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arxiv 2505.16351 v2 pith:MJOEY6KG submitted 2025-05-22 eess.AS cs.AI

Dysfluent WFST: A Framework for Zero-Shot Speech Dysfluency Transcription and Detection

classification eess.AS cs.AI
keywords dysfluencyspeechdetectiondysfluent-wfstmodelstranscriptionzero-shotachieves
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Automatic detection of speech dysfluency aids speech-language pathologists in efficient transcription of disordered speech, enhancing diagnostics and treatment planning. Traditional methods, often limited to classification, provide insufficient clinical insight, and text-independent models misclassify dysfluency, especially in context-dependent cases. This work introduces Dysfluent-WFST, a zero-shot decoder that simultaneously transcribes phonemes and detects dysfluency. Unlike previous models, Dysfluent-WFST operates with upstream encoders like WavLM and requires no additional training. It achieves state-of-the-art performance in both phonetic error rate and dysfluency detection on simulated and real speech data. Our approach is lightweight, interpretable, and effective, demonstrating that explicit modeling of pronunciation behavior in decoding, rather than complex architectures, is key to improving dysfluency processing systems.

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