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Towards the Effective Intrinsic Mode Functions for Motor Imagery EEG Signal Classification

机译:朝着电动机图像EEG信号分类的有效内在模式功能

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To better utilize one of the most powerful signal decomposition methods called Empirical Mode Decomposition (EMD) in the field of a brain-computer interface, a better understanding of its components is necessary. In analyzing two-class motor imagery Electroencephalogram, one or more specific intrinsic mode function (IMF) plays a major role in the classification and therefore, utilization of the signal. This research work investigates the most effective IMF for motor imagery EEG signal by PCA based Hilber-Huang transformation. To implement the research work, motor imagery (left and right hand) EEG signals of eight participants are taken into consideration. The signals of central lobes are transformed into three dimensions to one dimension by PCA. These transformed signals are decomposed into 8 IMFs. Significant features are extracted from the signals and classified by ANN and LDA method and tabulated. From the results, we found that IMF4 provides the most significant classification accuracies.
机译:为了更好地利用脑电脑界面领域的经验模式分解(EMD)中最强大的信号分解方法之一,需要更好地了解其组件。在分析两类电动机图像脑电图时,一个或多个特定的内在模式功能(IMF)在分类中起主要作用,因此在分类中发挥了重要作用,因此利用信号。本研究工作通过基于PCA的Hilber-Huang转型来调查最有效的电机图像EEG信号IMF。为了实施研究工作,考虑八个参与者的电机图像(左手和右手)EEG信号。中央叶片的信号被PCA转化为三维到一个维度。这些变换信号被分解为8个IMF。从信号中提取有显着的特征,并由ANN和LDA方法分类并列表。从结果中,我们发现IMF4提供了最显着的分类准确性。

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