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Phase Synchronization Indices for Classification of Action Intention Understanding Based on EEG Signals

机译:基于EEG信号的行动意向分类的相位同步指标

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The classification of action intention understanding based on EEG signals is very important for human-robot and social interaction studies. In order to classify the action intention understanding brain signals efficiently, we first use three kinds of phase synchronization indices, phase locking value (PLV), phase lag index (PLI) and weight phase lag index (WPLI), to construct functional connectivity matrices in multiple micro time windows, and then extract the sum of significant edge values of each time window matrix as the classification feature, finally apply support vector machine (SVM) classifier to implement action intention understanding data classification task. Classification result shows that new method performs well on three datasets (alpha, beta and fusion frequency bands), and brain network statistical analysis demonstrates that many significant edges appear on the alpha frequency band. We conclude that the phase synchronization indices are extremely useful for the classification task, the sum of significant edge values is an effective classification feature, and the action intention understanding closely correlates with the alpha frequency band.
机译:基于EEG信号的行动意向分类对人机和社会互动研究非常重要。为了将动作意图有效地了解大脑信号,我们首先使用三种相位同步指数,锁相值(PLV),相滞索引(PLI)和权重相位滞后指数(WPLI)来构建功能连接矩阵多个Micro时间窗口,然后提取每个时间窗矩阵的显着边缘值的总和作为分类功能,最后应用支持向量机(SVM)分类器实现动作意图理解数据分类任务。分类结果表明,新的方法以及执行对三个数据集(α,β和融合频率带),和脑网络的统计分析表明,许多显著边缘出现在阿尔法频带。我们得出结论,相位同步指标对分类任务非常有用,重要的边缘值的总和是有效的分类特征,并且操作意图理解与α频带密切相关。

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