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Motor Imagery Classification by Means of Source Analysis for Brain Computer Interface Applications

机译:通过脑计算机接口应用程序的源分析对运动图像进行分类

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摘要

We report a pilot study of performing classification of motor imagery for Brain Computer Interface applications, by means of source analysis of scalp-recorded EEGs. Independent component analysis (ICA) was used as a spatio-temporal filter extracting signal components relevant to left or right motor imagery (MI) tasks. Source analysis methods including equivalent dipole analysis and cortical current density imaging were applied to reconstruct equivalent neural sources corresponding to MI, and classification was performed based on the inverse solutions. The classification was considered correct if the equivalent source was found over the motor cortex in the corresponding hemisphere. A classification rate of about 80% was achieved in the human subject studied using both the equivalent dipole analysis and the cortical current density imaging analysis. The present promising results suggest that the source analysis approach could manifest a clearer picture on the cortical activity, and thus facilitate the classification of MI tasks from scalp EEGs.
机译:我们报告通过对头皮记录的脑电图进行源分析,对脑计算机接口应用程序进行运动图像分类的一项初步研究。独立分量分析(ICA)用作时空滤波器,提取与左右运动图像(MI)任务相关的信号分量。应用包括等效偶极分析和皮层电流密度成像在内的源分析方法来重建与MI相对应的等效神经源,并基于反解进行分类。如果在相应半球的运动皮层上找到了等效源,则认为分类正确。使用等效偶极分析和皮层电流密度成像分析,在研究的人类受试者中实现了约80%的分类率。目前有希望的结果表明,来源分析方法可以显示出更清晰的皮层活动图,从而有助于从头皮脑电图对MI任务进行分类。

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