_postfix(phrase=ph)
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spec_n,spec_w = sg_db.shape
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spec = sg_db.reshape(-1)
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for (i,phon) in g.iterrows():
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@ -177,7 +180,7 @@ def create_segments_tfrecords(collection_name='story_test_segments',sample_count
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wg_sampled = reservoir_sample(word_groups,sample_count) if sample_count > 0 else word_groups
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tr_audio_samples,te_audio_samples = train_test_split(wg_sampled,test_size=train_test_ratio)
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write_samples(tr_audio_samples,'train')
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write_samples(te_audio_samples,'test')
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# write_samples(te_audio_samples,'test')
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const_file = './outputs/segments/'+collection_name+'/constants.pkl'
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pickle.dump((n_spec,n_features,n_records),open(const_file,'wb'))
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@ -235,10 +238,8 @@ def read_segments_tfrecords_generator(collection_name='audio',batch_size=32,test
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random_samples = enumerate(reservoir_sample(te_re_iterator,test_size))
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for (i,string_record) in tqdm(random_samples,total=test_size):
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# (i,string_record) = next(random_samples)
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# string_record
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example = tf.train.Example()
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example.ParseFromString(string_record)
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# example.features.feature['spec'].float_list.value
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spec_n = example.features.feature['spec_n'].int64_list.value[0]
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spec_w = example.features.feature['spec_w'].int64_list.value[0]
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spec = np.array(example.features.feature['spec'].float_list.value).reshape(spec_n,spec_w)
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@ -254,9 +255,9 @@ if __name__ == '__main__':
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# plot_random_phrases()
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# fix_csv('story_test_segments')
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# plot_segments('story_test_segments')
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# fix_csv('story_test')
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pass
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# create_segments_tfrecords('story_test')
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# fix_csv('story_phrases')
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# pass
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create_segments_tfrecords('story_phrases', sample_count=100)
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# record_generator,input_data,output_data,copy_read_consts = read_segments_tfrecords_generator('story_test')
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# tr_gen = record_generator()
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# for i in tr_gen:
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@ -36,7 +36,7 @@ def ctc_lambda_func(args):
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return K.ctc_batch_cost(labels, y_pred, input_length, label_length)
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def segment_model(input_dim):
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input_dim = (100,100,1)
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# input_dim = (100,100,1)
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inp = Input(shape=input_dim)
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cnv1 = Conv2D(filters=32, kernel_size=(5,9))(inp)
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cnv2 = Conv2D(filters=1, kernel_size=(5,9))(cnv1)
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@ -54,8 +54,6 @@ def segment_model(input_dim):
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return Model(inp, oup)
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def simple_segment_model(input_dim):
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# input_dim = (100,100)
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input_dim = (506,743)
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inp = Input(shape=input_dim)
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b_gr1 = Bidirectional(GRU(256, return_sequences=True),merge_mode='sum')(inp)
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# b_gr1
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@ -75,9 +73,9 @@ def load_model_arch(mod_file):
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model_f.close()
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return mod
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def train_segment(collection_name = 'test'):
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def train_segment(collection_name = 'test',resume_weights='',initial_epoch=0):
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# collection_name = 'story_test'
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batch_size = 128
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batch_size = 64
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# batch_size = 4
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model_dir = './models/segment/'+collection_name
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create_dir(model_dir)
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@ -101,7 +99,7 @@ def train_segment(collection_name = 'test'):
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embeddings_freq=0,
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embeddings_layer_names=None,
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embeddings_metadata=None)
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cp_file_fmt = model_dir+'/siamese_speech_model-{epoch:02d}-epoch-{val_loss:0.2f}\
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cp_file_fmt = model_dir+'/speech_segment_model-{epoch:02d}-epoch-{val_loss:0.2f}\
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-acc.h5'
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cp_cb = ModelCheckpoint(
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@ -115,14 +113,16 @@ def train_segment(collection_name = 'test'):
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# train
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rms = RMSprop()
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model.compile(loss=categorical_crossentropy, optimizer=rms, metrics=[accuracy])
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write_model_arch(model,model_dir+'/siamese_speech_model_arch.yaml')
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write_model_arch(model,model_dir+'/speech_segment_model_arch.yaml')
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epoch_n_steps = step_count(n_records,batch_size)
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if resume_weights != '':
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model.load_weights(resume_weights)
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model.fit_generator(tr_gen
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, epochs=1000
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, epochs=10000
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, steps_per_epoch=epoch_n_steps
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, validation_data=(te_x, te_y)
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, max_queue_size=32
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, callbacks=[tb_cb, cp_cb])
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, callbacks=[tb_cb, cp_cb],initial_epoch=initial_epoch)
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model.save(model_dir+'/speech_segment_model-final.h5')
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# y_pred = model.predict([te_pairs[:, 0], te_pairs[:, 1]])
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@ -133,4 +133,4 @@ def train_segment(collection_name = 'test'):
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if __name__ == '__main__':
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# pass
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train_segment('test')
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train_segment('story_phrases','./models/segment/story_phrases.1000/speech_segment_model-final.h5',1001)
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