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Robust Spatial Filters on Three-Class Motor Imagery EEG Data Using Independent Component Analysis

机译:基于独立分量分析的三类运动图像脑电数据的鲁棒空间滤波器

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Independent Component Analysis (ICA) was often used to separate movement related independent components (MRICs) from Electroencephalogram (EEG) data.?However, to obtain robust spatial filters, complex characteristic features, which were manually selected in most cases, have been commonly used. This study proposed a new simple algorithm to extract MRICs automatically, which just utilized the spatial distribution pattern of ICs. The main goal of this study was to show the relationship between spatial filters performance and designing samples. The EEG data which contain?mixed brain states (preparing, motor imagery and rest) were used to design spatial filters. Meanwhile, the single class data was also used to calculate spatial filters to assess whether the MRICs extracted on different class motor imagery spatial filters are similar. Furthermore, the spatial filters constructed on one subject’s EEG data were applied to extract the others’ MRICs. Finally, the different spatial filters were then applied to single-trial EEG to extract MRICs, and Support Vector Machine (SVM) classifiers were used to discriminate left hand、right-hand and foot imagery movements of BCI Competition IV Dataset 2a, which recorded four motor imagery data of nine subjects. The results suggested that any segment of finite motor imagery EEG samples could be used to design ICA spatial filters, and the extracted MRICs are consistent if the position of electrodes are the same, which confirmed the robustness and practicality of ICA used in the motor imagery Brain Computer Interfaces (MI-BCI) systems.
机译:独立成分分析(ICA)通常用于从脑电图(EEG)数据中分离与运动相关的独立成分(MRIC)。但是,为了获得鲁棒的空间过滤器,通常使用通常在大多数情况下手动选择的复杂特征。这项研究提出了一种新的简单算法来自动提取MRIC,该算法仅利用了IC的空间分布模式。这项研究的主要目的是显示空间滤波器性能与设计样本之间的关系。包含混合大脑状态(准备,运动图像和休息)的EEG数据用于设计空间过滤器。同时,单类数据还用于计算空间滤波器,以评估在不同类运动图像空间滤波器上提取的MRIC是否相似。此外,将基于一个对象的EEG数据构建的空间滤波器应用于提取其他对象的MRIC。最后,将不同的空间过滤器应用于单次试验脑电图以提取MRIC,并使用支持向量机(SVM)分类器来区分BCI Competition IV数据集2a的左,右和足影像运动,记录了四个九个对象的运动图像数据。结果表明,有限的运动图像脑电图样本的任何片段都可以用于设计ICA空间滤波器,并且如果电极的位置相同,则提取的MRIC是一致的,这证实了ICA在运动图像中的鲁棒性和实用性。计算机接口(MI-BCI)系统。

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