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Wavelet transform and artificial neural networks applied to voice disorders identification

机译:小波变换和人工神经网络在语音障碍识别中的应用

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The amount of non-invasive methods of diagnosis has increased due to the need for simple, quick and painless tests. Due to the growth of technology that provides the means for extraction and signal processing, new analytical methods have been developed to understand the complexity of the voice signals. This paper presents a new idea to characterize signals of healthy and pathological voice based on two mathematical tools widely known in the literature, Wavelet Transform (WT) and Artificial Neural Networks. Four classes of samples were used: one from healthy individuals and three from people with vocal fold nodules, Reinke's edema and neurological dysphonia. All the samples were recorded using the vowel /a/ in Brazilian Portuguese. The work shows that the proposed approach using WT is a suitable technique to discriminate between healthy and pathological voices.
机译:由于需要简单,快速和无痛的测试,因此非侵入性诊断方法的数量有所增加。由于提供提取和信号处理手段的技术的发展,已经开发出新的分析方法来理解语音信号的复杂性。本文提出了一种基于健康的和病理性语音信号特征的新思想,该技术基于文献中广为人知的两种数学工具,即小波变换(WT)和人工神经网络。使用了四类样本:一类来自健康个体,三类来自声带小结节,雷因克水肿和神经性言语障碍。使用巴西葡萄牙语中的元音/ a /记录所有样本。这项工作表明,所提出的使用WT的方法是一种区分健康声音和病理声音的合适技术。

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