Driving Fatigue Classification Based on Fusion Entropy Analysis Combining EOG and EEG
The rising number of traffic accidents has become a major issue in our daily life, which has attracted the concern of society and governments. To deal with this issue, in our previous study, we have designed a real-time driving fatigue detection system using power spectrum density and sample entropy...
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doaj-29c973bb98384950acb4b944cc3db9d82021-03-29T22:42:35ZengIEEEIEEE Access2169-35362019-01-017619756198610.1109/ACCESS.2019.29155338709788Driving Fatigue Classification Based on Fusion Entropy Analysis Combining EOG and EEGHongtao Wang0https://orcid.org/0000-0002-6564-5753Cong Wu1Ting Li2Yuebang He3Peng Chen4Anastasios Bezerianos5Faculty of Intelligent Manufacturing, Wuyi University, Jiangmen, ChinaFaculty of Intelligent Manufacturing, Wuyi University, Jiangmen, ChinaFaculty of Intelligent Manufacturing, Wuyi University, Jiangmen, ChinaFaculty of Intelligent Manufacturing, Wuyi University, Jiangmen, ChinaFaculty of Intelligent Manufacturing, Wuyi University, Jiangmen, ChinaCentre for Life Sciences, Singapore Institute for Neurotechnology, National University of Singapore, SingaporeThe rising number of traffic accidents has become a major issue in our daily life, which has attracted the concern of society and governments. To deal with this issue, in our previous study, we have designed a real-time driving fatigue detection system using power spectrum density and sample entropy. By using the wireless technology and dry electrodes for EEG collection, we further integrated virtual reality simulated driving environment, which made our study more applicable to realistic settings. However, the high accuracy of classification for driving fatigue has not been obtained. To measure the time series complexity of the EEG signal, we proposed a fusion entropy (sample entropy, approximate entropy, and spectral entropy) analysis method of EEG and EOG. First, a sample entropy was applied for feature extraction from the horizontal and vertical EOG. Second, an approximate entropy, sample entropy, and spectral entropy features of each sub-band of EEG are extracted. Third, feature fusion for sub-band is performed by canonical correlation analysis (CCA). Finally, the features of EOG and EEG are classified using a relevant vector machine (RVM). Twenty-two subjects participated in the driving fatigue experiments for a duration of 90 min. The results demonstrated that the fusion entropy analysis combining EOG and EEG could provide an alternative method for driving fatigue detection, and the average accuracy rate was up to 99.1 ± 1.2%. The authors further analyzed the effect of feature fusion in four sub-bands (δ, α, β and θ) and compared with every single sub-band on classification performance, it is proved that the former is superior to the latter presenting the proposed method can provide effective indicators for driving fatigue detection.https://ieeexplore.ieee.org/document/8709788/Driving fatigueelectroencephalogram (EEG)electrooculogram (EOG)sample entropyapproximate entropyspectral entropy |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Hongtao Wang Cong Wu Ting Li Yuebang He Peng Chen Anastasios Bezerianos |
spellingShingle |
Hongtao Wang Cong Wu Ting Li Yuebang He Peng Chen Anastasios Bezerianos Driving Fatigue Classification Based on Fusion Entropy Analysis Combining EOG and EEG IEEE Access Driving fatigue electroencephalogram (EEG) electrooculogram (EOG) sample entropy approximate entropy spectral entropy |
author_facet |
Hongtao Wang Cong Wu Ting Li Yuebang He Peng Chen Anastasios Bezerianos |
author_sort |
Hongtao Wang |
title |
Driving Fatigue Classification Based on Fusion Entropy Analysis Combining EOG and EEG |
title_short |
Driving Fatigue Classification Based on Fusion Entropy Analysis Combining EOG and EEG |
title_full |
Driving Fatigue Classification Based on Fusion Entropy Analysis Combining EOG and EEG |
title_fullStr |
Driving Fatigue Classification Based on Fusion Entropy Analysis Combining EOG and EEG |
title_full_unstemmed |
Driving Fatigue Classification Based on Fusion Entropy Analysis Combining EOG and EEG |
title_sort |
driving fatigue classification based on fusion entropy analysis combining eog and eeg |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2019-01-01 |
description |
The rising number of traffic accidents has become a major issue in our daily life, which has attracted the concern of society and governments. To deal with this issue, in our previous study, we have designed a real-time driving fatigue detection system using power spectrum density and sample entropy. By using the wireless technology and dry electrodes for EEG collection, we further integrated virtual reality simulated driving environment, which made our study more applicable to realistic settings. However, the high accuracy of classification for driving fatigue has not been obtained. To measure the time series complexity of the EEG signal, we proposed a fusion entropy (sample entropy, approximate entropy, and spectral entropy) analysis method of EEG and EOG. First, a sample entropy was applied for feature extraction from the horizontal and vertical EOG. Second, an approximate entropy, sample entropy, and spectral entropy features of each sub-band of EEG are extracted. Third, feature fusion for sub-band is performed by canonical correlation analysis (CCA). Finally, the features of EOG and EEG are classified using a relevant vector machine (RVM). Twenty-two subjects participated in the driving fatigue experiments for a duration of 90 min. The results demonstrated that the fusion entropy analysis combining EOG and EEG could provide an alternative method for driving fatigue detection, and the average accuracy rate was up to 99.1 ± 1.2%. The authors further analyzed the effect of feature fusion in four sub-bands (δ, α, β and θ) and compared with every single sub-band on classification performance, it is proved that the former is superior to the latter presenting the proposed method can provide effective indicators for driving fatigue detection. |
topic |
Driving fatigue electroencephalogram (EEG) electrooculogram (EOG) sample entropy approximate entropy spectral entropy |
url |
https://ieeexplore.ieee.org/document/8709788/ |
work_keys_str_mv |
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