Generalized Sequential Forward Selection Method for Channel Selection in EEG Signals for Classification of Left or Right Hand Movement in BCI

Moein Radman, Ali Chaibakhsh, N. Nariman-zadeh, Huiguang He
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引用次数: 10

Abstract

Most of the BCI systems need EEG data with several channels to reach good accuracy. However, exceedingly increasing the channel need will increase the amount of calculation, and in some cases, decrease the accuracy and will also make the implementation of a BCI system difficult. Therefore, identifying the most effective channels in BCI systems is crucial because it will decrease the complexity and increase system accuracy. The Generalized Sequential forward selection (GSFS) method is used in this paper to choose the channel in a motor imagery BCI system for classification of right and left hand. Firstly, data is filtered to be in the frequency range of 4-30 Hz because the results of previous research revealed that the highest effect of motor imagery is exerted inside this frequency range. The Common Spatial Pattern (CSP) features and frequency domain features are simultaneously used in order to improve the system performance. Moreover, a PCVM classifier is used to enhance the classification performance. Employing the GSFS method and also simultaneously extracting the CSP and frequency domain features have increased the system output accuracy. The computation cost of this method is low compared to that of the genetic algorithm method for channel selection. The classification precision in the method used in this research is higher with respect to that of the SVM-RFE method which shows the advantage of this method over other methods for channel selection in an MI-BCI system.
脑机接口左、右手运动分类中脑电信号通道选择的广义顺序正向选择方法
大多数脑机接口系统需要多个通道的脑电信号才能达到较好的准确率。然而,过度增加信道需求会增加计算量,在某些情况下,会降低精度,也会使BCI系统的实现变得困难。因此,确定BCI系统中最有效的通道至关重要,因为它将降低复杂性并提高系统准确性。本文采用广义序贯前向选择(GSFS)方法在运动图像脑机接口系统中选择通道进行右手和左手的分类。首先,我们将数据过滤到4- 30hz的频率范围内,因为之前的研究结果表明运动意象在这个频率范围内发挥最大的作用。为了提高系统的性能,同时利用了公共空间模式(CSP)特征和频域特征。此外,还采用了PCVM分类器来提高分类性能。采用GSFS方法,同时提取CSP和频域特征,提高了系统输出精度。与遗传算法相比,该方法具有较低的信道选择计算量。与SVM-RFE方法相比,本研究方法的分类精度更高,显示了该方法在MI-BCI系统中通道选择方面优于其他方法的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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