Pathological Voice Classification Using Multiresolution Time Series Classification Network

Denghuang Zhao, Xincheng Zhu, Jinyang Qian, Xiaojun Zhang, Yi-Shen Xu, Zhi Tao
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Abstract

The detection of pathological voices has achieved good results in recent years. However, due to the complexity of pathological voice, traditional feature based methods are not effective to further classify different voice disease types. In recent years, deep learning methods have shown excellent performance in deep feature extraction and classification of time series. In this paper, we propose a multiresolution time series classification network based on 1-D and 2-D dilated convolutional neural networks to perform the pathological voice multi-classification task. In our method, we used the combination of raw voice, glottal wave signal and the first order difference of glottal wave as the multivariate input of the network. The dilated convolutional layers with different dilation rates were designed to capture features from different scales of voice signals. We trained our network in the MEEI, SVD and HUPA databases and collected voices with a voice recorder to test the network's effect. An improvement of 17% in distinguishing healthy voices, neuromuscular disorders and structural disorders was obtained. The experimental result shows that the structure we proposed can significantly improve the performance of multi-classification task of voices.
基于多分辨率时间序列分类网络的病理语音分类
近年来病理声音的检测取得了较好的效果。然而,由于病理语音的复杂性,传统的基于特征的方法不能有效地进一步划分不同的语音疾病类型。近年来,深度学习方法在时间序列的深度特征提取和分类方面表现出了优异的性能。在本文中,我们提出了一种基于一维和二维扩张卷积神经网络的多分辨率时间序列分类网络来完成病理语音的多分类任务。在我们的方法中,我们使用原始语音、声门波信号和声门波一阶差分的组合作为网络的多元输入。设计了不同扩展率的扩展卷积层来捕获不同尺度的语音信号特征。我们在MEEI, SVD和HUPA数据库中训练我们的网络,并用录音机收集声音来测试网络的效果。在区分健康声音、神经肌肉障碍和结构障碍方面提高了17%。实验结果表明,我们提出的结构可以显著提高语音多分类任务的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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