TNO Perceptual and Cognitive Systems, PO Box 23, 3769 ZG Soesterberg, The Netherlands.
J Neural Eng. 2012 Aug;9(4):045008. doi: 10.1088/1741-2560/9/4/045008. Epub 2012 Jul 25.
Previous studies indicate that both electroencephalogram (EEG) spectral power (in particular the alpha and theta band) and event-related potentials (ERPs) (in particular the P300) can be used as a measure of mental work or memory load. We compare their ability to estimate workload level in a well-controlled task. In addition, we combine both types of measures in a single classification model to examine whether this results in higher classification accuracy than either one alone. Participants watched a sequence of visually presented letters and indicated whether or not the current letter was the same as the one (n instances) before. Workload was varied by varying n. We developed different classification models using ERP features, frequency power features or a combination (fusion). Training and testing of the models simulated an online workload estimation situation. All our ERP, power and fusion models provide classification accuracies between 80% and 90% when distinguishing between the highest and the lowest workload condition after 2 min. For 32 out of 35 participants, classification was significantly higher than chance level after 2.5 s (or one letter) as estimated by the fusion model. Differences between the models are rather small, though the fusion model performs better than the other models when only short data segments are available for estimating workload.
先前的研究表明,脑电图(EEG)的频谱功率(特别是阿尔法和 theta 频段)和事件相关电位(ERPs)(特别是 P300)都可以作为衡量脑力工作或记忆负荷的指标。我们比较了它们在一项控制良好的任务中估计工作负荷水平的能力。此外,我们将这两种类型的测量结果结合在一个单一的分类模型中,以检验这是否会导致比单独使用任何一种测量结果更高的分类准确性。参与者观看一系列视觉呈现的字母,并判断当前字母是否与前一个字母(n 个实例)相同。通过改变 n 的值来改变工作负荷。我们使用 ERP 特征、频率功率特征或它们的组合(融合)开发了不同的分类模型。模型的训练和测试模拟了在线工作负荷估计情况。当在 2 分钟后区分最高和最低工作负荷条件时,我们所有的 ERP、功率和融合模型提供的分类准确率在 80%到 90%之间。对于 35 名参与者中的 32 名,融合模型估计的 2.5 秒(或一个字母)后,分类明显高于随机水平。虽然融合模型在仅可用短数据段估计工作负荷时比其他模型表现更好,但模型之间的差异相当小。