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Spatial Pattern of Electroencephalography (EEG) Extracted by Nonlinear Features during Working Memory Maintenance

机译:工作记忆维持过程中非线性特征提取的脑电图(EEG)空间格局。

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When working on electroencephalography (EEG) of cognitive tasks, there is a problem of high channel dimension. In this work, a channel selection method is proposed to achieve efficient spatial pattern. First, it extracts the linear and nonlinear multi-features of the entire brain EEG signal and applies the Support Vector Machine (SVM), K-Nearest neighbors (KNN), Random Forest (RF) multiple classifiers for classification. It is found that the nonlinear feature has a better classification performance in the memory material classification task (images vs characters) based on scalp EEG signals of the working memory maintenance procedure. Then the SVM is applied for classification on each channel by using the nonlinear feature. The top-10 channels with better classification performance are proved as the specific spatial pattern of the working memory maintenance procedure based on working memory materials. The channel selection method proposed in this paper can be extended to other classification analysis of cognitive tasks to extract the efficient spatial patterns.
机译:在进行认知任务的脑电图(EEG)时,存在通道尺寸较大的问题。在这项工作中,提出了一种信道选择方法以实现有效的空间模式。首先,它提取整个脑电信号的线性和非线性多重特征,并应用支持向量机(SVM),K最近邻(KNN),随机森林(RF)多个分类器进行分类。研究发现,基于工作记忆维护程序的头皮脑电信号,非线性特征在记忆材料分类任务(图像与字符)中具有更好的分类性能。然后,通过使用非线性特征,将SVM应用于每个通道的分类。具有较好分类性能的前十个通道被证明是基于工作记忆材料的工作记忆维护程序的特定空间模式。本文提出的信道选择方法可以扩展到认知任务的其他分类分析中,以提取有效的空间模式。

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