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Wavelet coherence based channel selection for classifying single trial motor imagery

机译:基于小波相干的频道选择单次试用电动机图像

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Multi-channel electroencephalography (EEG) recordings require excessive computation and sometimes engender outliers, which make brain computer interface (BCI) systems inefficient. Thus, optimal channel selection becomes a key factor for developing a more comfortable BCI. This study emphasized on a time-frequency (T-F) coherence method, called as Wavelet Coherence (WC), for selecting lesser number of channels. The selected sets of channels were then used to classify two motor imagery (MI) tasks, i.e., right hand (RH) and right foot (RF). The data was collected from publicly available dataset IVa from BCI Competition III. Common spatial pattern (CSP) with and without regularization were applied as preprocessing techniques. While the classification accuracy is 90% using available 118 channels for subject ay, we have achieved higher classification accuracy of 93% using only 24 channels using CSP with regularization. Interestingly, the achieved classification accuracy for subject av is 67% using 4 channels only, that outperform the classification accuracy (i.e., 61%) achieved using 118 channels.
机译:多通道脑电图(EEG)录音需要过多的计算,有时会发出脑电站(BCI)系统效率低下。因此,最佳频道选择成为开发更舒适的BCI的关键因素。该研究在时频(T-F)相干方法中强调,称为小波相干(WC),用于选择较少的通道。然后使用所选择的通道组来分类两个电动机图像(MI)任务,即右手(RH)和右脚(RF)。从BCI竞赛III的公开可用数据集IVA收集数据。具有和不规则化的常见空间模式(CSP)作为预处理技术。虽然分类准确性为90%,但使用可用的118个主题AY通道,我们使用CSP使用CSP的24个通道进行了更高的分类精度为93%。有趣的是,仅使用4个通道实现对象AV的分类精度为67%,这效果优于使用118通道实现的分类精度(即61%)。

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