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Robust Automatic Speech Recognition via WavAugment Guided Phoneme Adversarial Training

Authors :
Qi, Gege
Chen, Yuefeng
Mao, Xiaofeng
Jia, Xiaojun
Duan, Ranjie
Zhang, Rong
Xue, Hui
Qi, Gege
Chen, Yuefeng
Mao, Xiaofeng
Jia, Xiaojun
Duan, Ranjie
Zhang, Rong
Xue, Hui
Publication Year :
2023

Abstract

Developing a practically-robust automatic speech recognition (ASR) is challenging since the model should not only maintain the original performance on clean samples, but also achieve consistent efficacy under small volume perturbations and large domain shifts. To address this problem, we propose a novel WavAugment Guided Phoneme Adversarial Training (wapat). wapat use adversarial examples in phoneme space as augmentation to make the model invariant to minor fluctuations in phoneme representation and preserve the performance on clean samples. In addition, wapat utilizes the phoneme representation of augmented samples to guide the generation of adversaries, which helps to find more stable and diverse gradient-directions, resulting in improved generalization. Extensive experiments demonstrate the effectiveness of wapat on End-to-end Speech Challenge Benchmark (ESB). Notably, SpeechLM-wapat outperforms the original model by 6.28% WER reduction on ESB, achieving the new state-of-the-art.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1438466351
Document Type :
Electronic Resource