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首页> 外文期刊>Circuits, systems, and signal processing >Voice Disorder Signal Classification Using M-Band Wavelets and Support Vector Machine
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Voice Disorder Signal Classification Using M-Band Wavelets and Support Vector Machine

机译:基于M波段小波和支持向量机的语音障碍信号分类

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摘要

The aim of this work is to present a noninvasive method to classify normal voice signals and those corresponding to voice disorders. Use of wavelet decomposition is prevalent for feature extraction in this field and provides good frequency resolution in lower-frequency subbands. In this work, to provide better frequency resolution in higher-frequency subbands as well, we use M-band wavelet decomposition for feature extraction, employing a genetic algorithm to determine the parameters of the optimal wavelet. Moreover, a support vector machine is used as the final classifier. By employing a well-known pathological voice database, normal and pathological cases are classified using a five-band wavelet system for feature extraction, showing good performance.
机译:这项工作的目的是提出一种非侵入性方法,对正常的语音信号和对应于语音障碍的语音信号进行分类。在该领域中,小波分解的使用普遍用于特征提取,并在低频子带中提供了良好的频率分辨率。在这项工作中,为了在更高频率的子带上也提供更好的频率分辨率,我们使用M波段小波分解进行特征提取,并采用遗传算法确定最佳小波的参数。此外,支持向量机被用作最终分类器。通过使用众所周知的病理语音数据库,使用五波段小波系统对正常和病理病例进行分类以进行特征提取,从而表现出良好的性能。

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