""" Inference for a simplifed version of Baidu DeepSpeech2 model. """ import paddle.v2 as paddle import distutils.util import argparse import gzip from audio_data_utils import DataGenerator from model import deep_speech2 from decoder import ctc_decode parser = argparse.ArgumentParser( description='Simplified version of DeepSpeech2 inference.') parser.add_argument( "--num_samples", default=10, type=int, help="Number of samples for inference. (default: %(default)s)") parser.add_argument( "--num_conv_layers", default=2, type=int, help="Convolution layer number. (default: %(default)s)") parser.add_argument( "--num_rnn_layers", default=3, type=int, help="RNN layer number. (default: %(default)s)") parser.add_argument( "--rnn_layer_size", default=512, type=int, help="RNN layer cell number. (default: %(default)s)") parser.add_argument( "--use_gpu", default=True, type=distutils.util.strtobool, help="Use gpu or not. (default: %(default)s)") parser.add_argument( "--normalizer_manifest_path", default='data/manifest.libri.train-clean-100', type=str, help="Manifest path for normalizer. (default: %(default)s)") parser.add_argument( "--decode_manifest_path", default='data/manifest.libri.test-clean', type=str, help="Manifest path for decoding. (default: %(default)s)") parser.add_argument( "--model_filepath", default='./params.tar.gz', type=str, help="Model filepath. (default: %(default)s)") parser.add_argument( "--vocab_filepath", default='data/eng_vocab.txt', type=str, help="Vocabulary filepath. (default: %(default)s)") args = parser.parse_args() def infer(): """ Max-ctc-decoding for DeepSpeech2. """ # initialize data generator data_generator = DataGenerator( vocab_filepath=args.vocab_filepath, normalizer_manifest_path=args.normalizer_manifest_path, normalizer_num_samples=200, max_duration=20.0, min_duration=0.0, stride_ms=10, window_ms=20) # create network config dict_size = data_generator.vocabulary_size() vocab_list = data_generator.vocabulary_list() audio_data = paddle.layer.data( name="audio_spectrogram", height=161, width=2000, type=paddle.data_type.dense_vector(322000)) text_data = paddle.layer.data( name="transcript_text", type=paddle.data_type.integer_value_sequence(dict_size)) output_probs = deep_speech2( audio_data=audio_data, text_data=text_data, dict_size=dict_size, num_conv_layers=args.num_conv_layers, num_rnn_layers=args.num_rnn_layers, rnn_size=args.rnn_layer_size, is_inference=True) # load parameters parameters = paddle.parameters.Parameters.from_tar( gzip.open(args.model_filepath)) # prepare infer data feeding = data_generator.data_name_feeding() test_batch_reader = data_generator.batch_reader_creator( manifest_path=args.decode_manifest_path, batch_size=args.num_samples, padding_to=2000, flatten=True, sort_by_duration=False, shuffle=False) infer_data = test_batch_reader().next() # run inference infer_results = paddle.infer( output_layer=output_probs, parameters=parameters, input=infer_data) num_steps = len(infer_results) / len(infer_data) probs_split = [ infer_results[i * num_steps:(i + 1) * num_steps] for i in xrange(0, len(infer_data)) ] # decode and print for i, probs in enumerate(probs_split): output_transcription = ctc_decode( probs_seq=probs, vocabulary=vocab_list, method="best_path") target_transcription = ''.join( [vocab_list[index] for index in infer_data[i][1]]) print("Target Transcription: %s \nOutput Transcription: %s \n" % (target_transcription, output_transcription)) def main(): paddle.init(use_gpu=args.use_gpu, trainer_count=1) infer() if __name__ == '__main__': main()