Automatic voice disorder classification using vowel formants

Muhammad Ghulam, M. Alsulaiman, A. Mahmood, Z. Ali
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引用次数: 38

Abstract

In this paper, we propose an automatic voice disorder classification system using first two formants of vowels. Five types of voice disorder, namely, cyst, GERD, paralysis, polyp and sulcus, are used in the experiments. Spoken Arabic digits from the voice disordered people are recorded for input. First formant and second formant are extracted from the vowels [Fatha] and [Kasra], which are present in Arabic digits. These four features are then used to classify the voice disorder using two types of classification methods: vector quantization (VQ) and neural networks. In the experiments, neural network performs better than VQ. For female and male speakers, the classification rates are 67.86% and 52.5%, respectively, using neural networks. The best classification rate, which is 78.72%, is obtained for female sulcus disorder.
使用元音共振峰的语音障碍自动分类
本文提出了一种基于元音前两个共振峰的语音障碍自动分类系统。实验中使用了五种类型的声音障碍,即囊肿,GERD,麻痹,息肉和沟。语音紊乱者的阿拉伯语语音数字被记录下来供输入。第一个音峰和第二个音峰是从元音[Fatha]和[Kasra]中提取出来的,它们出现在阿拉伯数字中。然后使用向量量化(VQ)和神经网络两种分类方法对语音障碍进行分类。在实验中,神经网络的性能优于VQ。对于女性和男性说话者,使用神经网络的分类率分别为67.86%和52.5%。女性沟病的分类率最高,为78.72%。
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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