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An Unweighted Exhaustive Diagonalization Based Multi-Class Common Spatial Pattern Algorithm in Brain-Computer Interfaces

机译:基于脑接口中的基于多级常见空间模式算法的基于多级常见空间模式算法

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In binary brain-computer interfaces (BCI) based on motor imagery,common spatial pattern (CSP) successfully discriminates two-class EEG data.However,low information transfer rate is an intrinsic drawback of binary BCIs that limits their practical applications. It's essential to extend binary CSP algorithm to multi-class paradigms. In this paper,a new approximate joint diagonalization (AJD) method, named unweighted exhaustive diagonalization with Gauss iterations (UEDGI) is proposed for the extension.The UEDGI based multi-class CSP algorithm is applied to five data sets recorded during motor imagery of left hand,right hand,foot or tongue.The performance of the algorithm is accessed by classification accuracy and convergence speed,and compared with other two multi-class CSP algorithms, one versus one(OVO) and one versus the rest(OVR).Experimental results show that the UEDGI based multi-class CSP performs best in both classification rate and running speed.
机译:在基于电动机图像的二进制脑电电脑接口(BCI)中,常见的空间模式(CSP)成功辨别了两级EEG数据。然而,低信息传输速率是二进制BCI的内在缺点,限制了其实际应用。将二进制CSP算法扩展到多级范式至关重要。本文提出了一种新的近似关节角度化(AJD)方法,命名为具有高斯迭代(UEDGI)的未加权详尽对角化(UEDGI)。基于UEDGI的多级CSP算法应用于左侧电机图像中记录的五个数据集手,右手,脚或舌头。通过分类精度和收敛速度进行算法的性能,并与其他两个多级CSP算法进行比较,一个与一个(OVO)和一个与其余的(OVR)相比。实验结果表明,基于UEDGI的多级CSP在分类率和运行速度中表现最佳。

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