Brain-Computer Interface: Feature Extraction and Classification of Motor Imagery-Based Cognitive Tasks

H. Nisar, Kee Wee Boon, Yeap Kim Ho, Teoh Shen Khang
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引用次数: 4

Abstract

Decoding motor imagery (MI) signals accurately is important for Brain-Computer Interface (BCI) systems for healthcare applications. Electroencephalography (EEG) decoding is a challenging task because of its complexity, and dynamic nature. By improving EEG signal classification, the performance of MI-based BCI can be enhanced. In this paper, five features (Band Power (BP), Approximate Entropy (ApEn), statistical features, wavelet-based features, and Common Spatial Pattern (CSP)) are extracted from EEG signals. For classification, Decision Tree (DT), Random Forest (RF), Support Vector Machine (SVM), K-Nearest Neighbors (KNN), and Artificial Neural Network (ANN) are used. These methods are tested on a publicly available Physionet motor imagery database. The EEG signals are recorded from 64 channels for 50 subjects, while the subject is performing four different MI tasks. The proposed method achieved an accuracy of 98.53% for left and right hands MI tasks with ApEn feature (overlapping ratio~ 0.8) and SVM classifier. Hence the proposed method shows better results than several EEG MI classification methods proposed in the literature.
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脑机接口:基于运动图像的认知任务特征提取与分类
准确解码运动图像(MI)信号对于医疗保健应用的脑机接口(BCI)系统非常重要。由于脑电图的复杂性和动态性,其解码是一项具有挑战性的任务。通过改进脑电信号的分类,可以提高基于mi的脑机接口的性能。本文从脑电信号中提取了5个特征(频带功率(BP)、近似熵(ApEn)、统计特征、基于小波的特征和共同空间模式(CSP))。对于分类,使用决策树(DT),随机森林(RF),支持向量机(SVM), k近邻(KNN)和人工神经网络(ANN)。这些方法在一个公开可用的Physionet运动图像数据库上进行了测试。在50名受试者执行4种不同的MI任务时,从64个通道记录EEG信号。该方法对ApEn特征(重叠比~ 0.8)和SVM分类器的左手和右手MI任务的准确率达到98.53%。因此,该方法比文献中提出的几种脑电MI分类方法具有更好的分类效果。
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