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An Adaptive Feature Extraction Method for Motor-Imagery BCI Systems

机译:汽车图像BCI系统的自适应特征提取方法

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Recently, the research on Brain-Computer Interface (BCI) technology has achieved great progress, and the BCI system based on Motor Imagery (MI) has been intensively studied in many labs. The essential part of signal processing in BCI is how to extract the MI features in electroencephalographic (EEG) and recognize the MI task accurately. One challenge lies in that EEG signals are non-stationary, whose features vary with time. The traditional methods often donȁ9;t perform well in BCI, because it does not capture the change of EEG automatically. In this paper, an improved adaptive common spatial patterns (ACSP) method is proposed to adapt to the change of EEG. We test our method for adaptive feature extraction with data from BCI motor imagery experiment, and the efficacy is evaluated by the feature classification accuracy with a support vector machine (SVM) classifier. The results show the effectiveness of the improved adaptive algorithm.
机译:近年来,脑机接口技术的研究取得了长足的发展,许多实验室都对基于运动图像的脑电接口系统进行了深入的研究。 BCI中信号处理的关键部分是如何提取脑电图(EEG)中的MI特征并准确识别MI任务。一个挑战在于,EEG信号不稳定,其特征会随时间变化。传统方法在BCI中通常表现不佳,因为它不能自动捕获EEG的变化。本文提出了一种改进的自适应通用空间模式(ACSP)方法来适应脑电图的变化。我们使用来自BCI运动图像实验的数据测试了用于自适应特征提取的方法,并使用支持向量机(SVM)分类器通过特征分类的准确性来评估效果。结果表明了改进的自适应算法的有效性。

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