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Applying evolution strategies to preprocessing EEG signals for brain-computer interfaces

机译:将进化策略应用于脑机接口的脑电信号预处理

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摘要

An appropriate preprocessing of EEG signals is crucial to get high classification accuracy for Brain-Computer Interfaces (BCI). The raw EEG data are continuous signals in the time-domain that can be transformed by means of filters. Among them, spatial filters and selecting the most appropriate frequency-bands in the frequency domain are known to improve classification accuracy. However, because of the high variability among users, the filters must be properly adjusted to every user's data before competitive results can be obtained. In this paper we propose to use the Covariance Matrix Adaptation Evolution Strategy (CMA-ES) for automatically tuning the filters. Spatial and frequency-selection filters are evolved to minimize both classification error and the number of frequency bands used. This evolutionary approach to filter optimization has been tested on data for different users from the BCI-III competition. The evolved filters provide higher accuracy than approaches used in the competition. Results are also consistent across different runs of CMA-ES.
机译:对脑电信号进行适当的预处理对于获得脑机接口(BCI)的高分类精度至关重要。 EEG原始数据是时域中的连续信号,可以通过滤波器进行转换。其中,已知空间滤波器和选择频域中最合适的频带以提高分类精度。但是,由于用户之间的差异很大,因此必须先针对每个用户的数据适当调整过滤器,然后才能获得竞争性结果。在本文中,我们建议使用协方差矩阵适应进化策略(CMA-ES)自动调整滤波器。发展了空间和频率选择滤波器,以最大程度地减少分类误差和所用频段的数量。针对BCI-III竞争对手的不同用户的数据,已经测试了这种进化的滤波器优化方法。与竞赛中使用的方法相比,经过改进的滤波器可提供更高的精度。不同的CMA-ES运行结果也一致。

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