National Key Laboratory of Human Factors Engineering, China Astronaut Research and Training Center, Beijing, China.
Space Engineering University, Beijing, China.
Biomed Eng Online. 2022 Feb 2;21(1):9. doi: 10.1186/s12938-022-00980-1.
Mental workload is a critical consideration in complex man-machine systems design. Among various mental workload detection techniques, multimodal detection techniques integrating electroencephalogram (EEG) and functional near-infrared spectroscopy (fNIRS) signals have attracted considerable attention. However, existing EEG-fNIRS-based mental workload detection methods have certain defects, such as complex signal acquisition channels and low detection accuracy, which restrict their practical application.
The signal acquisition configuration was optimized by analyzing the feature importance in mental workload recognition model and a more accurate and convenient EEG-fNIRS-based mental workload detection method was constructed. A classical Multi-Task Attribute Battery (MATB) task was conducted with 20 participating volunteers. Subjective scale data, 64-channel EEG data, and two-channel fNIRS data were collected.
A higher number of EEG channels correspond to higher detection accuracy. However, there is no obvious improvement in accuracy once the number of EEG channels reaches 26, with a four-level mental workload detection accuracy of 76.25 ± 5.21%. Partial results of physiological analysis verify the results of previous studies, such as that the θ power of EEG and concentration of OHb in the prefrontal region increase while the concentration of HHb decreases with task difficulty. It was further observed, for the first time, that the energy of each band of EEG signals was significantly different in the occipital lobe region, and the power of [Formula: see text] and [Formula: see text] bands in the occipital region increased significantly with task difficulty. The changing range and the mean amplitude of OHb in high-difficulty tasks were significantly higher compared with those in low-difficulty tasks.
The channel configuration of EEG-fNIRS-based mental workload detection was optimized to 26 EEG channels and two frontal fNIRS channels. A four-level mental workload detection accuracy of 76.25 ± 5.21% was obtained, which is higher than previously reported results. The proposed configuration can promote the application of mental workload detection technology in military, driving, and other complex human-computer interaction systems.
精神工作负荷是复杂人机系统设计中的一个关键考虑因素。在各种精神工作负荷检测技术中,结合脑电图(EEG)和功能近红外光谱(fNIRS)信号的多模态检测技术引起了相当大的关注。然而,现有的基于 EEG-fNIRS 的精神工作负荷检测方法存在信号采集通道复杂和检测精度低等缺陷,限制了其实际应用。
通过分析精神工作负荷识别模型中的特征重要性,优化信号采集配置,构建了一种更准确、更方便的基于 EEG-fNIRS 的精神工作负荷检测方法。采用经典的多任务属性电池(MATB)任务,有 20 名志愿者参与。采集了主观量表数据、64 通道 EEG 数据和双通道 fNIRS 数据。
更多的 EEG 通道对应更高的检测精度。然而,当 EEG 通道数量达到 26 个时,精度没有明显提高,四级精神工作负荷检测准确率为 76.25±5.21%。部分生理分析结果验证了先前研究的结果,例如,随着任务难度的增加,EEG 的θ功率和前额区域的 OHb 浓度增加,而 HHb 浓度降低。首次观察到,EEG 信号各频段的能量在枕叶区域存在显著差异,枕叶区域[Formula: see text]和[Formula: see text]频段的功率随着任务难度的增加而显著增加。高难度任务中 OHb 的变化范围和平均幅度明显高于低难度任务。
优化了基于 EEG-fNIRS 的精神工作负荷检测的通道配置,采用 26 个 EEG 通道和两个额部 fNIRS 通道。获得了 76.25±5.21%的四级精神工作负荷检测准确率,高于以往的报道结果。所提出的配置可以促进精神工作负荷检测技术在军事、驾驶等复杂人机交互系统中的应用。