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Feature relevance analysis supporting automatic motor imagery discrimination in EEG based BCI systems

机译:特征相关性分析在基于BEG系统的EEG中支持自动运动图像识别

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Recently, there have been many efforts to develop Brain Computer Interface (BCI) systems, allowing identifying and discriminating brain activity, as well as, support the control of external devices, and to understand cognitive behaviors. In this work, a feature relevance analysis approach based on an eigen decomposition method is proposed to support automatic Motor Imagery (MI) discrimination in electroencephalography signals for BCI systems. We select a set of features representing the best as possible the studied process. For such purpose, a variability study is performed based on traditional Principal Component Analysis. EEG signals modelling is carried out by feature estimation of three frequency-based and one time-based. Our approach provides testing over a well-known MI dataset. Attained results show that presented algorithm can be used as tool to support discrimination of MI brain activity, obtaining acceptable results in comparison to state of the art approaches.
机译:近来,已经进行了许多努力来开发脑计算机接口(BCI)系统,以允许识别和区分脑活动,并支持对外部设备的控制以及理解认知行为。在这项工作中,提出了一种基于特征分解方法的特征相关性分析方法,以支持BCI系统的脑电信号中的自动运动图像(MI)判别。我们选择一组代表最佳研究过程的特征。为此,在传统的主成分分析的基础上进行了变异性研究。通过基于三个频率和一个时间的特征估计来执行EEG信号建模。我们的方法可以对著名的MI数据集进行测试。获得的结果表明,所提出的算法可以用作支持MI脑活动鉴别的工具,与现有技术相比,可以获得可接受的结果。

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