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Robust common spatial patterns by minimum divergence covariance estimator

机译:最小散度协方差估计器鲁棒的常见空间格局

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Reliable estimation of covariance matrices from high-dimensional electroencephalographic recordings is crucial for a successful application of Brain-Computer Interface (BCI) systems. Artifactual trials and non-stationarity effects may have a large impact on the estimation quality and adversely affect the spatial filter computation and consequently the classification accuracy of the system. In this work we propose a novel robust estimator for covariance matrices that takes into account the trial structure of BCI experiments. Our estimator minimizes beta divergence between the empirical and a model Wishart distribution, thus allows to robustly average the estimated covariance matrices of different trials and downweight the influence of outlier trials. We evaluate this novel estimator on a data set with recordings from 80 subjects.
机译:高维脑电图记录对协方差矩阵的可靠估计对于脑机接口(BCI)系统的成功应用至关重要。人工试验和非平稳性影响可能会对估计质量产生重大影响,并对空间滤波器的计算产生不利影响,并因此对系统的分类准确性产生不利影响。在这项工作中,我们提出了一种针对协方差矩阵的新型鲁棒估计器,该估计器考虑了BCI实验的试验结构。我们的估算器可最大程度地减少经验值与模型Wishart分布之间的beta差异,从而可以稳健地平均不同试验的估计协方差矩阵,并减轻异常试验的影响。我们用来自80个受试者的录音数据集来评估这种新颖的估计量。

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