ASCLSDOct 31, 2022

An analysis of degenerating speech due to progressive dysarthria on ASR performance

arXiv:2211.00089v114 citationsh-index: 46
Originality Incremental advance
AI Analysis

This addresses the challenge of maintaining ASR accuracy for people with degenerating speech impairments, though it is incremental in exploring mitigation strategies.

The study analyzed how automatic speech recognition (ASR) performance degrades over time for individuals with progressive dysarthria due to ALS, finding that personalized models improved significantly when updated with recordings from severe stages, but early recordings did not help.

Although personalized automatic speech recognition (ASR) models have recently been designed to recognize even severely impaired speech, model performance may degrade over time for persons with degenerating speech. The aims of this study were to (1) analyze the change of performance of ASR over time in individuals with degrading speech, and (2) explore mitigation strategies to optimize recognition throughout disease progression. Speech was recorded by four individuals with degrading speech due to amyotrophic lateral sclerosis (ALS). Word error rates (WER) across recording sessions were computed for three ASR models: Unadapted Speaker Independent (U-SI), Adapted Speaker Independent (A-SI), and Adapted Speaker Dependent (A-SD or personalized). The performance of all three models degraded significantly over time as speech became more impaired, but the performance of the A-SD model improved markedly when it was updated with recordings from the severe stages of speech progression. Recording additional utterances early in the disease before speech degraded significantly did not improve the performance of A-SD models. Overall, our findings emphasize the importance of continuous recording (and model retraining) when providing personalized models for individuals with progressive speech impairments.

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