An Improved Composite Multiscale Fuzzy Entropy for Feature Extraction of MI-EEG

Motor Imagery Electroencephalography (MI-EEG) has shown good prospects in neurorehabilitation, and the entropy-based nonlinear dynamic methods have been successfully applied to feature extraction of MI-EEG. Especially based on Multiscale Fuzzy Entropy (MFE), the fuzzy entropies of the <i>τ <...

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Main Authors: Mingai Li, Ruotu Wang, Dongqin Xu
Format: Article
Language:English
Published: MDPI AG 2020-11-01
Series:Entropy
Subjects:
Online Access:https://www.mdpi.com/1099-4300/22/12/1356
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spelling doaj-45920eb77c5743179a938fb91b1347902020-12-01T00:03:31ZengMDPI AGEntropy1099-43002020-11-01221356135610.3390/e22121356An Improved Composite Multiscale Fuzzy Entropy for Feature Extraction of MI-EEGMingai Li0Ruotu Wang1Dongqin Xu2Faculty of Information Technology, Beijing University of Technology, Beijing 100124, ChinaFaculty of Information Technology, Beijing University of Technology, Beijing 100124, ChinaFaculty of Information Technology, Beijing University of Technology, Beijing 100124, ChinaMotor Imagery Electroencephalography (MI-EEG) has shown good prospects in neurorehabilitation, and the entropy-based nonlinear dynamic methods have been successfully applied to feature extraction of MI-EEG. Especially based on Multiscale Fuzzy Entropy (MFE), the fuzzy entropies of the <i>τ </i>coarse-grained sequences in <i>τ</i> scale are calculated and averaged to develop the Composite MFE (CMFE) with more feature information. However, the coarse-grained process fails to match the nonstationary characteristic of MI-EEG by a mean filtering algorithm. In this paper, CMFE is improved by assigning the different weight factors to the different sample points in the coarse-grained process, i.e., using the weighted mean filters instead of the original mean filters, which is conductive to signal filtering and feature extraction, and the resulting personalized Weighted CMFE (WCMFE) is more suitable to represent the nonstationary MI-EEG for different subjects. All the WCMFEs of multi-channel MI-EEG are fused in serial to construct the feature vector, which is evaluated by a back-propagation neural network. Based on a public dataset, extensive experiments are conducted, yielding a relatively higher classification accuracy by WCMFE, and the statistical significance is examined by two-sample <i>t</i>-test. The results suggest that WCMFE is superior to the other entropy-based and traditional feature extraction methods.https://www.mdpi.com/1099-4300/22/12/1356weighted composite multiscale fuzzy entropyfeature extractionmotor imagery electroencephalographyweight factors
collection DOAJ
language English
format Article
sources DOAJ
author Mingai Li
Ruotu Wang
Dongqin Xu
spellingShingle Mingai Li
Ruotu Wang
Dongqin Xu
An Improved Composite Multiscale Fuzzy Entropy for Feature Extraction of MI-EEG
Entropy
weighted composite multiscale fuzzy entropy
feature extraction
motor imagery electroencephalography
weight factors
author_facet Mingai Li
Ruotu Wang
Dongqin Xu
author_sort Mingai Li
title An Improved Composite Multiscale Fuzzy Entropy for Feature Extraction of MI-EEG
title_short An Improved Composite Multiscale Fuzzy Entropy for Feature Extraction of MI-EEG
title_full An Improved Composite Multiscale Fuzzy Entropy for Feature Extraction of MI-EEG
title_fullStr An Improved Composite Multiscale Fuzzy Entropy for Feature Extraction of MI-EEG
title_full_unstemmed An Improved Composite Multiscale Fuzzy Entropy for Feature Extraction of MI-EEG
title_sort improved composite multiscale fuzzy entropy for feature extraction of mi-eeg
publisher MDPI AG
series Entropy
issn 1099-4300
publishDate 2020-11-01
description Motor Imagery Electroencephalography (MI-EEG) has shown good prospects in neurorehabilitation, and the entropy-based nonlinear dynamic methods have been successfully applied to feature extraction of MI-EEG. Especially based on Multiscale Fuzzy Entropy (MFE), the fuzzy entropies of the <i>τ </i>coarse-grained sequences in <i>τ</i> scale are calculated and averaged to develop the Composite MFE (CMFE) with more feature information. However, the coarse-grained process fails to match the nonstationary characteristic of MI-EEG by a mean filtering algorithm. In this paper, CMFE is improved by assigning the different weight factors to the different sample points in the coarse-grained process, i.e., using the weighted mean filters instead of the original mean filters, which is conductive to signal filtering and feature extraction, and the resulting personalized Weighted CMFE (WCMFE) is more suitable to represent the nonstationary MI-EEG for different subjects. All the WCMFEs of multi-channel MI-EEG are fused in serial to construct the feature vector, which is evaluated by a back-propagation neural network. Based on a public dataset, extensive experiments are conducted, yielding a relatively higher classification accuracy by WCMFE, and the statistical significance is examined by two-sample <i>t</i>-test. The results suggest that WCMFE is superior to the other entropy-based and traditional feature extraction methods.
topic weighted composite multiscale fuzzy entropy
feature extraction
motor imagery electroencephalography
weight factors
url https://www.mdpi.com/1099-4300/22/12/1356
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