학술논문

Modular Hybrid Autoregressive Transducer
Document Type
Conference
Source
2022 IEEE Spoken Language Technology Workshop (SLT) Spoken Language Technology Workshop (SLT), 2023 IEEE. :197-204 Jan, 2023
Subject
Signal Processing and Analysis
Adaptation models
Transducers
Conferences
Speech recognition
Production
Acoustics
Decoding
text-only adaptation
hybrid autoregressive transducer
Language
Abstract
Text-only adaptation of a transducer model remains challenging for end-to-end speech recognition since the transducer has no clearly separated acoustic model (AM), language model (LM) or blank model. In this work, we propose a modular hybrid autoregressive transducer (MHAT) that has structurally separated label and blank decoders to predict label and blank distributions, respectively, along with a shared acoustic encoder. The encoder and label decoder outputs are directly projected to AM and internal LM scores and then added to compute label posteriors. We train MHAT with an internal LM loss and a HAT loss to ensure that its internal LM becomes a standalone neural LM that can be effectively adapted to text. Moreover, text adaptation of MHAT fosters a much better LM fusion than internal LM subtraction-based methods. On Google's large-scale production data, a multi-domain MHAT adapted with 100B sentences achieves relative WER reductions of up to 12.4% without LM fusion and 21.5% with LM fusion from 400K-hour trained HAT.