#!/usr/bin/env python # -*- coding: utf-8 -*- from __future__ import absolute_import, division, print_function import argparse import numpy as np import shlex import subprocess import sys import wave from deepspeech import Model, printVersions from timeit import default_timer as timer try: from shhlex import quote except ImportError: from pipes import quote def convert_samplerate(audio_path, desired_sample_rate): sox_cmd = 'sox {} --type raw --bits 16 --channels 1 --rate {} --encoding signed-integer --endian little --compression 0.0 --no-dither - '.format(quote(audio_path), desired_sample_rate) try: output = subprocess.check_output(shlex.split(sox_cmd), stderr=subprocess.PIPE) except subprocess.CalledProcessError as e: raise RuntimeError('SoX returned non-zero status: {}'.format(e.stderr)) except OSError as e: raise OSError(e.errno, 'SoX not found, use {}hz files or install it: {}'.format(desired_sample_rate, e.strerror)) return desired_sample_rate, np.frombuffer(output, np.int16) def metadata_to_string(metadata): return ''.join(item.character for item in metadata.items) class VersionAction(argparse.Action): def __init__(self, *args, **kwargs): super(VersionAction, self).__init__(nargs=0, *args, **kwargs) def __call__(self, *args, **kwargs): printVersions() exit(0) def main(): parser = argparse.ArgumentParser(description='Running DeepSpeech inference.') parser.add_argument('--model', required=True, help='Path to the model (protocol buffer binary file)') parser.add_argument('--alphabet', required=True, help='Path to the configuration file specifying the alphabet used by the network') parser.add_argument('--lm', nargs='?', help='Path to the language model binary file') parser.add_argument('--trie', nargs='?', help='Path to the language model trie file created with native_client/generate_trie') parser.add_argument('--audio', required=True, help='Path to the audio file to run (WAV format)') parser.add_argument('--beam_width', type=int, default=500, help='Beam width for the CTC decoder') parser.add_argument('--lm_alpha', type=float, default=0.75, help='Language model weight (lm_alpha)') parser.add_argument('--lm_beta', type=float, default=1.85, help='Word insertion bonus (lm_beta)') parser.add_argument('--version', action=VersionAction, help='Print version and exits') parser.add_argument('--extended', required=False, action='store_true', help='Output string from extended metadata') args = parser.parse_args() print('Loading model from file {}'.format(args.model), file=sys.stderr) model_load_start = timer() ds = Model(args.model, args.alphabet, args.beam_width) model_load_end = timer() - model_load_start print('Loaded model in {:.3}s.'.format(model_load_end), file=sys.stderr) desired_sample_rate = ds.sampleRate() if args.lm and args.trie: print('Loading language model from files {} {}'.format(args.lm, args.trie), file=sys.stderr) lm_load_start = timer() ds.enableDecoderWithLM(args.lm, args.trie, args.lm_alpha, args.lm_beta) lm_load_end = timer() - lm_load_start print('Loaded language model in {:.3}s.'.format(lm_load_end), file=sys.stderr) fin = wave.open(args.audio, 'rb') fs = fin.getframerate() if fs != desired_sample_rate: print('Warning: original sample rate ({}) is different than {}hz. Resampling might produce erratic speech recognition.'.format(fs, desired_sample_rate), file=sys.stderr) fs, audio = convert_samplerate(args.audio, desired_sample_rate) else: audio = np.frombuffer(fin.readframes(fin.getnframes()), np.int16) audio_length = fin.getnframes() * (1/fs) fin.close() print('Running inference.', file=sys.stderr) inference_start = timer() if args.extended: print(metadata_to_string(ds.sttWithMetadata(audio))) else: print(ds.stt(audio)) inference_end = timer() - inference_start print('Inference took %0.3fs for %0.3fs audio file.' % (inference_end, audio_length), file=sys.stderr) if __name__ == '__main__': main()