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Three — Channel electro-encephalogram (EEG) signal analysis by independent component analysis and classification by linear discriminant analysis

机译:通过独立成分分析进行三通道脑电图(EEG)信号分析,并通过线性判别分析进行分类

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摘要

Electro-encephalogram (EEG) based brain-computer interface (BCI) has aim to associate neurological phenomenon (It is the source of control for any BCI system) with target action (Intentional state). The association with target is highly dependent on signal processing methodology as well as selected features from brain signals. This paper proposes a novel pre-processing method for EEG based BCI system, which includes second order statistics (SOS) based on single time lagged covariance matrix of brain signals. AMUSE algorithm is a part of blind source separation (BSS) algorithm, which includes SOS based on single time lagged covariance matrix. To evaluate the effectiveness of this preprocessing method (AMUSE Filtering) linear discriminant classifier (LDC) is adopted to classify the Graze BCI data set which was used in BCI competitions 2003. The selected feature for classification is power spectral density (PSD) in frequency band 8–30Hz. The performance of a proposed method has been evaluated in the terms of classical evaluation criteria classification accuracy (ACC), error rate (ERR) and modern evaluation criteria mutual Information (MI) and Cohen's Kappa coefficient (k).
机译:基于脑电图(EEG)的脑机接口(BCI)旨在使神经系统现象(它是任何BCI系统的控制源)与目标动作(故意状态)相关联。与目标的关联高度依赖于信号处理方法以及从脑信号中选择的特征。本文提出了一种基于脑电信号的脑电信号预处理系统,该方法包括基于单次时滞脑信号协方差矩阵的二阶统计量。 AMUSE算法是盲源分离(BSS)算法的一部分,该算法包括基于单时滞后协方差矩阵的SOS。为了评估这种预处理方法(AMUSE过滤)的有效性,采用线性判别分类器(LDC)对在BCI竞赛2003中使用的Graze BCI数据集进行分类。分类的所选特征是频带中的功率谱密度(PSD) 8–30Hz。已根据经典评估标准分类精度(ACC),错误率(ERR)和现代评估标准互信息(MI)和Cohen的Kappa系数(k)评估了所提出方法的性能。

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