基于自动应力检测和分词方法的病理语音韵律评估

Máté Ákos Tündik, G. Kiss, Dávid Sztahó, György Szaszák
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引用次数: 4

摘要

自动分类方法是影响语言产生的各种疾病的早期诊断中常用的方法。这些方法也可以用于识别帕金森病(PD)或抑郁症(DD)患者的语音样本。本文对在病理语音样本上应用自动应力检测和韵律措辞方法感兴趣,以评估这些工具在多大程度上可以用于以无监督的方式表征PD和DD患者病理样本的韵律属性,或将样本分类为属于健康或非健康个体。我们就音韵短语的持续时间和由它们组成的单词的数量提出了假设。我们还简要分析了短语分布。我们的研究结果表明,通过这些韵律分析器和基于深度神经网络或支持向量机的分类器,可以将健康和病理样本相互分离。
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Assessment of pathological speech prosody based on automatic stress detection and phrasing approaches
Automatic classification methods are frequently used in early diagnosis of different diseases that affect speech production. These methods can also be applied to identify speech samples from patients affected by Parkinson's disease (PD) or depressive disorder (DD). This paper is interested in applying automatic stress detection and prosodic phrasing approaches on pathological speech samples in order to assess to what extent these tools can be useful either in characterizing in an unsupervised manner the prosodic attributes of pathological samples from individuals affected by PD and DD, or classifying samples as belonging to healthy or non-healthy individuals. We formulated hypotheses in connection with the duration of phonological phrases and the number of words grouped by them. We also briefly analyzed the phrase distributions. Our results show that healthy and pathological samples can be separated from each other by means of these prosodic analysers, and deep neural network or support vector machine based classifiers built on top of them.
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