Automatic Speech Recognition of Conversational Speech in Individuals With Disordered Speech
Journal of Speech Language and Hearing Research2024Vol. 67(11), pp. 4176–4185
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Jimmy Tobin, P.A. Nelson, Bob MacDonald, Rus Heywood, Richard Cave, Katie Seaver, Antoine Desjardins, Pan-Pan Jiang, Jordan R. Green
Abstract
We observed a significant performance gap in ASR accuracy between read and conversational speech for individuals with speech disorders. This gap was largely due to the linguistic complexity and unique characteristics of speech disorders in conversational speech. Training personalized ASR models using conversational speech significantly improved recognition accuracy, demonstrating the importance of domain-specific training and highlighting the need for further research into ASR systems capable of handling disordered conversational speech effectively.
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