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An Improved Refined Composite Multivariate Multiscale Fuzzy Entropy Method for MI-EEG Feature Extraction

机译:用于MI-EEG特征提取的改进的精制复合多元多功能模糊模糊方法

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Feature extraction of motor imagery electroencephalogram (MI-EEG) has shown good application prospects in the field of medical health. Also, multivariate entropy-based feature extraction methods have been gradually applied to analyze complex multichannel biomedical signals, such as EEG and electromyography. Compared with traditional multivariate entropies, refined composite multivariate multiscale fuzzy entropy (RCmvMFE) overcomes the defect of unstable entropy values caused by the scale factor increase and is beneficial towards obtaining richer feature information. However, the coarse-grained process of RCmvMFE is mean filtered, which weakens Gaussian noise and is powerless against random impulse noise interference. This yields poor quality feature information and low accuracy classification. In this paper, RCmvMFE is improved (IRCmvMFE) by using composite filters in the coarse-grained procedure to enhance filter performance. Median filters are employed to remove the impulse noise interference from multichannel MI-EEG signals, and these filtered MI-EEGs are further smoothed by the mean filters. The multiscale IRCmvMFEs are calculated for all channels of composite filtered MI-EEGs, forming a feature vector, and a support vector machine is used for pattern classification. Based on two public datasets with different motor imagery tasks, the recognition results of 10?×?10-fold cross-validation achieved 99.43% and 99.86%, respectively, and the statistical analysis of experimental results was completed, showing the effectiveness of IRCmvMFE, as well. The proposed IRCmvMFE-based feature extraction method is superior compared to entropy-based and traditional methods.
机译:电动机图像脑电图(MI-EEG)的特征提取在医疗健康领域显示了良好的应用前景。此外,基于多变量的基于熵的特征提取方法已经逐渐应用于分析复杂的多通道生物医学信号,例如脑电图和肌电学。与传统的多变量熵相比,精制复合多变量多变频器模糊熵(RCMVMFE)克服了由比例因子增加引起的不稳定熵值的缺陷,并且有利于获得更丰富的特征信息。然而,RCMVMFE的粗粒化过程是平均过滤,这削弱了高斯噪声,无能为力地免于随机脉冲噪声干扰。这产生了差的质量特征信息和低精度分类。在本文中,通过在粗粒化过程中使用复合滤波器来改善(IRCMVMFE),以提高滤波器性能。使用中值滤波器来消除来自多通道MI-EEG信号的脉冲噪声干扰,并且这些滤波的MI-eEgs通过平均过滤器进一步平滑。为组合滤波的MI-EEG的所有通道计算多尺度IRCMVMFE,形成特征向量,并且支持向量机用于图案分类。基于两个具有不同电机图像任务的公共数据集,识别结果10?×10倍的交叉验证,分别达到99.43%和99.86%,并完成了实验结果的统计分析,显示了IRCMVMFE的有效性,也是。与基于熵和传统方法相比,所提出的基于IRCMVMFE的特征提取方法优越。

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