visualizing and playing sound files where prediction fails
parent
988f66c2c2
commit
e4b8b4e0a7
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@ -6,7 +6,7 @@ from speech_utils import threadsafe_iter
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import tensorflow as tf
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from tensorflow.python.ops import data_flow_ops
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import numpy as np
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from spectro_gen import generate_aiff_spectrogram
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from speech_spectrum import generate_aiff_spectrogram
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from sklearn.model_selection import train_test_split
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import itertools
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import os
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@ -1,15 +1,36 @@
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import pyaudio
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from pysndfile import sndio as snd
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import numpy as np
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# from matplotlib import pyplot as plt
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from spectro_gen import plot_stft, generate_spec_frec
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from speech_spectrum import plot_stft, generate_spec_frec
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SAMPLE_RATE = 22050
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N_CHANNELS = 2
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def file_player():
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p_oup = pyaudio.PyAudio()
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def play_file(audiopath,plot=False):
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print('playing',audiopath)
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samples, samplerate, form = snd.read(audiopath)
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stream = p_oup.open(
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format=pyaudio.paFloat32,
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channels=2,
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rate=samplerate,
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output=True)
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one_channel = np.asarray([samples, samples]).T.reshape(-1)
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audio_data = one_channel.astype(np.float32).tobytes()
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stream.write(audio_data)
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stream.close()
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if plot:
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plot_stft(samples, SAMPLE_RATE)
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def close_player():
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p_oup.terminate()
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return play_file,close_player
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def record_spectrogram(n_sec, plot=False, playback=False):
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SAMPLE_RATE = 22050
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N_CHANNELS = 2
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# show_record_prompt()
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N_SEC = n_sec
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CHUNKSIZE = int(SAMPLE_RATE * N_SEC / N_CHANNELS) # fixed chunk size
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# show_record_prompt()
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input('Press [Enter] to start recording sample... ')
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p_inp = pyaudio.PyAudio()
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stream = p_inp.open(
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107
test_siamese.py
107
test_siamese.py
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@ -1,9 +1,10 @@
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from speech_siamese import siamese_model
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from record_mic_speech import record_spectrogram
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# from speech_siamese import siamese_model
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from speech_tools import record_spectrogram, file_player
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# from importlib import reload
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# import speech_data
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# reload(speech_data)
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import numpy as np
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import pandas as pd
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import os
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import pickle
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import tensorflow as tf
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@ -25,7 +26,8 @@ def test_with(audio_group):
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print(np.argmax(model.predict([X[:, 0], X[:, 1]]),axis=1))
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print(Y.astype(np.int8))
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def evaluate_siamese(audio_group='audio',model_file = 'siamese_speech_model-46-epoch-0.29-acc.h5'):
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def evaluate_siamese(audio_group='audio',model_file = 'siamese_speech_model-305-epoch-0.20-acc.h5'):
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# audio_group='audio';model_file = 'siamese_speech_model-305-epoch-0.20-acc.h5'
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records_file = os.path.join('./outputs',audio_group+'.train.tfrecords')
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const_file = os.path.join('./outputs',audio_group+'.constants')
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model_weights_path =os.path.join('./models/story_words/',model_file)
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@ -36,43 +38,72 @@ def evaluate_siamese(audio_group='audio',model_file = 'siamese_speech_model-46-e
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model.load_weights(model_weights_path)
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record_iterator = tf.python_io.tf_record_iterator(path=records_file)
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#tqdm(enumerate(record_iterator),total=n_records)
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with open('./outputs/' + audio_group + '.results.csv','w') as result_csv:
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result_csv_w = csv.writer(result_csv, quoting=csv.QUOTE_MINIMAL)
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for (i,string_record) in enumerate(record_iterator):
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# string_record = next(record_iterator)
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example = tf.train.Example()
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example.ParseFromString(string_record)
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spec_n1 = example.features.feature['spec_n1'].int64_list.value[0]
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spec_n2 = example.features.feature['spec_n2'].int64_list.value[0]
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spec_w1 = example.features.feature['spec_w1'].int64_list.value[0]
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spec_w2 = example.features.feature['spec_w2'].int64_list.value[0]
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spec1 = np.array(example.features.feature['spec1'].float_list.value).reshape(spec_n1,spec_w1)
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spec2 = np.array(example.features.feature['spec2'].float_list.value).reshape(spec_n2,spec_w2)
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p_spec1,p_spec2 = padd_zeros(spec1,n_spec),padd_zeros(spec2,n_spec)
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input_arr = np.asarray([[p_spec1,p_spec2]])
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output_arr = np.asarray([example.features.feature['output'].int64_list.value])
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y_pred = model.predict([input_arr[:, 0], input_arr[:, 1]])
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predicted = np.asarray(y_pred[0]>0.5).astype(output_arr.dtype)
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expected = output_arr[0]
