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Detection of different voice diseases based on the nonlinear characterization of speech signals

机译:基于语音信号的非线性特征检测不同的语音疾病

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摘要

This work describes a novel methodology to characterize voice diseases by using nonlinear dynamics, considering different complexity measures that are mainly based on the analysis of the time delay embedded space. The feature space is represented with a DHMM and a further transformation of the DHMM states to a hyperdimensional space is performed. The discrimination between healthy and pathological speech signals is peformed by using a RBF-SVM which is trained following a K-fold cross-validation strategy. Results of around 99% of accuracy are obtained for three different voice disorders, disphonia due to laryngeal pathologies, hypernasality due to cleft lip and palate, and dysarthria due to Parkinson's disease. (C) 2017 Elsevier Ltd. All rights reserved.
机译:这项工作描述了一种通过使用非线性动力学来表征声音疾病的新颖方法,其中考虑了主要基于对时延嵌入空间的分析的不同复杂性度量。用DHMM表示特征空间,然后执行DHMM状态到超维空间的进一步转换。健康和病理性语音信号之间的区别是通过使用RBF-SVM来实现的,该RBF-SVM按照K倍交叉验证策略进行训练。对于三种不同的声音障碍,由于喉部病变引起的发声,由于唇and裂引起的鼻音过高以及由于帕金森氏病引起的构音障碍,可获得约99%的准确度结果。 (C)2017 Elsevier Ltd.保留所有权利。

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