基于Lyapunov特征的脑电信号多类支持向量机分类

A. S. Muthanantha Murugavel, S. Ramakrishnan, K. Balasamy, T. Gopalakrishnan
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引用次数: 18

摘要

脑电图(EEGs)是脑电活动的记录。它是诊断癫痫等神经系统疾病不可或缺的工具。小波变换是分析脑电图等非平稳信号的有效工具。使用小波分析将EEG分解为delta, theta, alpha, beta和gamma子带。李雅普诺夫指数被用来量化信号的非线性混沌动力学,此外,大脑活动的不同状态有不同的混沌动力学被非线性不变的测量量化,如李雅普诺夫指数。对概率神经网络(PNN)和径向基函数神经网络进行了测试,并利用基准数据集对其分类率进行了评价。决策分两个阶段进行:通过计算Lyapunov指数和小波系数进行特征提取,并使用在提取的特征上训练的分类器进行分类。研究表明,Lyapunov指数和小波系数是表征脑电信号的特征,基于这些特征训练的多类SVM和PNN的分类准确率分别达到96%和94%。
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Lyapunov features based EEG signal classification by multi-class SVM
Electroencephalographms (EEGs) are records of brain electrical activity. It is an indispensable tool for diagnosing neurological diseases, such as epilepsy. Wavelet transform (WT) is an effective tool for analysis of non-stationary signal, such as EEGs. Wavelet analysis is used to decompose the EEG into delta, theta, alpha, beta, and gamma sub-bands. Lyapunov exponent is used to quantify the nonlinear chaotic dynamics of the signal‥ Furthermore, the distinct states of brain activity had different chaotic dynamics quantified by nonlinear invariant measures such as Lyapunov exponents. The probabilistic neural network (PNN) and radial basis function neural network were tested and also their performance of classification rate was evaluated using benchmark dataset. Decision making was performed in two stages: feature extraction by computing the Lyapunov exponents, Wavelet Coefficients and classification using the classifiers trained on the extracted features. Our research demonstrated that the Lyapunov exponents and Wavelet Coefficients are the features which well represent the EEG signals and the multi-class SVM and PNN trained on these features achieved high classification accuracies such as 96% and 94%.
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