CLSDASApr 4, 2022

Cross-lingual Self-Supervised Speech Representations for Improved Dysarthric Speech Recognition

arXiv:2204.01670v154 citationsh-index: 51
Originality Incremental advance
AI Analysis

This addresses the challenge of accurate speech recognition for individuals with dysarthria, an incremental improvement over existing methods.

The study tackled the problem of poor automatic speech recognition (ASR) performance on dysarthric speech by using cross-lingual self-supervised speech representations as features, resulting in reduced word error rates (WERs) by 6.8% to 22.0% across different datasets.

State-of-the-art automatic speech recognition (ASR) systems perform well on healthy speech. However, the performance on impaired speech still remains an issue. The current study explores the usefulness of using Wav2Vec self-supervised speech representations as features for training an ASR system for dysarthric speech. Dysarthric speech recognition is particularly difficult as several aspects of speech such as articulation, prosody and phonation can be impaired. Specifically, we train an acoustic model with features extracted from Wav2Vec, Hubert, and the cross-lingual XLSR model. Results suggest that speech representations pretrained on large unlabelled data can improve word error rate (WER) performance. In particular, features from the multilingual model led to lower WERs than filterbanks (Fbank) or models trained on a single language. Improvements were observed in English speakers with cerebral palsy caused dysarthria (UASpeech corpus), Spanish speakers with Parkinsonian dysarthria (PC-GITA corpus) and Italian speakers with paralysis-based dysarthria (EasyCall corpus). Compared to using Fbank features, XLSR-based features reduced WERs by 6.8%, 22.0%, and 7.0% for the UASpeech, PC-GITA, and EasyCall corpus, respectively.

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