Beyond Subjective Self-Rating: EEG Signal Classification of Cognitive Workload

P. Zarjam, J. Epps, N. Lovell
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引用次数: 85

Abstract

Cognitive workload is an important indicator of mental activity that has implications for human-computer interaction, biomedical and task analysis applications. Previously, subjective rating (self-assessment) has often been a preferred measure, due to its ease of use and relative sensitivity to the cognitive load variations. However, it can only be feasibly measured in a post-hoc manner with the user's cooperation, and is not available as an online, continuous measurement during the progress of the cognitive task. In this paper, we used a cognitive task inducing seven different levels of workload to investigate workload discrimination using electroencephalography (EEG) signals. The entropy, energy, and standard deviation of the wavelet coefficients extracted from the segmented EEGs were found to change very consistently in accordance with the induced load, yielding strong significance in statistical tests of ranking accuracy. High accuracy for subject-independent multichannel classification among seven load levels was achieved, across the twelve subjects studied. We compare these results with alternative measures such as performance, subjective ratings, and reaction time (response time) of the subjects and compare their reliability with the EEG-based method introduced. We also investigate test/re-test reliability of the recorded EEG signals to evaluate their stability over time. These findings bring the use of passive brain-computer interfaces (BCI) for continuous memory load measurement closer to reality, and suggest EEG as the preferred measure of working memory load.
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超越主观自评:认知负荷的脑电图信号分类
认知负荷是心理活动的一个重要指标,在人机交互、生物医学和任务分析应用中具有重要意义。以前,主观评分(自我评估)往往是首选的测量方法,因为它易于使用和相对敏感的认知负荷变化。然而,它只能在用户的配合下以一种事后的方式进行测量,而不能在认知任务的过程中作为一种在线的、连续的测量。本文采用认知任务诱导7种不同水平的工作负荷,利用脑电图(EEG)信号研究工作负荷歧视。从分割的脑电图中提取的小波系数的熵、能量和标准差与诱导负荷的变化非常一致,在排序准确性的统计检验中具有很强的显著性。在研究的12个受试者中,在7个负载水平中实现了与受试者无关的多通道分类的高精度。我们将这些结果与其他测量方法,如表现、主观评分和受试者的反应时间(反应时间)进行比较,并将其与基于脑电图的方法的可靠性进行比较。我们还研究了记录的脑电图信号的测试/再测试可靠性,以评估其随时间的稳定性。这些发现使被动脑机接口(BCI)用于连续记忆负荷测量更加接近现实,并建议EEG作为工作记忆负荷的首选测量方法。
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来源期刊
IEEE Transactions on Autonomous Mental Development
IEEE Transactions on Autonomous Mental Development COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-ROBOTICS
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审稿时长
3 months
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