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首页> 外文期刊>Computational intelligence and neuroscience >Motor Imagery Classification Using Mu and Beta Rhythms of EEG with Strong Uncorrelating Transform Based Complex Common Spatial Patterns
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Motor Imagery Classification Using Mu and Beta Rhythms of EEG with Strong Uncorrelating Transform Based Complex Common Spatial Patterns

机译:电机图像分类使用脑电图的MU和Beta节奏,具有强大的不相关变换基于复杂的复杂空间模式

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Recent studies have demonstrated the disassociation between the mu and beta rhythms of electroencephalogram (EEG) during motor imagery tasks. The proposed algorithm in this paper uses a fully data-driven multivariate empirical mode decomposition (MEMD) in order to obtain the mu and beta rhythms from the nonlinear EEG signals. Then, the strong uncorrelating transform complex common spatial patterns (SUTCCSP) algorithm is applied to the rhythms so that the complex data, constructed with the mu and beta rhythms, becomes uncorrelated and its pseudocovariance provides supplementary power difference information between the two rhythms. The extracted features using SUTCCSP that maximize the interclass variances are classified using various classification algorithms for the separation of the left- and right-hand motor imagery EEG acquired from the Physionet database. This paper shows that the supplementary information of the power difference between mu and beta rhythms obtained using SUTCCSP provides an important feature for the classification of the left- and right-hand motor imagery tasks. In addition, MEMD is proved to be a preferred preprocessing method for the nonlinear and nonstationary EEG signals compared to the conventional IIR filtering. Finally, the random forest classifier yielded a high performance for the classification of the motor imagery tasks.
机译:最近的研究已经证明了在电动机图像任务期间磁性脑膜图(EEG)的MU和β节奏之间的解剖。本文中所提出的算法使用完全数据驱动的多变量经验模式分解(MEMD),以便从非线性EEG信号获得MU和β节奏。然后,将强不相关的变换复杂的公共空间模式(SUTCCSCP)算法应用于节奏,使得与MU和BETA节奏构成的复杂数据变得不相关,并且其伪变性在两个节奏之间提供补充功率差信息。使用SUTCCSP的提取特征可以使用各种分类算法进行分类,用于分离从物理体数据库获取的左手和右手电机图像eeg的各种分类算法。本文表明,使用SUTCCSP获得的MU和β节奏之间的功率差的补充信息为左手和右手电动机图像任务的分类提供了重要特征。另外,与常规IIR滤波相比,被证明是用于非线性和非间断EEG信号的优选预处理方法。最后,随机森林分类器对电动机图像任务的分类产生了高性能。

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