Motor-Imagery EEG Signal Classification using Optimized Support Vector Machine by Differential Evolution Algorithm

L.A. Fard, K. Jaseb, S.M. Mehdi Safi
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引用次数: 1

Abstract

Background: Motor-Imagery (MI) is a mental or cognitive stimulation without actual sensory input that enables the mind to represent perceptual information. This study aims to use the optimized support vector machine (OSVM) by differential evolution algorithm for motor-Imagery EEG signal classification. Methods: A total of three filters were applied to each signal during the preprocessing phase. The bandstop filter was used to remove urban noise and signal recorders, the median filter to remove random sudden peaks in the signal, and finally, the signal was normalized using the mapminmax filter. The most valuable features were extracted including mean signal intensity, minimum signal value, signal peak value, signal median, signal standard deviation, energy, corticoids, entropy, and signal skewness. Results: The accuracy of the SVM for linear, Gaussian, polynomial, and radial base kernels was 67.3%, 55.1%, 63.6%, and 55.1%, respectively, which was optimized after the classification model by differential evolution algorithm; however, the accuracy for OSVM was increased to 99.6%. Conclusion: Examination of the brain signal appearance for uniform motor-Imagery of both hands showed a significant difference between the signal of motor-Imagery mode with OSVM algorithm (99.6% accuracy), which gave promising results for classification motor imagery EEG signal.
基于差分进化算法的优化支持向量机运动图像脑电信号分类
背景:运动意象(MI)是一种没有实际感官输入的心理或认知刺激,使大脑能够表征感知信息。本研究旨在利用基于差分进化算法的优化支持向量机(OSVM)对运动-意象脑电信号进行分类。方法:在预处理阶段,对每个信号共应用三个滤波器。用带阻滤波器去除城市噪声和信号记录器,用中值滤波器去除信号中的随机突发峰值,最后用mapminmax滤波器对信号进行归一化处理。提取最有价值的特征包括平均信号强度、最小信号值、信号峰值、信号中位数、信号标准差、能量、皮质激素、熵和信号偏度。结果:线性基核、高斯基核、多项式基核和径向基核的SVM准确率分别为67.3%、55.1%、63.6%和55.1%,采用差分进化算法对分类模型进行了优化;而OSVM的准确率提高到99.6%。结论:对双手均匀运动表象的脑信号外观检查显示,运动表象模式与OSVM算法的脑信号具有显著性差异(准确率为99.6%),为运动表象脑信号分类提供了良好的结果。
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