mirror of
https://github.com/mozilla/DeepSpeech.git
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115 lines
4.3 KiB
Python
Executable File
115 lines
4.3 KiB
Python
Executable File
#!/usr/bin/env python
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from __future__ import absolute_import, division, print_function
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# Make sure we can import stuff from util/
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# This script needs to be run from the root of the DeepSpeech repository
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import os
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import sys
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sys.path.insert(1, os.path.join(sys.path[0], '..'))
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import argparse
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import glob
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import pandas
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import tarfile
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import wave
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COLUMN_NAMES = ['wav_filename', 'wav_filesize', 'transcript']
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def extract(archive_path, target_dir):
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print('Extracting {} into {}...'.format(archive_path, target_dir))
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with tarfile.open(archive_path) as tar:
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tar.extractall(target_dir)
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def is_file_truncated(wav_filename, wav_filesize):
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with wave.open(wav_filename, mode='rb') as fin:
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assert fin.getframerate() == 16000
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assert fin.getsampwidth() == 2
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assert fin.getnchannels() == 1
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header_duration = fin.getnframes() / fin.getframerate()
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filesize_duration = (wav_filesize - 44) / 16000 / 2
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return header_duration != filesize_duration
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def preprocess_data(folder_with_archives, target_dir):
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# First extract subset archives
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for subset in ('train', 'dev', 'test'):
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extract(os.path.join(folder_with_archives, 'magicdata_{}_set.tar.gz'.format(subset)), target_dir)
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# Folder structure is now:
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# - magicdata_{train,dev,test}.tar.gz
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# - magicdata/
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# - train/*.wav
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# - train/TRANS.txt
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# - dev/*.wav
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# - dev/TRANS.txt
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# - test/*.wav
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# - test/TRANS.txt
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# The TRANS files are CSVs with three columns, one containing the WAV file
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# name, one containing the speaker ID, and one containing the transcription
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def load_set(set_path):
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transcripts = pandas.read_csv(os.path.join(set_path, 'TRANS.txt'), sep='\t', index_col=0)
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glob_path = os.path.join(set_path, '*', '*.wav')
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set_files = []
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for wav in glob.glob(glob_path):
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try:
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wav_filename = wav
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wav_filesize = os.path.getsize(wav)
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transcript_key = os.path.basename(wav)
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transcript = transcripts.loc[transcript_key, 'Transcription']
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# Some files in this dataset are truncated, the header duration
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# doesn't match the file size. This causes errors at training
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# time, so check here if things are fine before including a file
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if is_file_truncated(wav_filename, wav_filesize):
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print('Warning: File {} is corrupted, header duration does '
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'not match file size. Ignoring.'.format(wav_filename))
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continue
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set_files.append((wav_filename, wav_filesize, transcript))
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except KeyError:
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print('Warning: Missing transcript for WAV file {}.'.format(wav))
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return set_files
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for subset in ('train', 'dev', 'test'):
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print('Loading {} set samples...'.format(subset))
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subset_files = load_set(os.path.join(target_dir, subset))
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df = pandas.DataFrame(data=subset_files, columns=COLUMN_NAMES)
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# Trim train set to under 10s
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if subset == 'train':
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durations = (df['wav_filesize'] - 44) / 16000 / 2
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df = df[durations <= 10.0]
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print('Trimming {} samples > 10 seconds'.format((durations > 10.0).sum()))
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with_noise = df['transcript'].str.contains(r'\[(FIL|SPK)\]')
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df = df[~with_noise]
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print('Trimming {} samples with noise ([FIL] or [SPK])'.format(sum(with_noise)))
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dest_csv = os.path.join(target_dir, 'magicdata_{}.csv'.format(subset))
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print('Saving {} set into {}...'.format(subset, dest_csv))
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df.to_csv(dest_csv, index=False)
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def main():
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# https://openslr.org/68/
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parser = argparse.ArgumentParser(description='Import MAGICDATA corpus')
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parser.add_argument('folder_with_archives', help='Path to folder containing magicdata_{train,dev,test}.tar.gz')
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parser.add_argument('--target_dir', default='', help='Target folder to extract files into and put the resulting CSVs. Defaults to a folder called magicdata next to the archives')
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params = parser.parse_args()
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if not params.target_dir:
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params.target_dir = os.path.join(params.folder_with_archives, 'magicdata')
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preprocess_data(params.folder_with_archives, params.target_dir)
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if __name__ == "__main__":
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main()
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