Accurate detection of driving fatigue is helpful in significantly reducing the rate of road traffic accidents. Electroencephalogram (EEG) based methods are proven to be efficient to evaluate mental fatigue. Due to its high non-linearity, as well as significant individual differences, how to perform EEG fatigue mental state evaluation across different subjects still keeps challenging. In this study, we propose a Label-based Alignment Multi-Source Domain Adaptation (LA-MSDA) for cross-subject EEG fatigue mental state evaluation. Specifically, LA-MSDA considers the local feature distributions of relevant labels between different domains, which efficiently eliminates the negative impact of significant individual differences by aligning label-based feature distributions. In addition, the strategy of global optimization is introduced to address the classifier confusion decision boundary issues and improve the generalization ability of LA-MSDA. Experimental results show LA-MSDA can achieve remarkable results on EEG-based fatigue mental state evaluation across subjects, which is expected to have wide application prospects in practical brain-computer interaction (BCI), such as online monitoring of driver fatigue, or assisting in the development of on-board safety systems.

Label-Based Alignment Multi-Source Domain Adaptation for Cross-Subject EEG Fatigue Mental State Evaluation / Zhao, Y.; Dai, G.; Borghini, G.; Zhang, J.; Li, X.; Zhang, Z.; Arico', Pietro.; Di Flumeri, G.; Babiloni, F.; Zeng, H.. - 15:(2021). [10.3389/fnhum.2021.706270]

Label-Based Alignment Multi-Source Domain Adaptation for Cross-Subject EEG Fatigue Mental State Evaluation

Dai G.;Borghini G.;Arico' Pietro.;Di Flumeri G.;Babiloni F.;Zeng H.
2021

Abstract

Accurate detection of driving fatigue is helpful in significantly reducing the rate of road traffic accidents. Electroencephalogram (EEG) based methods are proven to be efficient to evaluate mental fatigue. Due to its high non-linearity, as well as significant individual differences, how to perform EEG fatigue mental state evaluation across different subjects still keeps challenging. In this study, we propose a Label-based Alignment Multi-Source Domain Adaptation (LA-MSDA) for cross-subject EEG fatigue mental state evaluation. Specifically, LA-MSDA considers the local feature distributions of relevant labels between different domains, which efficiently eliminates the negative impact of significant individual differences by aligning label-based feature distributions. In addition, the strategy of global optimization is introduced to address the classifier confusion decision boundary issues and improve the generalization ability of LA-MSDA. Experimental results show LA-MSDA can achieve remarkable results on EEG-based fatigue mental state evaluation across subjects, which is expected to have wide application prospects in practical brain-computer interaction (BCI), such as online monitoring of driver fatigue, or assisting in the development of on-board safety systems.
2021
cross-subject; electroencephalogram; fatigue mental state; individual differences; label-based alignment; multi-source domain adaptation
01 Pubblicazione su rivista::01a Articolo in rivista
Label-Based Alignment Multi-Source Domain Adaptation for Cross-Subject EEG Fatigue Mental State Evaluation / Zhao, Y.; Dai, G.; Borghini, G.; Zhang, J.; Li, X.; Zhang, Z.; Arico', Pietro.; Di Flumeri, G.; Babiloni, F.; Zeng, H.. - 15:(2021). [10.3389/fnhum.2021.706270]
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Note: DOI: 10.3389/fnhum.2021.706270
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1682224
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