Back to Search Start Over

PATCorrect: Non-autoregressive Phoneme-augmented Transformer for ASR Error Correction

Authors :
Zhang, Ziji
Wang, Zhehui
Kamma, Rajesh
Eswaran, Sharanya
Sadagopan, Narayanan
Publication Year :
2023

Abstract

Speech-to-text errors made by automatic speech recognition (ASR) systems negatively impact downstream models. Error correction models as a post-processing text editing method have been recently developed for refining the ASR outputs. However, efficient models that meet the low latency requirements of industrial grade production systems have not been well studied. We propose PATCorrect-a novel non-autoregressive (NAR) approach based on multi-modal fusion leveraging representations from both text and phoneme modalities, to reduce word error rate (WER) and perform robustly with varying input transcription quality. We demonstrate that PATCorrect consistently outperforms state-of-the-art NAR method on English corpus across different upstream ASR systems, with an overall 11.62% WER reduction (WERR) compared to 9.46% WERR achieved by other methods using text only modality. Besides, its inference latency is at tens of milliseconds, making it ideal for systems with low latency requirements.<br />Comment: Accepted camera-ready version for INTERSPEECH 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2302.05040
Document Type :
Working Paper