Motor Imagery Classification Using EEG Signals for Brain-Computer Interface Applications

S. Mazumdar, Rohit Chaudhary, Suruchi Suruchi, S. Mohanty, D. Kumari, A. Swetapadma
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引用次数: 1

Abstract

In this chapter, a nearest neighbor (k-NN)-based method for efficient classification of motor imagery using EEG for brain-computer interfacing (BCI) applications has been proposed. Electroencephalogram (EEG) signals are obtained from multiple channels from brain. These EEG signals are taken as input features and given to the k-NN-based classifier to classify motor imagery. More specifically, the chapter gives an outline of the Berlin brain-computer interface that can be operated with minimal subject change. All the design and simulation works are carried out with MATLAB software. k-NN-based classifier is trained with data from continuous signals of EEG channels. After the network is trained, it is tested with various test cases. Performance of the network is checked in terms of percentage accuracy, which is found to be 99.25%. The result suggested that the proposed method is accurate for BCI applications.
脑电信号在脑机接口中的运动图像分类
本章提出了一种基于最近邻(k-NN)的脑机接口(BCI)运动图像有效分类方法。脑电图(EEG)信号来自大脑的多个通道。将这些脑电信号作为输入特征,并给予基于k- nn的分类器对运动图像进行分类。更具体地说,这一章给出了柏林脑机接口的轮廓,它可以在最小的主题变化下操作。所有的设计和仿真工作都是用MATLAB软件进行的。基于k- nn的分类器使用脑电信号通道的连续信号进行训练。网络训练完成后,用各种测试用例对其进行测试。网络的性能以百分比准确率进行检查,发现准确率为99.25%。结果表明,该方法在脑机接口应用中是准确的。
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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