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Feature extraction and selection methods for motor imagery EEG signals: A review

机译:运动图像脑电信号特征提取与选择方法综述

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Extraction and selection of electroencephalography (EEG) features is a pivotal task. The brain-computer interface (BCI) for motor imagery (MI) task is analysed with respect to the classification accuracies in following described papers. The paper gives a brief discussion on various feature extraction and selection techniques that has been studied for different motor imagery functions. The comparison table is made with respect to the features extraction methods, selection methods, EEG data used for analysis, number of electrodes for data acquisition, computation time and method implemented. Different techniques such as JayaNFCSSCGLH, LPSVD, sparse weighted CSP, IMF, CBN, SBCSP are discussed. Flowcharts for every method is discussed. The techniques determines the defining characteristic in the procedure that helps in producing better signal for analysing and differentiating brain signal at it utmost probability. Lastly the discussion is made as to which technique outperformed when motor imagery task is taken into consideration for the (BCI) brain-computer interfacing mechanism. To clarify better the classification accuracies of studied methods are compared.
机译:脑电图(EEG)功能的提取和选择是一项关键任务。在以下描述的论文中,针对分类精度分析了用于运动图像(MI)任务的脑机接口(BCI)。本文简要讨论了已针对不同的运动图像功能进行研究的各种特征提取和选择技术。对照表是针对特征提取方法,选择方法,用于分析的EEG数据,用于数据采集的电极数量,计算时间和实施的方法而制成的。讨论了不同的技术,例如JayaNFCSSCGLH,LPSVD,稀疏加权CSP,IMF,CBN,SBCSP。讨论了每种方法的流程图。该技术确定了程序中的定义特征,该特征有助于最大程度地产生更好的信号用于分析和区分脑信号。最后,讨论了在(BCI)脑机接口机制中考虑运动图像任务时哪种技术胜过技术。为了更好地阐明研究方法的分类准确性,对它们进行了比较。

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