Convolutional Neural Networks for Classification of Voice Qualities from Speech and Neck Surface Accelerometer Signals

Sudarsana Reddy Kadiri, F. Javanmardi, P. Alku
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引用次数: 2

Abstract

Prior studies in the automatic classification of voice quality have mainly studied support vector machine (SVM) classifiers using the acoustic speech signal as input. Recently, one voice quality classification study was published using neck surface accelerometer (NSA) and speech signals as inputs and using SVMs with hand-crafted glottal source features. The present study examines simultaneously recorded NSA and speech signals in the classification of three voice qualities (breathy, modal, and pressed) using convolutional neural networks (CNNs) as classifier. The study has two goals: (1) to investigate which of the two signals (NSA vs. speech) is more useful in the classification task, and (2) to compare whether deep learning -based CNN classifiers with spectrogram and mel-spectrogram features are able to improve the classification accuracy compared to SVM classifiers using hand-crafted glottal source features. The results indicated that the NSA signal showed better classification of the voice qualities compared to the speech signal, and that the CNN classifier outperformed the SVM classifiers with large margins. The best mean classification accuracy was achieved with mel-spectrogram as input to the CNN classifier (93.8% for NSA and 90.6% for speech).
基于语音和颈部加速度计信号的语音质量分类卷积神经网络
在语音质量自动分类方面,以往的研究主要是研究以声学语音信号为输入的支持向量机(SVM)分类器。最近,一项语音质量分类研究以颈部表面加速度计(NSA)和语音信号为输入,并使用具有手工制作声门源特征的支持向量机进行。本研究使用卷积神经网络(cnn)作为分类器,对同时记录的NSA和语音信号进行了三种语音质量(呼吸、模态和按压)的分类。该研究有两个目标:(1)研究两种信号(NSA和speech)中哪一种在分类任务中更有用;(2)比较基于深度学习的CNN分类器与使用手工制作声门源特征的SVM分类器相比,具有谱图和mel-谱图特征的分类器是否能够提高分类精度。结果表明,NSA信号对语音质量的分类效果优于语音信号,CNN分类器的分类效果优于SVM分类器,且差值较大。以mel- spectrum作为CNN分类器的输入,其平均分类准确率最高(NSA为93.8%,speech为90.6%)。
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