Electroencephalogram (EEG) is an effective indicator for the detection of driver fatigue. Due to the significant differences in EEG signals across subjects, and difficulty in collecting sufficient EEG samples for analysis during driving, detecting fatigue across subjects through using EEG signals remains a challenge. EasyTL is a kind of transfer-learning model, which has demonstrated better performance in the field of image recognition, but not yet been applied in cross-subject EEG-based applications. In this paper, we propose an improved EasyTL-based classifier, the InstanceEasyTL, to perform EEG-based analysis for cross-subject fatigue mental-state detection. Experimental results show that InstanceEasyTL not only requires less EEG data, but also obtains better performance in accuracy and robustness than EasyTL, as well as existing machine-learning models such as Support Vector Machine (SVM), Transfer Component Analysis (TCA), Geodesic Flow Kernel (GFK), and Domain-adversarial Neural Networks (DANN), etc.

Instanceeasytl: an improved transfer-learning method for EEG-based cross-subject fatigue detection / Zeng, H.; Zhang, J.; Zakaria, W.; Babiloni, F.; Borghini, G.; Li, X.; Kong, W.. - In: SENSORS. - ISSN 1424-8220. - 20:24(2020). [10.3390/s20247251]

Instanceeasytl: an improved transfer-learning method for EEG-based cross-subject fatigue detection

Babiloni F.
;
Borghini G.;
2020

Abstract

Electroencephalogram (EEG) is an effective indicator for the detection of driver fatigue. Due to the significant differences in EEG signals across subjects, and difficulty in collecting sufficient EEG samples for analysis during driving, detecting fatigue across subjects through using EEG signals remains a challenge. EasyTL is a kind of transfer-learning model, which has demonstrated better performance in the field of image recognition, but not yet been applied in cross-subject EEG-based applications. In this paper, we propose an improved EasyTL-based classifier, the InstanceEasyTL, to perform EEG-based analysis for cross-subject fatigue mental-state detection. Experimental results show that InstanceEasyTL not only requires less EEG data, but also obtains better performance in accuracy and robustness than EasyTL, as well as existing machine-learning models such as Support Vector Machine (SVM), Transfer Component Analysis (TCA), Geodesic Flow Kernel (GFK), and Domain-adversarial Neural Networks (DANN), etc.
2020
cross-subject; electroencephalogram (EEG); fatigue driving; InstanceEasyTL; transfer learning
01 Pubblicazione su rivista::01a Articolo in rivista
Instanceeasytl: an improved transfer-learning method for EEG-based cross-subject fatigue detection / Zeng, H.; Zhang, J.; Zakaria, W.; Babiloni, F.; Borghini, G.; Li, X.; Kong, W.. - In: SENSORS. - ISSN 1424-8220. - 20:24(2020). [10.3390/s20247251]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1470395
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