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A comprehensive analysis of support vector machine and Gaussian mixture model for classification of epilepsy from EEG signals

机译:支持向量机和高斯混合模型的综合分析,用于基于脑电信号的癫痫分类

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Epilepsy is one of the chronic brain disorders which affect the entire lifestyle of the person. It is characterized by recurrent seizures which are nothing but short episodes of involuntary activity or movement. For the diagnosis of epilepsy, detecting seizures is a vital step. In the clinical contexts, to detect the seizures, Electroencephalography (EEG) is used by means of visual scanning. The main aim of the paper is to reduce the dimensions of the EEG signals as the recordings of the EEG are too long to process and then classified with various post classifiers and to provide a performance comparison is provided. The dimensions of EEG signal are reduced with five different techniques like Fuzzy Mutual Information (FMI), Independent Component Analysis (ICA), Linear Graph Embedding (LGE), Linear Discriminant Analysis (LDA) and Variational Bayesian Matrix Factorization (VBMF). The dimensionally reduced values are then fed inside the Gaussian Mixture Model (GMM) and Support Vector Machines with various Kernels like Linear Kernel, Gaussian Kernel and Polynomial Kernel to classify the epilepsy from EEG signals. An exhaustive analysis is done and the results are presented with performance metrics like performance index, sensitivity, specificity, time delay, quality values and accuracy. The best result is obtained with an accuracy of 97.84% when FMI is used as a dimensionality reduction technique and followed by the usage of GMM as the post classifier.
机译:癫痫病是影响人的整个生活方式的慢性脑疾病之一。它的特征是反复发作,只是短暂的非自愿活动或运动。对于癫痫的诊断,检测癫痫发作是至关重要的一步。在临床环境中,为了检测癫痫发作,通过视觉扫描使用脑电图(EEG)。本文的主要目的是减小EEG信号的尺寸,因为EEG的记录太长,无法处理,然后使用各种后分类器进行分类,并提供性能比较。通过五种不同的技术(例如模糊互信息(FMI),独立分量分析(ICA),线性图嵌入(LGE),线性判别分析(LDA)和变分贝叶斯矩阵分解(VBMF))来减小EEG信号的大小。然后将降维后的值馈入具有各种内核(如线性内核,高斯内核和多项式内核)的高斯混合模型(GMM)和支持向量机中,以根据EEG信号对癫痫病进行分类。进行了详尽的分析,并提供了性能指标,如性能指标,灵敏度,特异性,时间延迟,质量值和准确性。当将FMI用作降维技术,然后将GMM用作后分类器时,可以达到97.84%的精度,从而获得最佳结果。

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