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A hybrid expert system for automatic detection of voice disorders

机译:用于自动检测语音障碍的混合专家系统

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Pathological voice analysis is a challenging task and an important area of research in voice disorder identification. Until now, the long-time acoustic (LTA) parameters are used primitively to classify the disordered voices into pathological and normal. Selection of such optimal LTA features is a disputing task. Previous researchers have used various data projection methods like principle component analysis (PCA), linear discriminant analysis (LDA) and sub-optimal searching techniques like sequential forward selection (SFS), sequential backward selection (SBS), and individual feature selection (IFS) methods for this purpose. But, these methods work efficiently for linearly separable datasets only. In order to overcome these issues, we propose a hybrid expert system in this paper, which includes the optimal selection of LTA parameters using genetic algorithm (GA), followed by non-linear classification algorithms to classify the two classes of voice samples. Nowadays, though many non-linear and high-order spectral parameters of voices have been used in this application, LTA features are scoring more importance because their clinical diagnosis is of more ease. Within this context, the GA-based feature vector quantisation combined with SVM classification is demonstrated to be more reliable, yielding 96.86% of classification accuracy for a feature vector of length 10.
机译:病理性语音分析是语音障碍识别中的一项艰巨任务和重要研究领域。迄今为止,长期以来,长期使用声学(LTA)参数将无序声音分类为病理性和正常性。选择此类最佳LTA功能是一项有争议的任务。以前的研究人员已经使用了各种数据投影方法,例如主成分分析(PCA),线性判别分析(LDA)和次优搜索技术,例如顺序正向选择(SFS),顺序向后选择(SBS)和单个特征选择(IFS)为此目的的方法。但是,这些方法仅适用于线性可分离的数据集。为了克服这些问题,我们在本文中提出了一种混合专家系统,该系统包括使用遗传算法(GA)最优选择LTA参数,然后使用非线性分类算法对两类语音样本进行分类。如今,尽管在此应用程序中使用了许多非线性和高阶语音频谱参数,但LTA功能的重要性更高,因为它们的临床诊断更加容易。在这种情况下,基于GA的特征向量量化与SVM分类相结合被证明是更可靠的,对于长度为10的特征向量,其分类精度为96.86%。

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