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Classification of left and right hand motor imagery tasks based on EEG frequency component selection

机译:基于脑电频率分量选择的左右手运动图像任务分类

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摘要

In this paper, a method based on the time-frequency analysis of EEG frequency spectral Fisher-ratio is proposed to pre-select the most relevant movement-related EEG features. Within this method, combining EEG spectral time-frequency distribution with Fisher criterion, the detailed separability information of the frequency components between two classes of EEG patterns in time-frequency plane over C3, C4, Cz are well characterized, which provides a good guide for selecting the most relevant EEG frequency components. According to Fisher-ratio distribution of EEG spectrum by Matching Pursuit (MP) with high frequency resolution, the matched method Morlet wavelet filter is applied to extract the most relevant EEG frequency components. With the optimized EEG features, two classes of EEG patterns during left and right hand motor imagery are discriminated. Here, BCI competition data are analyzed offline and the satisfactory classification results are obtained, which verify the effectiveness of the proposed method in selecting the most relevant EEG spectral components.
机译:本文提出了一种基于脑电频谱Fisher-ratio时频分析的方法,以预先选择最相关的运动相关脑电特征。该方法结合脑电频谱时频分布和Fisher准则,很好地表征了C3,C4,Cz在时频平面上两类脑电模式之间频率分量的详细可分性信息,为选择最相关的EEG频率分量。根据具有高分辨率的匹配追踪(MP)的脑电频谱的费舍尔比分布,采用匹配方法Morlet小波滤波器提取最相关的脑电频率分量。通过优化的脑电图特征,可以区分左右手运动图像中的两类脑电图模式。在此,离线分析BCI竞争数据并获得令人满意的分类结果,这证明了该方法在选择最相关的EEG频谱分量方面的有效性。

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