使用言语障碍特定韵律特征对言语困难的自动诊断和评估

Garima Vyas, M. Dutta, J. Prinosil, P. Harár
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引用次数: 13

摘要

为了对言语障碍进行诊断和分类,言语语言病理学家(SLP)进行了听力测试。根据听者给出的分数对构音障碍进行诊断和评估。上述方法成本高,耗时长,准确度不高。与传统方法不同,本研究提出了构音障碍的自动诊断和评估方法。本文的目的是诊断和分类的严重构音障碍。使用遗传算法选择语言障碍的特定韵律特征。言语困难的诊断和评估是由支持向量机完成的。在诊断过程中,分类准确率达到98%。87%的困难言语被正确分类。在这项工作中使用了标准的UASPEECH数据库。
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An automatic diagnosis and assessment of dysarthric speech using speech disorder specific prosodic features
To diagnose and classify the dysarthric speech, speech language pathologist (SLP) conducts a listening test. On the basis of the scores given by listeners the dysarthria is diagnosed and assessed. The above mentioned method is costly, time consuming and not very accurate. Unlike the traditional method, this research proposes an automatic diagnosis and assessment of dysarthria. The aim of this paper is to diagnose and classify the severity of dysarthria. The speech disorder specific prosodic features are selected by using genetic algorithm. The diagnosis and assessment of dysarthric speech is done by support vector machines. During diagnosis the classification accuracy of 98% has been achieved. And 87% of the dysarthric speech utterances are correctly classified. The standard UASPEECH database has been used in this work.
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