2020
DOI: 10.1109/access.2020.2969054
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A Motor Imagery EEG Feature Extraction Method Based on Energy Principal Component Analysis and Deep Belief Networks

Abstract: The motor imagery electroencephalography (MI-EEG) reflects the subjective motor intention, which has received increasing attention in rehabilitation. How to extract the features of MI-EEG accurately and quickly is the key to its successful application. Based on the analysis and comparison of the existing feature extraction algorithms, a feature extraction method based on principal component analysis (PCA) and deep belief networks (DBN) is proposed, namely PCA-DBN. Firstly, the second-order moment is used to an… Show more

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Cited by 34 publications
(12 citation statements)
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“…The 6-dimensional feature vectors extracted by multi-scale entropy are input into SVM classifier for training classification, and the optimal classification recognition rate is 85.21%. As can be seen from table 2, the classification accuracy of the feature extraction algorithm in this paper is 0.92%-4.13% higher than that in references SDA [34], EPCA [35] and NVDNN [36]. In this paper, 6-dimensional feature vectors are used.…”
Section: Experiments Analysismentioning
confidence: 93%
“…The 6-dimensional feature vectors extracted by multi-scale entropy are input into SVM classifier for training classification, and the optimal classification recognition rate is 85.21%. As can be seen from table 2, the classification accuracy of the feature extraction algorithm in this paper is 0.92%-4.13% higher than that in references SDA [34], EPCA [35] and NVDNN [36]. In this paper, 6-dimensional feature vectors are used.…”
Section: Experiments Analysismentioning
confidence: 93%
“…(1) When the proposed classification method based on unsupervised multiview clustering results is used to analyze whether deep features are used, the trend of classification performance changes. The general feature extraction methods used here are PCA [ 48 ] and LDA [ 49 ]. (2) In the case of deep features, the performance changes when using single-view classifiers and multiview classifiers.…”
Section: Methodsmentioning
confidence: 99%
“…Most of the comparative values given in the literature are limited to few techniques or only one classification [7]. Wavelet transform (WT) is basically used in the feature extraction process [8], normal spatial patterns (CSP) [9], and Principal Component Analysis (PCA) [10], EMD [11,12] and so on. Since EMD algorithm is able to optimally split the signal, it has been proven to be a suitable candidate for the examination of non-linear and unsteady EEG signals.…”
Section: Introductionmentioning
confidence: 99%