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A New Classification Method Based on KF-SVM in Brain Computer Interfaces

机译:基于KF-SVM的脑计算机接口分类新方法

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This paper proposes a novel classification method named KF-SVM (Kernel Fisher, Support Vector Machine), which is used for the EEG (Electroencephalography) classification of two classes of imagery data in BCIs (brain-computer interfaces). This method combines the kernel fisher and SVM. Its detailed process is as follows: First, the CSP (Common Spatial Patterns) is used to obtain features, and then the within-class scatter is calculated based on these features. The scatter is added into the RBF (Radical Basis Function) kernel function to construct a new kernel function. The obtained new kernel is integrated into the support vector machine to get a new classification model. The KF-SVM may overcome the following defects of the SVM: 1) the SVM maximizes the classification margin without considering within-class scatter. 2) The classification surface of the SVM between two types of EEG data only depends on boundary samples and misclassified samples. To evaluate effectiveness of the proposed KF-SVM method, the data from the 2008 international BCI competition and experiments of our laboratory are processed. The experimental result shows that the proposed KF-SVM classification algorithm can well classify EEG data and improve the correct rate of EEG recognition in BCIs.
机译:本文提出了一种新的分类方法,称为KF-SVM(Kernel Fisher,支持向量机),用于BCI(脑机接口)中两类图像数据的EEG(脑电图)分类。该方法结合了内核fisher和SVM。其详细过程如下:首先,使用CSP(公共空间模式)获取特征,然后基于这些特征计算类内散布。散点图已添加到RBF(径向基函数)内核函数中,以构造新的内核函数。将获得的新内核集成到支持向量机中,以获得新的分类模型。 KF-SVM可以克服SVM的以下缺陷:1)SVM在不考虑类内分散的情况下最大化分类余量。 2)两种EEG数据之间的SVM分类表面仅取决于边界样本和分类错误的样本。为了评估所提出的KF-SVM方法的有效性,处理了来自2008年国际BCI竞赛和我们实验室的实验的数据。实验结果表明,提出的KF-SVM分类算法可以很好地对脑电数据进行分类,提高BCI中脑电识别的正确率。

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