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arxiv: 2303.07533 · v2 · pith:UB3U7HZ5new · submitted 2023-03-13 · 📡 eess.AS · cs.SD

Speech Intelligibility Classifiers from 550k Disordered Speech Samples

classification 📡 eess.AS cs.SD
keywords speechintelligibilitysamplesspeakersclassifiersdisordereddysarthricfurther
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We developed dysarthric speech intelligibility classifiers on 551,176 disordered speech samples contributed by a diverse set of 468 speakers, with a range of self-reported speaking disorders and rated for their overall intelligibility on a five-point scale. We trained three models following different deep learning approaches and evaluated them on ~94K utterances from 100 speakers. We further found the models to generalize well (without further training) on the TORGO database (100% accuracy), UASpeech (0.93 correlation), ALS-TDI PMP (0.81 AUC) datasets as well as on a dataset of realistic unprompted speech we gathered (106 dysarthric and 76 control speakers,~2300 samples).

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