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Combined feature extraction method for classification of EEG signals

机译:脑电图分类的组合特征提取方法

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摘要

Classification of electroencephalogram (EEG) signals is an important task in brain-computer interfaces applications. This paper combines autoregressive (AR) model and sample entropy and presents a combination strategy of feature extraction. Each feature vector obtained from the combination strategy contains two parts: AR coefficients and sample entropy values. In the classification phase, this paper employs support vector machine (SVM) with RBF kernel as the classifier. The proposed method is used in the five mental task experiments. Experimental results show that the SVM classifier performs very well in classifying EEG signals using the combination strategy of feature extraction. It obtains a better accuracy in comparison with AR-based method. The results also indicate that the combination strategy of AR model and sample entropy can effectively improve the classification performance of EEG signals.
机译:脑电图(EEG)信号的分类是大脑计算机接口应用中的重要任务。 本文结合了自回归(AR)模型和样品熵,并提出了特征提取的组合策略。 从组合策略获得的每个特征向量包含两个部分:AR系数和样本熵值。 在分类阶段,本文采用带有RBF内核的支持向量机(SVM)作为分类器。 所提出的方法用于五个心理任务实验中。 实验结果表明,SVM分类器在使用特征提取的组合策略分类EEG信号时非常好。 与基于Ar的方法相比,它获得了更好的准确性。 结果还表明AR模型和样本熵的组合策略可以有效地提高EEG信号的分类性能。

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