Cascaded encoders for unifying streaming and non-streaming ASR
Cascaded encoders for unifying streaming and non-streaming ASR
End-to-end (E2E) automatic speech recognition (ASR) models, by now, have shown competitive performance on several benchmarks. These models are structured to either operate in streaming or non-streaming mode. This work presents cascaded encoders for building a single E2E ASR model that can operate in both these modes simultaneously. The proposed model consists of streaming and non-streaming encoders. Input features are first processed by the streaming encoder; the non-streaming encoder operates exclusively on the output of the streaming encoder. A single decoder then learns to decode either using the output of the streaming or the non-streaming encoder. Results show that this model achieves similar word error rates (WER) as a standalone streaming model when operating in streaming mode, and obtains 10% -- 27% relative improvement when operating in non-streaming mode. Our results also show that the proposed approach outperforms existing E2E two-pass models, especially on long-form speech.
Trevor Strohman、Tara N. Sainath、Ruoming Pang、Rohit Prabhavalkar、Jiahui Yu、Chung-Cheng Chiu、Ehsan Variani、Arun Narayanan
通信无线通信
Trevor Strohman,Tara N. Sainath,Ruoming Pang,Rohit Prabhavalkar,Jiahui Yu,Chung-Cheng Chiu,Ehsan Variani,Arun Narayanan.Cascaded encoders for unifying streaming and non-streaming ASR[EB/OL].(2020-10-27)[2025-07-25].https://arxiv.org/abs/2010.14606.点此复制
评论