Bidirectional Temporal Dynamics Modeling for EEG-based Driving Fatigue Recognition
Yip Tin Po, Jianming Wang, Yutao Miao, Jiayan Zhang, Yunxu Zhao, Xiaomin Ouyang, Zhihong Li, Nevin L. Zhang

TL;DR
This paper introduces DeltaGateNet, a novel EEG-based driving fatigue recognition framework that models bidirectional temporal dynamics to improve accuracy and robustness across different datasets and subject conditions.
Contribution
The paper proposes a new framework, DeltaGateNet, that explicitly captures bidirectional temporal dynamics and channel-specific long-term dependencies in EEG signals for driving fatigue detection.
Findings
Outperforms existing methods on multiple datasets.
Achieves high intra- and inter-subject accuracy.
Demonstrates robustness under varying conditions.
Abstract
Driving fatigue is a major contributor to traffic accidents and poses a serious threat to road safety. Electroencephalography (EEG) provides a direct measurement of neural activity, yet EEG-based fatigue recognition is hindered by strong non-stationarity and asymmetric neural dynamics. To address these challenges, we propose DeltaGateNet, a novel framework that explicitly captures Bidirectional temporal dynamics for EEG-based driving fatigue recognition. Our key idea is to introduce a Bidirectional Delta module that decomposes first-order temporal differences into positive and negative components, enabling explicit modeling of asymmetric neural activation and suppression patterns. Furthermore, we design a Gated Temporal Convolution module to capture long-term temporal dependencies for each EEG channel using depthwise temporal convolutions and residual learning, preserving channel-wise…
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Taxonomy
TopicsSleep and Work-Related Fatigue · EEG and Brain-Computer Interfaces · Emotion and Mood Recognition
