Publication | Closed Access
Intermediate Loss Regularization for CTC-Based Speech Recognition
114
Citations
32
References
2021
Year
Unknown Venue
EngineeringMachine LearningSpoken Language ProcessingSpeech RecognitionNatural Language ProcessingSpeech CodingRobust Speech RecognitionReal-time LanguageCtc Greedy SearchIntermediate Loss RegularizationMachine TranslationHealth SciencesCtc TrainingComputer ScienceDeep LearningDistant Speech RecognitionSignal ProcessingSpeech CommunicationMulti-speaker Speech RecognitionIntermediate Ctc LossSpeech ProcessingSpeech InputLinguistics
We present a simple and efficient auxiliary loss function for automatic speech recognition (ASR) based on the connectionist temporal classification (CTC) objective. The proposed objective, an inter-mediate CTC loss, is attached to an intermediate layer in the CTC encoder network. This intermediate CTC loss well regularizes CTC training and improves the performance requiring only small modification of the code and small and no overhead during training and inference, respectively. In addition, we propose to combine this intermediate CTC loss with stochastic depth training, and apply this combination to a recently proposed Conformer network. We evaluate the proposed method on various corpora, reaching word error rate (WER) 9.9% on the WSJ corpus and character error rate (CER) 5.2% on the AISHELL-1 corpus respectively, based on CTC greedy search without a language model. Especially, the AISHELL-1 task is comparable to other state-of-the-art ASR systems based on auto-regressive decoder with beam search.
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