Xianjie Yang

1paper

1 Paper

ASApr 7, 2020
Homophone-based Label Smoothing in End-to-End Automatic Speech Recognition

Yi Zheng, Xianjie Yang, Xuyong Dang

A new label smoothing method that makes use of prior knowledge of a language at human level, homophone, is proposed in this paper for automatic speech recognition (ASR). Compared with its forerunners, the proposed method uses pronunciation knowledge of homophones in a more complex way. End-to-end ASR models that learn acoustic model and language model jointly and modelling units of characters are necessary conditions for this method. Experiments with hybrid CTC sequence-to-sequence model show that the new method can reduce character error rate (CER) by 0.4% absolutely.