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Recognition and Feature Extraction of Motor Imagery EEG Signals Based on Complementary Ensemble Empirical Mode Decomposition

机译:基于互补集合经验模态分解的运动图像脑电信号识别与特征提取

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In view of the characteristics of high nonlinearity and fractional stationarity of motor imagery EEG signals, an improved Complementary Ensemble Empirical Mode Decomposition (CEEMD) method is proposed in this paper. The method does not need to select the basis function in advance and has the characteristics of high self-adaptability. In this paper, Hilbert transform, mutual information, sensitive factor and approximate entropy are used to obtain the time-frequency characteristics, recognition accuracy and other parameters of motor imagery EEG signals in time-frequency domain, and compared with other methods. Using mutual information and sensitive factors, the IMF component with useful information of the original signals can be effectively identified by CEEMD decomposition, and the selected IMF component can be reconstructed and identified by common space model and approximate entropy. The results show that the recognition rate of EEG signal by using the combination of approximate entropy and time-frequency feature is better than that by using time-frequency feature vector alone. Compared with other algorithms, the proposed algorithm has the highest classification accuracy of 84.1%, among 80.9% for ANN algorithm, 79.6% for WT algorithm and 75.8% for EMD-HT algorithm. It indicates that the method in this paper can distinguish the motor imagery tasks, and proves its effectiveness and superiority in the extraction and classification of motor EEG signals.
机译:针对运动图像脑电信号的高非线性和分数平稳性的特点,提出了一种改进的互补集合经验模态分解(CEEMD)方法。该方法不需要预先选择基函数,具有自适应性高的特点。本文利用希尔伯特变换,互信息,敏感因子和近似熵来获取时频域中运动图像脑电信号的时频特性,识别精度和其他参数,并与其他方法进行比较。利用共同信息和敏感因素,可以通过CEEMD分解有效地识别具有原始信号有用信息的IMF分量,并可以通过公共空间模型和近似熵来重构和识别所选的IMF分量。结果表明,结合近似熵和时频特征对脑电信号的识别率要优于仅采用时频特征向量对脑电信号的识别率。与其他算法相比,该算法分类精度最高,为ANN算法为80.9%,WT算法为79.6%,EMD-HT算法为75.8%。这表明本文方法可以区分运动图像任务,证明了该方法在运动脑电信号的提取和分类中的有效性和优越性。

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