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Improving SSVEP-BCI performance using pre-trial normalization methods

机译:使用审前归一化方法改善SSVEP-BCI性能

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A brain-computer interface (BCI) enables users to communicate through a computer using only their brain signals, by extracting brain signal features containing information representative of the user's intent, and can be used in a wide variety of areas such as entertainment, rehabilitation, or assistive technologies. In this paper, two novel normalization methods are assessed with the aim of improving the quality of the extracted features: Baseline-Corrected canonical correlation analysis (BC-CCA), and Scaled CCA. Both methods are found to be able to improve classification accuracy in conditions using frequencies with a large range, whilst BC-CCA is the superior of the two, improving SSVEP detection accuracy by as much as 9.22%.
机译:脑机接口(BCI)通过提取包含代表用户意图信息的脑信号特征,使用户仅使用他们的脑信号就可以通过计算机进行通信,并且可以用于娱乐,康复,或辅助技术。在本文中,评估了两种新颖的归一化方法,目的是提高提取特征的质量:基线校正的规范相关分析(BC-CCA)和Scaled CCA。发现这两种方法都可以在使用大范围频率的条件下提高分类精度,而BC-CCA是这两种方法中的优势,可以将SSVEP检测精度提高多达9.22%。

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