SDCLASJan 26, 2024

UNIT-DSR: Dysarthric Speech Reconstruction System Using Speech Unit Normalization

arXiv:2401.14664v113 citationsICASSP
Originality Incremental advance
AI Analysis

This work addresses communication barriers for individuals with dysarthria, offering a more efficient and robust solution, though it appears incremental as it builds on existing self-supervised learning and discrete unit methods.

The paper tackles the problem of converting dysarthric speech into normal-sounding speech by proposing a simpler system that uses speech unit normalization and a vocoder, resulting in a 28.2% relative reduction in average word error rate compared to original dysarthric speech.

Dysarthric speech reconstruction (DSR) systems aim to automatically convert dysarthric speech into normal-sounding speech. The technology eases communication with speakers affected by the neuromotor disorder and enhances their social inclusion. NED-based (Neural Encoder-Decoder) systems have significantly improved the intelligibility of the reconstructed speech as compared with GAN-based (Generative Adversarial Network) approaches, but the approach is still limited by training inefficiency caused by the cascaded pipeline and auxiliary tasks of the content encoder, which may in turn affect the quality of reconstruction. Inspired by self-supervised speech representation learning and discrete speech units, we propose a Unit-DSR system, which harnesses the powerful domain-adaptation capacity of HuBERT for training efficiency improvement and utilizes speech units to constrain the dysarthric content restoration in a discrete linguistic space. Compared with NED approaches, the Unit-DSR system only consists of a speech unit normalizer and a Unit HiFi-GAN vocoder, which is considerably simpler without cascaded sub-modules or auxiliary tasks. Results on the UASpeech corpus indicate that Unit-DSR outperforms competitive baselines in terms of content restoration, reaching a 28.2% relative average word error rate reduction when compared to original dysarthric speech, and shows robustness against speed perturbation and noise.

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