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Reducing BCI calibration effort in RSVP tasks using online weighted adaptation regularization with source domain selection

机译:使用源域选择的在线加权适应正常化降低RSVP任务中的BCI校准工作

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Rapid serial visual presentation based brain-computer interface (BCI) system relies on single-trial classification of event-related potentials. Because of large individual differences, some labeled subject-specific data are needed to calibrate the classifier for each new subject. This paper proposes an online weighted adaptation regularization (OwAR) algorithm to reduce the online calibration effort, and hence to increase the utility of the BCI system. We show that given the same number of labeled subject-specific training samples, OwAR can significantly improve the online calibration performance. In other words, given a desired classification accuracy, OwAR can significantly reduce the number of labeled subject-specific training samples. Furthermore, we also show that the computational cost of OwAR can be reduced by more than 50% by source domain selection, without a statistically significant sacrifice of classification performance.
机译:基于快速的串行视觉演示脑电器界面(BCI)系统依赖于事件相关电位的单试性分类。由于个体差异大,需要一些标记的主题特定数据来校准每个新主题的分类器。本文提出了一种在线加权适应正规化(OWAR)算法,以减少在线校准工作,从而增加BCI系统的效用。我们表明,鉴于相同数量的标记为主题培训样本,欧诺尔可以显着提高在线校准性能。换句话说,给出所需的分类准确性,欧诺尔可以显着减少标记的主题特定培训样本的数量。此外,我们还表明,欧诺尔的计算成本可以通过源域选择减少超过50%,而无统计上显着的分类性能。

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