Improving RNN-Transducers with Acoustic LookAhead

07/11/2023
by   Vinit S. Unni, et al.
0

RNN-Transducers (RNN-Ts) have gained widespread acceptance as an end-to-end model for speech to text conversion because of their high accuracy and streaming capabilities. A typical RNN-T independently encodes the input audio and the text context, and combines the two encodings by a thin joint network. While this architecture provides SOTA streaming accuracy, it also makes the model vulnerable to strong LM biasing which manifests as multi-step hallucination of text without acoustic evidence. In this paper we propose LookAhead that makes text representations more acoustically grounded by looking ahead into the future within the audio input. This technique yields a significant 5 out-of-domain evaluation sets.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset