Publication | Open Access
Exploring Neural Transducers for End-to-End Speech Recognition
72
Citations
19
References
2017
Year
EngineeringMachine LearningNeurolinguisticsSpoken Language ProcessingRecurrent Neural NetworkSpeech RecognitionNatural Language ProcessingCtc ModelsData ScienceReal-time LanguageMachine TranslationHealth SciencesNeural TransducersRnntransducer ModelsComputer ScienceDeep LearningDistant Speech RecognitionSpeech CommunicationSpeech TechnologyMulti-speaker Speech RecognitionSpeech ProcessingNeuroscienceSpeech InputSpeech Perception
In this work, we perform an empirical comparison among the CTC, RNN-Transducer, and attention-based Seq2Seq models for end-to-end speech recognition. We show that, without any language model, Seq2Seq and RNN-Transducer models both outperform the best reported CTC models with a language model, on the popular Hub5'00 benchmark. On our internal diverse dataset, these trends continue - RNNTransducer models rescored with a language model after beam search outperform our best CTC models. These results simplify the speech recognition pipeline so that decoding can now be expressed purely as neural network operations. We also study how the choice of encoder architecture affects the performance of the three models - when all encoder layers are forward only, and when encoders downsample the input representation aggressively.
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