Contextualized End-to-End Speech Recognition with Contextual Phrase Prediction Network
Huang, Kaixun, Zhang, Ao, Yang, Zhanheng, Guo, Pengcheng, Mu, Bingshen, Xu, Tianyi, Xie, Lei
–arXiv.org Artificial Intelligence
Contextual information plays a crucial role in speech recognition technologies and incorporating it into the end-to-end speech recognition models has drawn immense interest recently. However, previous deep bias methods lacked explicit supervision for bias tasks. In this study, we introduce a contextual phrase prediction network for an attention-based deep bias method. This network predicts context phrases in utterances using contextual embeddings and calculates bias loss to assist in the training of the contextualized model. Our method achieved a significant word error rate (WER) reduction across various end-to-end speech recognition models. Experiments on the LibriSpeech corpus show that our proposed model obtains a 12.1% relative WER improvement over the baseline model, and the WER of the context phrases decreases relatively by 40.5%. Moreover, by applying a context phrase filtering strategy, we also effectively eliminate the WER degradation when using a larger biasing list.
arXiv.org Artificial Intelligence
Jul-12-2023