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Motor imagery EEG signal classification scheme based on autoregressive reflection coefficients

机译:基于自回归反射系数的运动图像脑电信号分类方案

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In brain-computer interface (BCI) applications, classification of electroencephalogram (EEG) data for different motor imagery (MI) tasks is a major concern. In this paper, an efficient MI task classification scheme is proposed based on autoregressive (AR) modeling of the EEG signal. From given EEG recording, after some basic preprocessing operations, the processed EEG data of each channel is windowed into several frames and AR parameters are extracted using least-square Yule-Walker method. Considering the reflection coefficients from the autoregressive modeling, a set of features is extracted from the average of the coefficients of the specified frames. In order to reduce the dimension of the proposed feature matrix, principal component analysis (PCA) is employed. For the purpose of classification, train and test sets are formed based on leave one out cross validation and then linear discriminant analysis (LDA) based classifier is used. Simulation is carried out on publicly available MI dataset IVa of BCI Competition-III and a very satisfactory performance is obtained in classifying the MI data in two classes, namely right hand and right foot MI tasks. Proposed classification scheme not only offers significant reduction in feature dimensionality but also provides satisfactory classification accuracy.
机译:在脑机接口(BCI)应用中,针对不同运动图像(MI)任务的脑电图(EEG)数据分类是一个主要问题。在本文中,基于脑电信号的自回归(AR)建模,提出了一种有效的MI任务分类方案。从给定的EEG记录中,经过一些基本的预处理操作后,将每个通道的处理后的EEG数据加窗到几个帧中,并使用最小二乘Yule-Walker方法提取AR参数。考虑到自回归建模的反射系数,将从指定帧的系数的平均值中提取一组特征。为了减小提出的特征矩阵的维数,采用了主成分分析(PCA)。为了进行分类,基于留一法交叉验证形成训练和测试集,然后使用基于线性判别分析(LDA)的分类器。在BCI Competition-III的公开MI数据集IVa上进行了模拟,将MI数据分为两类,即右手和右脚MI任务,获得了非常令人满意的性能。提出的分类方案不仅显着降低了特征维数,而且还提供了令人满意的分类精度。

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