Latent Phrase Matching for Dysarthric Speech

Many consumer speech recognition systems are not tuned for people with speech disabilities, resulting in poor recognition and user experience, especially for severe speech differences. Recent studies have emphasized interest in personalized speech models from people with atypical speech patterns. We...

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Veröffentlicht in:arXiv.org 2023-06
Hauptverfasser: Lea, Colin, Yee, Dianna, Narain, Jaya, Huang, Zifang, Tooley, Lauren, Bigham, Jeffrey P, Findlater, Leah
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creator Lea, Colin
Yee, Dianna
Narain, Jaya
Huang, Zifang
Tooley, Lauren
Bigham, Jeffrey P
Findlater, Leah
description Many consumer speech recognition systems are not tuned for people with speech disabilities, resulting in poor recognition and user experience, especially for severe speech differences. Recent studies have emphasized interest in personalized speech models from people with atypical speech patterns. We propose a query-by-example-based personalized phrase recognition system that is trained using small amounts of speech, is language agnostic, does not assume a traditional pronunciation lexicon, and generalizes well across speech difference severities. On an internal dataset collected from 32 people with dysarthria, this approach works regardless of severity and shows a 60% improvement in recall relative to a commercial speech recognition system. On the public EasyCall dataset of dysarthric speech, our approach improves accuracy by 30.5%. Performance degrades as the number of phrases increases, but consistently outperforms ASR systems when trained with 50 unique phrases.
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subjects Customization
Datasets
Disabilities
Performance degradation
Speech recognition
User experience
title Latent Phrase Matching for Dysarthric Speech
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