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EEG efficient classification of imagined right and left hand movement using RBF kernel SVM and the joint CWT_PCA

机译:使用RBF内核SVM和联合CWT_PCA对想象的左右手运动进行EEG有效分类

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摘要

Brain-machine interfaces are systems that allow the control of a device such as a robot arm through a person's brain activity; such devices can be used by disabled persons to enhance their life and improve their independence. This paper is an extended version of a work that aims at discriminating between left and right imagined hand movements using a support vector machine (SVM) classifier to control a robot arm in order to help a person to find an object in the environment. The main focus here is to search for the best features that describe efficiently the electroencephalogram data during such imagined gestures by comparing two feature extraction methods, namely the continuous wavelet transform (CWT) and the empirical modal decomposition (EMD), combined with the principal component analysis (PCA) that were fed through a linear and radial basis function (RBF) kernel SVM classifier. The experimental results showed high performance achieving an average accuracy across all the subjects of 92.75% with an RBF kernel SVM classifier using CWT and PCA compared to 80.25% accuracy obtained with EMD and PCA. The proposed system has been implemented and tested using data collected from five male subjects and it enabled the control of the robot arm in the right and the left direction.
机译:脑机接口是允许通过人的大脑活动来控制诸如机器人手臂之类的设备的系统。残疾人可以使用这种设备来改善他们的生活并改善他们的独立性。本文是一项工作的扩展版本,旨在使用支持向量机(SVM)分类器来控制机器人手臂,以帮助人们在环境中找到对象,从而区分左右想像的手部运动。这里的主要重点是通过比较两种特征提取方法,即连续小波变换(CWT)和经验模态分解(EMD),并与主要成分相结合,来搜索可有效描述此类想象手势中的脑电图数据的最佳特征。分析(PCA)通过线性和径向基函数(RBF)内核SVM分类器输入。实验结果表明,使用CWT和PCA的RBF核SVM分类器可在所有受试者中实现92.75%的平均准确度,而使用EMD和PCA可获得80.25%的准确度。所建议的系统已使用从五个男性受试者收集的数据进行了实施和测试,并且能够在左右方向上控制机器人手臂。

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