He Xiaopeng, Li Haoyu, Yu Peng, Wu Hao, Chen Badong
National Key Laboratory of Human-Machine Hybrid Augmented Intelligence, National Engineering Research Center for Visual Information and Applications, and Institute of Artificial Intelligence and Robotics, Xi'an Jiaotong University, Xi'an, People's Republic of China.
School of Electrical Engineering, Xi'an University of Technology, Xi'an, People's Republic of China.
J Neural Eng. 2025 Apr 7;22(2). doi: 10.1088/1741-2552/ad618a.
. Electroencephalography (EEG) is widely recognized as an effective method for detecting fatigue. However, practical applications of EEG for fatigue detection in real-world scenarios are often challenging, particularly in cases involving subjects not included in the training datasets, owing to bio-individual differences and noisy labels. This study aims to develop an effective framework for cross-subject fatigue detection by addressing these challenges.. In this study, we propose a novel framework, termed DP-MP, for cross-subject fatigue detection, which utilizes a domain-adversarial neural network-based prototypical representation in conjunction with Mix-up pairwise learning. Our proposed DP-MP framework aims to mitigate the impact of bio-individual differences by encoding fatigue-related semantic structures within EEG signals and exploring shared fatigue prototype features across individuals. Notably, to the best of our knowledge, this work is the first to conceptualize fatigue detection as a pairwise learning task, thereby effectively reducing the interference from noisy labels. Furthermore, we propose the Mix-up pairwise learning (MixPa) approach in the field of fatigue detection, which broadens the advantages of pairwise learning by introducing more diverse and informative relationships among samples.. Cross-subject experiments were conducted on two benchmark databases, SEED-VIG and FTEF, achieving state-of-the-art performance with average accuracies of 88.14%and 97.41%, respectively. These promising results demonstrate our model's effectiveness and excellent generalization capability.. This is the first time EEG-based fatigue detection has been conceptualized as a pairwise learning task, offering a novel perspective to this field. Moreover, our proposed DP-MP framework effectively tackles the challenges of bio-individual differences and noisy labels in the fatigue detection field and demonstrates superior performance. Our work provides valuable insights for future research, promoting the practical application of brain-computer interfaces for fatigue detection.
脑电图(EEG)被广泛认为是检测疲劳的有效方法。然而,EEG在实际场景中用于疲劳检测的实际应用往往具有挑战性,特别是在涉及训练数据集中未包含的受试者的情况下,这是由于生物个体差异和标签噪声所致。本研究旨在通过解决这些挑战,开发一种有效的跨受试者疲劳检测框架。
在本研究中,我们提出了一种用于跨受试者疲劳检测的新颖框架,称为DP-MP,它利用基于域对抗神经网络的原型表示与混合成对学习相结合。我们提出的DP-MP框架旨在通过对EEG信号中的疲劳相关语义结构进行编码并探索个体间共享的疲劳原型特征,来减轻生物个体差异的影响。值得注意的是,据我们所知,这项工作首次将疲劳检测概念化为成对学习任务,从而有效减少了标签噪声的干扰。此外,我们在疲劳检测领域提出了混合成对学习(MixPa)方法,通过在样本之间引入更多样化和信息丰富的关系,拓宽了成对学习的优势。
在两个基准数据库SEED-VIG和FTEF上进行了跨受试者实验,分别以88.14%和97.41%的平均准确率取得了领先的性能。这些令人鼓舞的结果证明了我们模型的有效性和出色的泛化能力。
这是首次将基于EEG的疲劳检测概念化为成对学习任务,为该领域提供了新的视角。此外,我们提出的DP-MP框架有效地解决了疲劳检测领域中生物个体差异和标签噪声的挑战,并展示了卓越的性能。我们的工作为未来的研究提供了有价值的见解,促进了脑机接口在疲劳检测中的实际应用。