Linear Discriminant Analysis Classifies the EEG Spectral Features Obtained from Three Class Motor Imagination

Maanvi Bhatnagar, G. Gupta, R. K. Sinha
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引用次数: 2

Abstract

This paper explores the changes in power associated with the imagination of motor imagery (MI) signals corresponding to hand movement and foot movement. The study presented in this paper establishes a correlation between MI signals and Event-RelatedSynchronization (ERS)and Event-Related Desynchronization (ERD) phenomenon with the help of Band power features. This fact has been further validated with the help of Linear Discriminant Analysis (LDA) Classifier. The analysis is conducted on dataset IIIa, obtained from BCI Competition III conducted by Graz University, Austria. The dataset is a multiclass data recorded for three subjects. The accuracy of individual classes and inter-class is calculated. The average accuracy for subject K3b, K6b and L1b obtained is 91.92%, 59.97%, 57.89% respectively when training data is used as test data and when a set of test data is used the resultant accuracy obtained is 85.66%, 65.33%, 58% for the three subjects respectively. Foot data showed very less accuracy in comparison with the data of hands. It is analyzed through the studies conducted in this paper that simple phenomenon of ERD/ERS can be utilized in a multiclass Brain-Computer Interface (BCI) system operated for MI.
线性判别分析对三类运动想象得到的脑电频谱特征进行了分类
本文探讨了手、足运动时与运动意象想象信号相关的能量变化。本文利用带功率特征建立了MI信号与事件相关同步(ERS)和事件相关去同步(ERD)现象之间的相关性。这一事实在线性判别分析(LDA)分类器的帮助下得到了进一步验证。该分析是对数据集IIIa进行的,该数据集来自奥地利格拉茨大学举办的BCI竞赛III。该数据集是记录了三个主题的多类数据。计算了单个类和类间的精度。当使用训练数据作为测试数据时,得到的被试K3b、K6b和L1b的平均准确率分别为91.92%、59.97%、57.89%,当使用一组测试数据时,得到的三个被试的结果准确率分别为85.66%、65.33%、58%。与手的数据相比,脚的数据显示出非常低的准确性。通过本文的研究,分析了简单的ERD/ERS现象可以应用于MI操作的多级脑机接口(BCI)系统。
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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