Institute of Computer Science, Foundation for Research and Technology Hellas (FORTH), GR-700 13 Heraklion, Greece; Laboratory of Optics and Vision, School of Medicine, University of Crete, GR-710 03 Heraklion, Greece.
Institute of Computer Science, Foundation for Research and Technology Hellas (FORTH), GR-700 13 Heraklion, Greece; Dept. of Electrical and Computer Engineering, Hellenic Mediterranean University, GR-710 04 Heraklion, Crete, Greece.
Comput Methods Programs Biomed. 2022 Sep;224:106989. doi: 10.1016/j.cmpb.2022.106989. Epub 2022 Jul 3.
The cognitive workload is an important component in performance psychology, ergonomics, and human factors. Publicly available datasets are scarce, making it difficult to establish new approaches and comparative studies. In this work, COLET-COgnitive workLoad estimation based on Eye-Tracking dataset is presented.
Forty-seven (47) individuals' eye movements were monitored as they solved puzzles involving visual search activities of varying complexity and duration. The participants' cognitive workload level was evaluated with the subjective test of NASA-TLX and this score is used as an annotation of the activity. Extensive data analysis was performed in order to derive eye and gaze features from low-level eye recorded metrics, and a range of machine learning models were evaluated and tested regarding the estimation of the cognitive workload level.
The activities induced four different levels of cognitive workload. Multi tasking and time pressure have induced a higher level of cognitive workload than the one induced by single tasking and absence of time pressure. Multi tasking had a significant effect on 17 eye features while time pressure had a significant effect on 7 eye features. Both binary and multi-class identification attempts were performed by testing a variety of well-known classifiers, resulting in encouraging results towards cognitive workload levels estimation, with up to 88% correct predictions between low and high cognitive workload.
Machine learning analysis demonstrated potential in discriminating cognitive workload levels using only eye-tracking characteristics. The proposed dataset includes a much higher sample size and a wider spectrum of eye and gaze metrics than other similar datasets, allowing for the examination of their relations with various cognitive states.
认知负荷是绩效心理学、工效学和人因学的一个重要组成部分。可用的公共数据集稀缺,这使得建立新方法和进行比较研究变得困难。在这项工作中,提出了基于眼动追踪数据集的 COLET-COgnitive 工作负荷估计。
在解决涉及不同复杂程度和持续时间的视觉搜索活动的谜题时,监测了 47 个人的眼动。参与者的认知负荷水平通过 NASA-TLX 主观测试进行评估,该分数被用作活动的注释。进行了广泛的数据分析,以便从低水平的眼记录指标中得出眼和注视特征,并评估和测试了一系列机器学习模型,以估计认知负荷水平。
活动引起了四个不同的认知负荷水平。多任务处理和时间压力导致的认知负荷水平高于单任务处理和无时间压力导致的认知负荷水平。多任务处理对 17 个眼特征有显著影响,而时间压力对 7 个眼特征有显著影响。通过测试各种知名分类器,进行了二进制和多类识别尝试,结果令人鼓舞,表明在低认知负荷和高认知负荷之间的预测准确率高达 88%。
机器学习分析表明,仅使用眼动追踪特征就能区分认知负荷水平。所提出的数据集比其他类似数据集具有更大的样本量和更广泛的眼和注视指标范围,允许检查它们与各种认知状态的关系。