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A new brain-robot interface system based on SVM-PSO classifier

机译:基于SVM-PSO分类器的新脑机械接口系统

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This paper presents a new noninvasive brain-robot interface system for control of two degrees of freedom robot through motor imagery EEG signals. Signal classification is based on optimized Support Vector Machine (SVM) by Particle Swarm Optimization (PSO) algorithm. EEG signals of FC3, C3, CP3, FC4, C4 and CP4 Channels that are related to hands movement as well as Cz and FCz channels that are related to feet movement are considered. Radial basis function (RBF) and penalty functions of SVM are optimized through PSO algorithm. For validation of SVM-PSO classifier, the EEG signals are collected from two databases: PhysioNet and BCI Competition III, then features including Power Spectral Density (PSD) and wavelet parameters are used as the input of the classifier. By comparing the results of the SVM and SVM-PSO classifiers, is concluded that performance of classifier in terms of accuracy is increased through PSO algorithm. SVM-PSO classification accuracy for wavelet and PSD features are obtained 81% and 92%, respectively. The best algorithm is used to control a two degrees of freedom (one for left and right hand movements and the other for left and right foot movements) industrial robot experimentally. It shows the applicability and effectiveness of proposed method for high accuracy brain-robot interface systems.
机译:本文介绍了一种新的非冒险大脑机器人接口系统,用于控制通过电动机图像EEG信号控制两度自由机器人。信号分类基于通过粒子群优化(PSO)算法的优化支持向量机(SVM)。考虑FC3,C3,CP3,FC4,C4和CP4通道的EEG信号,以及与脚移动的CL和CZ和FCZ通道相关。通过PSO算法优化了SVM的径向基函数(RBF)和惩罚功能。为了验证SVM-PSO分类器,从两个数据库收集EEG信号:PhysioNet和BCI竞赛III,然后使用包括功率谱密度(PSD)和小波参数的特征作为分类器的输入。通过比较SVM和SVM-PSO分类器的结果,得出结论,通过PSO算法增加了准确性方面的分类器的性能。为小波和PSD特征的SVM-PSO分类精度分别获得81 %和92 %。最好的算法用于通过实验地控制两度自由(一个用于左手运动,另一个用于左右移动)工业机器人。它显示了提出的高精度脑机器界面界面系统方法的适用性和有效性。

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