Kernel SVM Classifiers based on Fractal Analysis for Estimation of Hearing Loss

M. Djemai, M. Guerti
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Abstract

Hearing screening consists of analyzing the hearing capacity of an individual, regardless of age. It identifies serious hearing problems, degree, type and cause of the hearing loss and the needs of the person to propose a solution. Auditory evoked potentials (AEPs) which are detected on the EEG auditory cortex area are very small signals in response to a sound stimulus (or electric) from the inner ear to the primary auditory areas of the brain. AEPs are noninvasive methods used to detect hearing disorders and to estimate hearing thresholds level. In this paper, due to the nonlinear characteristics of EEG, Detrented Fluctuation Analysis (DFA) is used to characterize the irregularity or complexity of EEG signals by calculating the Fractal Dimension (FD) from the recorded AEP signals of the impaired hearing and the normal subjects. This is to estimate their hearing threshold. In order to classify both groups, hearing impaired and normal persons, support vector machine (SVM) is used. For comparably evaluating the performance of SVM classifier, three kernel functions: linear, radial basis function (RBF) and polynomial are employed to distinguish normal and the abnormal hearing subjects. Grid search technique is selected to estimate the optimal kernel parameters. Our results indicate that the RBF kernel SVM classifier is promising; it is able to obtain a high training as well as testing classification accuracy.
基于分形分析的核支持向量机分类器用于听力损失估计
听力筛查包括分析一个人的听力能力,而不考虑年龄。它确定听力损失的严重问题、程度、类型和原因,以及提出解决方案的人的需要。听觉诱发电位(AEPs)是由内耳向大脑初级听觉区发出的声音刺激(或电刺激)所产生的非常小的信号,在脑电图听觉皮层区域检测到。aep是一种用于检测听力障碍和估计听力阈值水平的非侵入性方法。本文针对脑电信号的非线性特点,采用离散波动分析(DFA)方法,从听力受损者和正常人记录的脑电信号中计算分形维数(FD)来表征脑电信号的不规则性或复杂性。这是为了估计他们的听力阈值。为了对听力受损人群和正常人进行分类,使用了支持向量机(SVM)。为了比较评价SVM分类器的性能,采用线性、径向基函数(RBF)和多项式三种核函数来区分听力正常和异常受试者。采用网格搜索技术估计最优核参数。结果表明,RBF核支持向量机分类器是一种很有前途的分类器;它能够获得较高的训练和测试分类精度。
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