Granular estimation of user cognitive workload using multi-modal physiological sensors.

IF 1.5 Q3 ERGONOMICS
Frontiers in neuroergonomics Pub Date : 2024-02-27 eCollection Date: 2024-01-01 DOI:10.3389/fnrgo.2024.1292627
Jingkun Wang, Christopher Stevens, Winston Bennett, Denny Yu
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Abstract

Mental workload (MWL) is a crucial area of study due to its significant influence on task performance and potential for significant operator error. However, measuring MWL presents challenges, as it is a multi-dimensional construct. Previous research on MWL models has focused on differentiating between two to three levels. Nonetheless, tasks can vary widely in their complexity, and little is known about how subtle variations in task difficulty influence workload indicators. To address this, we conducted an experiment inducing MWL in up to 5 levels, hypothesizing that our multi-modal metrics would be able to distinguish between each MWL stage. We measured the induced workload using task performance, subjective assessment, and physiological metrics. Our simulated task was designed to induce diverse MWL degrees, including five different math and three different verbal tiers. Our findings indicate that all investigated metrics successfully differentiated between various MWL levels induced by different tiers of math problems. Notably, performance metrics emerged as the most effective assessment, being the only metric capable of distinguishing all the levels. Some limitations were observed in the granularity of subjective and physiological metrics. Specifically, the subjective overall mental workload couldn't distinguish lower levels of workload, while all physiological metrics could detect a shift from lower to higher levels, but did not distinguish between workload tiers at the higher or lower ends of the scale (e.g., between the easy and the easy-medium tiers). Despite these limitations, each pair of levels was effectively differentiated by one or more metrics. This suggests a promising avenue for future research, exploring the integration or combination of multiple metrics. The findings suggest that subtle differences in workload levels may be distinguishable using combinations of subjective and physiological metrics.

利用多模态生理传感器对用户认知工作量进行精细估算。
脑力劳动负荷(MWL)是一个重要的研究领域,因为它对任务绩效有重大影响,并可能导致操作员出现重大失误。然而,由于心理工作量是一个多维度的概念,因此对其进行测量是一项挑战。以往对 MWL 模型的研究主要集中在区分两到三个层次上。然而,任务的复杂程度千差万别,人们对任务难度的细微变化如何影响工作量指标知之甚少。为了解决这个问题,我们进行了一项实验,诱导多达 5 个级别的 MWL,并假设我们的多模态指标能够区分每个 MWL 阶段。我们使用任务表现、主观评估和生理指标来测量诱导的工作量。我们的模拟任务旨在诱导不同程度的 MWL,包括五个不同的数学和三个不同的语言层级。我们的研究结果表明,所有调查指标都能成功区分不同层次的数学问题所引起的不同程度的 MWL。值得注意的是,成绩指标是最有效的评估指标,是唯一能够区分所有水平的指标。主观指标和生理指标的粒度存在一些局限性。具体来说,主观总体心理工作量无法区分较低的工作量水平,而所有生理指标都能检测到从较低水平到较高水平的转变,但无法区分较高或较低两端的工作量层级(例如,简单层级和简单-中等层级之间)。尽管存在这些局限性,但每对级别都能通过一个或多个指标进行有效区分。这为今后的研究提供了一个很有前景的途径,即探索多种指标的整合或组合。研究结果表明,可以通过主观和生理指标的组合来区分工作量等级的细微差别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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