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Correlation-based common spatial pattern (CCSP): A novel extension of CSP for classification of motor imagery signal

机译:基于相关的常见空间模式(CCSP):用于电动机图像信号分类的CSP的新颖延伸

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Common spatial pattern (CSP) is shown to be an effective pre-processing algorithm in order to discriminate different classes of motor-based EEG signals by obtaining suitable spatial filters. The performance of these filters can be improved by regularized CSP, in which available prior information is added in terms of regularization terms into the objective function of conventional CSP. Variety of prior information can be used in this way. In this paper, we used time correlation between different classes of EEG signal as the prior information, which is clarified similarity between different classes of signal for regularizing CSP. Furthermore, the proposed objective function can be easily extended to more than two-class problems. We used three different standard datasets to evaluate the performance of the proposed method. Correlation-based CSP (CCSP) outperformed original CSP as well as the existing regularized CSP, Principle Component Cnalysis (PCA) and Fisher Discriminate Analysis (FDA) in both two-class and multi-class scenarios. The simulation results showed that the proposed method outperformed conventional CSP by 6.9% in 2-class and 2.23% in multi-class problem in term of mean classification accuracy.
机译:公共空间模式(CSP)被示出为一种有效的预处理算法,以通过获得合适的空间滤波器来区分不同类别的电机基EEG信号。正则化CSP可以改善这些过滤器的性能,其中可用的先前信息以正规化术语添加到常规CSP的目标函数方面。以这种方式可以使用各种先前信息。在本文中,我们使用了不同类别的EEG信号之间的时间相关性作为先前信息,这在用于正规CSP的不同类别之间澄清了相似性。此外,所提出的目标函数可以很容易地扩展到超过两类问题。我们使用了三个不同的标准数据集来评估所提出的方法的性能。基于相关的CSP(CCSP)优于原始CSP以及现有的正则化CSP,原理组件CNALysis(PCA)和Fisher在两班和多级方案中的鉴别分析(FDA)。仿真结果表明,在平均分类准确度期间,该方法在2级常规CSP中表现出6.9%,在多阶级问题中的2.23%。

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