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if np.all(predicted == expected):
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result_csv = open('./outputs/' + audio_group + '.results.csv','w')
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result_csv_w = csv.writer(result_csv, quoting=csv.QUOTE_MINIMAL)
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result_csv_w.writerow(["phoneme1","phoneme2","voice1","voice2","rate1","rate2","variant1","variant2","file1","file2"])
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for (i,string_record) in enumerate(record_iterator):
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# string_record = next(record_iterator)
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example = tf.train.Example()
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example.ParseFromString(string_record)
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spec_n1 = example.features.feature['spec_n1'].int64_list.value[0]
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spec_n2 = example.features.feature['spec_n2'].int64_list.value[0]
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spec_w1 = example.features.feature['spec_w1'].int64_list.value[0]
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spec_w2 = example.features.feature['spec_w2'].int64_list.value[0]
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spec1 = np.array(example.features.feature['spec1'].float_list.value).reshape(spec_n1,spec_w1)
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spec2 = np.array(example.features.feature['spec2'].float_list.value).reshape(spec_n2,spec_w2)
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p_spec1,p_spec2 = padd_zeros(spec1,n_spec),padd_zeros(spec2,n_spec)
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input_arr = np.asarray([[p_spec1,p_spec2]])
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output_arr = np.asarray([example.features.feature['output'].int64_list.value])
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y_pred = model.predict([input_arr[:, 0], input_arr[:, 1]])
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predicted = np.asarray(y_pred[0]>0.5).astype(output_arr.dtype)
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expected = output_arr[0]
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if np.all(predicted == expected):
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continue
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word = example.features.feature['word'].bytes_list.value[0].decode()
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phoneme1 = example.features.feature['phoneme1'].bytes_list.value[0].decode()
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phoneme2 = example.features.feature['phoneme2'].bytes_list.value[0].decode()
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voice1 = example.features.feature['voice1'].bytes_list.value[0].decode()
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voice2 = example.features.feature['voice2'].bytes_list.value[0].decode()
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language = example.features.feature['language'].bytes_list.value[0].decode()
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rate1 = example.features.feature['rate1'].int64_list.value[0]
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rate2 = example.features.feature['rate2'].int64_list.value[0]
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variant1 = example.features.feature['variant1'].bytes_list.value[0].decode()
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variant2 = example.features.feature['variant2'].bytes_list.value[0].decode()
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file1 = example.features.feature['file1'].bytes_list.value[0].decode()
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file2 = example.features.feature['file2'].bytes_list.value[0].decode()
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print(phoneme1,phoneme2,voice1,voice2,rate1,rate2,variant1,variant2,file1,file2)
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result_csv_w.writerow([phoneme1,phoneme2,voice1,voice2,rate1,rate2,variant1,variant2,file1,file2])
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result_csv.close()
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def play_results(audio_group='audio'):
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result_data = pd.read_csv('./outputs/' + audio_group + '.results.csv')
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play_file,close_player = file_player()
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quit = False
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for (i,r) in result_data.iterrows():
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if quit:
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break
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keys = ["phoneme1","phoneme2","voice1","voice2","rate1","rate2","variant1","variant2"]
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row_vals = [str(r[k]) for k in keys]
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h_str = '\t'.join(keys)
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row_str = '\t'.join(row_vals)
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while True:
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print(h_str)
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print(row_str)
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play_file('./outputs/'+audio_group+'/'+r['file1'],True)
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play_file('./outputs/'+audio_group+'/'+r['file2'],True)
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a = input("press 'r/q/[Enter]' to replay/quit/continue:\t")
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if a == 'r':
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continue
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word = example.features.feature['word'].bytes_list.value[0].decode()
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phoneme1 = example.features.feature['phoneme1'].bytes_list.value[0].decode()
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phoneme2 = example.features.feature['phoneme2'].bytes_list.value[0].decode()
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voice1 = example.features.feature['voice1'].bytes_list.value[0].decode()
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voice2 = example.features.feature['voice2'].bytes_list.value[0].decode()
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language = example.features.feature['language'].bytes_list.value[0].decode()
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rate1 = example.features.feature['rate1'].int64_list.value[0]
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rate2 = example.features.feature['rate2'].int64_list.value[0]
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variant1 = example.features.feature['variant1'].bytes_list.value[0].decode()
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variant2 = example.features.feature['variant2'].bytes_list.value[0].decode()
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file1 = example.features.feature['file1'].bytes_list.value[0].decode()
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file2 = example.features.feature['file2'].bytes_list.value[0].decode()
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print(phoneme1,phoneme2,voice1,voice2,rate1,rate2,variant1,variant2,file1,file2)
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result_csv_w.writerow([phoneme1,phoneme2,voice1,voice2,rate1,rate2,variant1,variant2,file1,file2])
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if a == 'q':
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quit = True
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break
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else:
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break
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close_player()
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evaluate_siamese('story_words',model_file='siamese_speech_model-92-epoch-0.20-acc.h5')
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# evaluate_siamese('story_words',model_file='siamese_speech_model-305-epoch-0.20-acc.h5')
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play_results('story_words')
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# test_with('rand_edu')
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# sunflower_data,sunflower_result = get_word_pairs_data('sweater',15)
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# print(np.argmax(model.predict([sunflower_data[:, 0], sunflower_data[:, 1]]),axis=1))
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