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Invariant Common Spatial Patterns: Alleviating Nonstationarities in Brain-Computer Interfacing

机译:不变的常见空间模式:减轻脑机接口中的非平稳性

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Brain-Computer Interfaces can suffer from a large variance of the subject conditions within and across sessions. For example vigilance fluctuations in the individual, variable task involvement, workload etc. alter the characteristics of EEG signals and thus challenge a stable BCI operation. In the present work we aim to define features based on a variant of the common spatial patterns (CSP) algorithm that are constructed invariant with respect to such nonstationarities. We enforce invariance properties by adding terms to the denominator of a Rayleigh coefficient representation of CSP such as disturbance covariance matrices from fluctuations in visual processing. In this manner physiological prior knowledge can be used to shape the classification engine for BCI. As a proof of concept we present a BCI classifier that is robust to changes in the level of parietal α-activity. In other words, the EEG decoding still works when there are lapses in vigilance.
机译:脑机接口可能在会话期间和会话之间遭受很大的主题条件差异。例如,个人的警惕性波动,可变的任务参与,工作量等会改变EEG信号的特征,从而挑战稳定的BCI操作。在当前的工作中,我们旨在基于常见空间模式(CSP)算法的变体来定义特征,该变体相对于这种非平稳性是不变的。我们通过将术语添加到CSP的瑞利系数表示的分母来强制不变性,例如视觉处理中的波动引起的干扰协方差矩阵。以这种方式,生理先验知识可用于形成BCI的分类引擎。作为概念的证明,我们提出了一种BCI分类器,该分类器对顶壁α活性水平的变化具有鲁棒性。换句话说,当警惕性下降时,EEG解码仍然有效。

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