CLSDASFeb 29, 2024

Inappropriate Pause Detection In Dysarthric Speech Using Large-Scale Speech Recognition

arXiv:2402.18923v16 citationsh-index: 8ICASSP
Originality Incremental advance
AI Analysis

This work addresses a domain-specific challenge for stroke patients and speech-language therapists by improving severity assessment and therapy tools.

The paper tackled the problem of detecting inappropriate pauses in dysarthric speech by extending a large-scale speech recognition model with a specialized prediction layer, achieving an Inappropriate Pause Error Rate of 14.47%.

Dysarthria, a common issue among stroke patients, severely impacts speech intelligibility. Inappropriate pauses are crucial indicators in severity assessment and speech-language therapy. We propose to extend a large-scale speech recognition model for inappropriate pause detection in dysarthric speech. To this end, we propose task design, labeling strategy, and a speech recognition model with an inappropriate pause prediction layer. First, we treat pause detection as speech recognition, using an automatic speech recognition (ASR) model to convert speech into text with pause tags. According to the newly designed task, we label pause locations at the text level and their appropriateness. We collaborate with speech-language pathologists to establish labeling criteria, ensuring high-quality annotated data. Finally, we extend the ASR model with an inappropriate pause prediction layer for end-to-end inappropriate pause detection. Moreover, we propose a task-tailored metric for evaluating inappropriate pause detection independent of ASR performance. Our experiments show that the proposed method better detects inappropriate pauses in dysarthric speech than baselines. (Inappropriate Pause Error Rate: 14.47%)

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