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EEG data classification through signal spatial redistribution and optimized linear discriminants.

机译:通过信号空间重新分布和优化的线性判别器进行脑电数据分类。

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摘要

This paper presents a preprocessing technique for improving the classification of electroencephalographic (EEG) data in brain-computer interfaces (BCI) for the case of realistic measuring conditions, such as low signal-to-noise ratio (SNR), reduced number of measuring electrodes, and reduced amount of data used to train the classifier. The proposed method is based on a linear minimum mean squared error (LMMSE) spatial filter specifically designed to improve the SNR of the signals before being classified. The design parameters of the spatial filter are obtained through an optimized version of Fisher's linear discriminant (FLD) whose area under the receiver operating characteristics (ROC) curve is maximized. The combination of the spatial filter and the optimized FLD increases the SNR and changes the spatial distribution of the measured signals. As a result, the signals can be more easily discriminated by means of a simple sign detector or threshold-based classifier. A series of experiments on simulated EEG data compare the performance of the proposed classification scheme to the performance of the Mahalanobis distance-based classifier, which is widely used in BCI systems. Numerical results show that the proposed preprocessing technique enhances the classifier's performance even for low SNR conditions and few measurements, while the Mahalanobis classifier is not reliable under such realistic operating conditions. Furthermore, real EEG data from a self-paced key typing experiment is used to demonstrate the applicability of the preprocessing technique. The proposed method has the potential of improving the efficiency of real-life BCI systems, as well as reducing the computational complexity associated with their implementation.
机译:本文提出了一种预处理技术,用于在现实的测量条件(例如低信噪比(SNR),减少的测量电极数量)的情况下改善脑机接口(BCI)中的脑电图(EEG)数据的分类,并减少了用于训练分类器的数据量。所提出的方法基于线性最小均方误差(LMMSE)空间滤波器,该空间滤波器专门设计用于在分类之前提高信号的SNR。空间滤波器的设计参数是通过Fisher线性判别式(FLD)的优化版本获得的,该滤波器的接收器工作特性(ROC)曲线下的面积最大。空间滤波器和优化的FLD的组合可提高SNR,并改变被测信号的空间分布。结果,可以通过简单的符号检测器或基于阈值的分类器更容易​​地区分信号。在模拟的EEG数据上进行的一系列实验将建议的分类方案的性能与广泛用于BCI系统的基于Mahalanobis距离的分类器的性能进行了比较。数值结果表明,即使在低SNR条件和少量测量的情况下,所提出的预处理技术也能提高分类器的性能,而Mahalanobis分类器在这种现实的工作条件下并不可靠。此外,来自自定进度的键键入实验的真实EEG数据被用来证明预处理技术的适用性。所提出的方法具有提高现实生活中的BCI系统的效率,并降低与实现相关的计算复杂性的潜力。

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