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Multi-feature fusion method based on WOSF and MSE for four-class MI EEG identification

机译:基于WOSF和FOSF和MSE的多级MI EEG识别的多特征融合方法

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Background: Brain-Computer Interface (BCI) can bring great convenience to patients in the process of rehabili-tation training and prosthetic control. However, how to extract effective features is a core issue in a BCI system. Methods: We proposes the Multi-Feature Fusion Method based on Wavelength Optimal Spatial Filter and Mul-tiscale Entropy for classifying the electroencephalogram signals (EEG) in four kinds of motor imagery tasks. The method can combine Wavelength features with Multiscale Entropy. Results: Two groups of experiments were conducted. One for simple four types of motor imagery (MI) tasks and another for unilateral limb. Experiments show that our proposed method has better performance compared to other methods. (82.55% versus 73.08% average accuracy respectively). Conclusions: The proposed method can effectively improve the accuracy of EEG classification in multiclass motor imagery and will be useful for neurorehabilitation through motor imagery for hemiplegic patients.
机译:背景:脑电脑界面(BCI)可以为康复培训和假肢控制过程带来极大的患者。 但是,如何提取有效功能是BCI系统中的核心问题。 方法:我们提出了基于波长最佳空间滤波器和MUL-Tiscale熵的多特征融合方法,用于在四种电动机图像任务中对脑电图信号(EEG)进行分类。 该方法可以将波长特征与多尺度熵组合。 结果:进行两组实验。 一个用于简单的四种电机图像(MI)任务,另一个用于单侧肢体。 实验表明,与其他方法相比,我们所提出的方法具有更好的性能。 (分别为82.55%,分别为73.08%)。 结论:该方法可以有效提高多标准电机图像中EEG分类的准确性,对偏瘫患者的电动机图像有用。

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