Yuan Duanyang, Yue Jingwei, Xiong Xuefeng, Jiang Yibi, Zan Peng, Li Chunyong
Shanghai Key Laboratory of Power Station Automation, School of Mechatronics Engineering and Automation, Shanghai University, Shanghai, China.
Beijing Institute of Radiation Medicine, Academy of Military Medical Sciences (AMMS), Beijing, China.
Front Physiol. 2023 May 30;14:1196919. doi: 10.3389/fphys.2023.1196919. eCollection 2023.
Fatigue is dangerous for certain jobs requiring continuous concentration. When faced with new datasets, the existing fatigue detection model needs a large amount of electroencephalogram (EEG) data for training, which is resource-consuming and impractical. Although the cross-dataset fatigue detection model does not need to be retrained, no one has studied this problem previously. Therefore, this study will focus on the design of the cross-dataset fatigue detection model. This study proposes a regression method for EEG-based cross-dataset fatigue detection. This method is similar to self-supervised learning and can be divided into two steps: pre-training and the domain-specific adaptive step. To extract specific features for different datasets, a pretext task is proposed to distinguish data on different datasets in the pre-training step. Then, in the domain-specific adaptation stage, these specific features are projected into a shared subspace. Moreover, the maximum mean discrepancy (MMD) is exploited to continuously narrow the differences in the subspace so that an inherent connection can be built between datasets. In addition, the attention mechanism is introduced to extract continuous information on spatial features, and the gated recurrent unit (GRU) is used to capture time series information. The accuracy and root mean square error (RMSE) achieved by the proposed method are 59.10% and 0.27, respectively, which significantly outperforms state-of-the-art domain adaptation methods. In addition, this study discusses the effect of labeled samples. When the number of labeled samples is 10% of the total number, the accuracy of the proposed model can reach 66.21%. This study fills a vacancy in the field of fatigue detection. In addition, the EEG-based cross-dataset fatigue detection method can be used for reference by other EEG-based deep learning research practices.
疲劳对于某些需要持续集中注意力的工作来说是危险的。面对新的数据集时,现有的疲劳检测模型需要大量脑电图(EEG)数据进行训练,这既消耗资源又不切实际。尽管跨数据集疲劳检测模型无需重新训练,但此前没有人研究过这个问题。因此,本研究将专注于跨数据集疲劳检测模型的设计。本研究提出了一种基于EEG的跨数据集疲劳检测回归方法。该方法类似于自监督学习,可分为两个步骤:预训练和特定领域自适应步骤。为了提取不同数据集的特定特征,在预训练步骤中提出了一个前置任务来区分不同数据集上的数据。然后,在特定领域自适应阶段,将这些特定特征投影到一个共享子空间中。此外,利用最大均值差异(MMD)不断缩小子空间中的差异,以便在数据集之间建立内在联系。另外,引入注意力机制来提取空间特征的连续信息,并使用门控循环单元(GRU)来捕获时间序列信息。所提方法实现的准确率和均方根误差(RMSE)分别为59.10%和0.27,显著优于现有最先进的领域自适应方法。此外,本研究还讨论了有标签样本的影响。当有标签样本数量占总数的10%时,所提模型的准确率可达到66.21%。本研究填补了疲劳检测领域的空白。此外,基于EEG的跨数据集疲劳检测方法可供其他基于EEG的深度学习研究实践参考。