Motor imagery EEG signal classification scheme based on entropy of intrinsic mode function

Md. Toky Foysal Talukdar, S. K. Sakib, C. Shahnaz, S. Fattah
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引用次数: 7

Abstract

In this paper, an efficient scheme is proposed for classification of electroencephalogram (EEG) data in to different motor imagery (MI) tasks based on empirical mode decomposition (EMD). The EEG data recorded from each channel is first decomposed into a set of intrinsic mode functions (IMFs) by using the EMD analysis. In view of extracting discriminative information from the EEG signals corresponding to different MI tasks, we propose to utilize the entropy of band-limited IMF. Instead of considering all IMFs or first few IMFs, in the proposed method only the first IMF is chosen because of its low variance. In order to reduce the dimension of the feature vector consisting of entropy values from all channels, principal component analysis is performed. For the purpose of classification, train and test datasets are formed as per leave one out cross validation scheme and then linear discriminant analysis (LDA) is carried out. Simulation is performed on publicly available MI dataset IVa of BCI Competition-III to classify the MI data in to two classes, namely right hand and right foot MI tasks. It is observed that the proposed classification scheme not only offers significant reduction in feature dimensionality but also provides satisfactory classification accuracy.
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基于内禀模态函数熵的运动意象脑电信号分类方案
本文提出了一种基于经验模式分解(EMD)的脑电图数据分类方法。首先利用EMD分析将各通道记录的EEG数据分解为一组内禀模态函数(IMFs)。为了从不同MI任务对应的脑电信号中提取判别信息,我们提出利用带限IMF的熵。而不是考虑所有的IMF或前几个IMF,在该方法中,只选择第一个IMF,因为它的低方差。为了降低由所有通道的熵值组成的特征向量的维数,进行了主成分分析。为了进行分类,按照留一交叉验证方案形成训练数据集和测试数据集,然后进行线性判别分析(LDA)。在公开的BCI Competition-III的MI数据集IVa上进行仿真,将MI数据分为两类,即右手和右脚MI任务。结果表明,所提出的分类方案不仅显著降低了特征维数,而且具有令人满意的分类精度。
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