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首页> 外文期刊>Turkish Journal of Electrical Engineering and Computer Sciences >Common spatial pattern-based feature extraction from the best time segment of BCI data
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Common spatial pattern-based feature extraction from the best time segment of BCI data

机译:从BCI数据的最佳时间段提取基于公共空间模式的特征

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Feature extraction is one of the most crucial stages in the field of brain computer interface (BCI). Because of its ability to directly influence the performance of BCI systems, recent studies have generally investigated how to modify existing methods or develop novel techniques. One of the most successful and well-known methods in BCI applications is the common spatial pattern (CSP). In existing CSP-based methods, the spatial filters were extracted either by using the whole data trial or by dividing the trials into a number of overlappingonoverlapping time segments. In this paper, we developed a CSP-based moving window technique to obtain the most distinguishable CSP features and increase the classifier performance by finding the best time segment of electroencephalogram trials. The extracted features were tested by using support vector machines (SVMs). The performance of the classifier was measured in terms of classification accuracy and kappa coefficient ($kappa )$. The proposed method was successfully applied to the two-dimensional cursor movement imagery data sets, which were acquired from three healthy human subjects in two sessions on different days. The experiments proved that instead of using the whole data length of EEG trials, extracting CSP features from the best time segment provides higher classification accuracy and $kappa $ rates.
机译:特征提取是脑计算机接口(BCI)领域中最关键的阶段之一。由于它具有直接影响BCI系统性能的能力,因此最近的研究通常研究了如何修改现有方法或开发新技术。 BCI应用程序中最成功和最著名的方法之一是通用空间模式(CSP)。在现有的基于CSP的方法中,通过使用整个数据试验或将试验分为多个重叠/不重叠的时间段来提取空间滤波器。在本文中,我们开发了一种基于CSP的移动窗口技术,以通过找到脑电图试验的最佳时间段来获得最明显的CSP功能并提高分类器的性能。通过使用支持向量机(SVM)测试提取的特征。分类器的性能是根据分类精度和kappa系数($ kappa)$来衡量的。该方法成功地应用于二维光标运动图像数据集,该数据集是在不同日期的两次会议中从三个健康的人类受试者获得的。实验证明,从最佳时间段中提取CSP特征可以代替使用EEG试验的整个数据长度,从而提供更高的分类准确性和$ kappa $率。

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