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Multiclass Posterior Probability Twin SVM for Motor Imagery EEG Classification

机译:运动图像脑电分类的多类后验概率双SVM

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摘要

Motor imagery electroencephalography is widely used in the brain-computer interface systems. Due to inherent characteristics of electroencephalography signals, accurate and real-time multiclass classification is always challenging. In order to solve this problem, a multiclass posterior probability solution for twin SVM is proposed by the ranking continuous output and pairwise coupling in this paper. First, two-class posterior probability model is constructed to approximate the posterior probability by the ranking continuous output techniques and Platt's estimating method. Secondly, a solution of multiclass probabilistic outputs for twin SVM is provided by combining every pair of class probabilities according to the method of pairwise coupling. Finally, the proposed method is compared with multiclass SVM and twin SVM via voting, and multiclass posterior probability SVM using different coupling approaches. The efficacy on the classification accuracy and time complexity of the proposed method has been demonstrated by both the UCI benchmark datasets and real world EEG data from BCI Competition IV Dataset 2a, respectively.
机译:运动图像脑电图在脑机接口系统中被广泛使用。由于脑电图信号的固有特性,准确,实时的多类分类始终具有挑战性。为了解决这个问题,本文通过对连续输出进行排序和成对耦合,提出了双SVM的多类后验概率解。首先,通过排序连续输出技术和普拉特估计方法,建立了两类后验概率模型来近似后验概率。其次,根据成对耦合的方法,通过组合每一对类概率,提供了双SVM的多类概率输出解决方案。最后,将该方法通过投票与多类支持向量机和孪生支持向量机进行了比较,并采用不同的耦合方法将其与后类概率支持向量机进行了比较。 UCI基准数据集和来自BCI Competition IV数据集2a的真实脑电数据分别证明了该方法对分类准确性和时间复杂度的有效性。

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