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Tensor classification for P300-based brain computer interface

机译:基于P300的脑计算机接口的Tensor分类

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Classification methods have been widely applied in most brain computer interfaces (BCIs) that control devices for better quality of life. Most existing classification methods for P300-based BCIs extract features based on temporal structure related to P300 components of event-related potentials (ERPs). Some others exploit the spatial distribution of ERPs optimally selected by recursive channel elimination. However, none of them employed multilinear structures which exploit hidden features in P300-based BCI data. In this paper, we propose a new feature extraction method based on tensor decomposition for ERP-based BCIs. The method seeks an optimal feature subspace simultaneously spanned by temporal and spatial bases, and additional bases which indicate a variant of ERPs obtained by different degrees of polynomial fittings. The proposed method has been evaluated by both the BCI competition III data set II and the affective face driven paradigm data set, and achieved 92% and 95% classification accuracies respectively, which were better than those of most existing P300-based BCI algorithms.
机译:分类方法已广泛应用于控制设备以改善生活质量的大多数大脑计算机接口(BCI)。基于P300的BCI的大多数现有分类方法都是基于与事件相关电位(ERP)的P300组件有关的时间结构提取特征的。其他一些人则通过递归通道消除来最佳选择ERP的空间分布。但是,他们都没有采用利用基于P300的BCI数据中隐藏特征的多线性结构。本文提出了一种基于张量分解的基于ERP的BCI特征提取方法。该方法寻求同时由时间和空间基础以及其他基础表示的最佳特征子空间,这些基础指示通过不同程度的多项式拟合获得的ERP的变体。所提出的方法已经通过BCI竞赛III数据集II和情感面孔驱动范例数据集进行了评估,分别达到92%和95%的分类精度,这比大多数现有的基于P300的BCI算法要好。

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