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使用半监督域自适应增强基于脑电图的跨任务心理工作量分类性能。

Using Semi-Supervised Domain Adaptation to Enhance EEG-Based Cross-Task Mental Workload Classification Performance.

作者信息

Wang Tao, Ke Yufeng, Huang Yichao, He Feng, Zhong Wenxiao, Liu Shuang, Ming Dong

出版信息

IEEE J Biomed Health Inform. 2024 Dec;28(12):7032-7039. doi: 10.1109/JBHI.2024.3452410. Epub 2024 Dec 5.

Abstract

Mental workload (MWL) assessment is critical for accident prevention and operator safety. However, achieving cross-task generalization of MWL classification models is a significant challenge for real-world applications. Classifiers trained on labeled samples from one task often experience a notable performance drop when directly applied to samples from other tasks, limiting its use cases. To address this issue, we propose a semi-supervised cross-task domain adaptation (SCDA) method using power spectral density (PSD) features for MWL recognition across tasks (MATB-II and n-back). Our results demonstrated that the SCDA method achieved the best cross-task classification performance on our data and COG-BCI public dataset, with accuracies of 90.98% ± 9.36% and 96.61% ± 4.35%, respectively. Furthermore, in the cross-task classification of cross-subject scenarios, SCDA showed the highest average accuracy (75.39% ± 9.56% on our data, 90.98% ± 9.36% on the COG-BCI public dataset). The findings indicate that the semi-supervised transfer learning approach using PSD features is feasible and effective for cross-task MWL assessment.

摘要

心理负荷(MWL)评估对于事故预防和操作员安全至关重要。然而,实现MWL分类模型的跨任务泛化对于实际应用来说是一项重大挑战。在一个任务的标记样本上训练的分类器,当直接应用于其他任务的样本时,往往会出现显著的性能下降,限制了其用例。为了解决这个问题,我们提出了一种半监督跨任务域适应(SCDA)方法,该方法使用功率谱密度(PSD)特征进行跨任务(MATB-II和n-back)的MWL识别。我们的结果表明,SCDA方法在我们的数据和COG-BCI公共数据集上实现了最佳的跨任务分类性能,准确率分别为90.98%±9.36%和96.61%±4.35%。此外,在跨主体场景的跨任务分类中,SCDA显示出最高的平均准确率(在我们的数据上为75.39%±9.56%,在COG-BCI公共数据集上为90.98%±9.36%)。研究结果表明,使用PSD特征的半监督迁移学习方法对于跨任务MWL评估是可行且有效的。

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