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A Covariate Shift Minimisation Method to Alleviate Non-stationarity Effects for an Adaptive Brain-Computer Interface

机译:协变量平移最小化方法缓解自适应脑机接口的非平稳性

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The non-stationary nature of the electroencephalogram (EEG) poses a major challenge for the successful operation of a brain-computer interface (BCI) when deployed over multiple sessions. The changes between the early training measurements and the proceeding multiple sessions can originate as a result of alterations in the subject's brain process, new cortical activities, change of recording conditions and/or change of operation strategies by the subject. These differences and alterations over multiple sessions cause deterioration in BCI system performance if periodic or continuous adaptation to the signal processing is not carried out. In this work, the covariate shift is analyzed over multiple sessions to determine the non-stationarity effects and an unsupervised adaptation approach is employed to account for the degrading effects this might have on performance. To improve the system's online performance, we propose a covariate shift minimization (CSM) method, which takes into account the distribution shift in the feature set domain to reduce the feature set overlap and unbalance for different classes. The analysis and the results demonstrate the importance of CSM, as this method not only improves the accuracy of the system, but also reduces the classification unbalance for different classes by a significant amount.
机译:脑电图(EEG)的非平稳性质对在多个会话中进行部署的脑机接口(BCI)的成功运行提出了重大挑战。早期训练测量与进行中的多次训练之间的变化可能是由于受试者大脑过程的变化,新的皮层活动,记录条件的变化和/或受试者的操作策略的变化而引起的。如果不对信号处理进行周期性或连续的调整,则在多个会话上的这些差异和变更会导致BCI系统性能下降。在这项工作中,分析了多个会话的协变量偏移,以确定非平稳性影响,并采用了无监督的适应方法来解决这可能对性能产生的降级影响。为了提高系统的在线性能,我们提出了一种协变量偏移最小化(CSM)方法,该方法考虑了特征集域中的分布偏移,以减少不同类别的特征集重叠和不平衡。分析和结果证明了CSM的重要性,因为这种方法不仅提高了系统的准确性,而且还大大减少了不同类别的分类不平衡。

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