Identifying Gaze Behavior Evolution via Temporal Fully-Weighted Scanpath Graphs

Eduardo Davalos, Caleb Vatral, Clayton Cohn, Joyce Horn Fonteles, G. Biswas, Naveeduddin Mohammed, Madison Lee, Daniel Levin
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Abstract

Eye-tracking technology has expanded our ability to quantitatively measure human perception. This rich data source has been widely used to characterize human behavior and cognition. However, eye-tracking analysis has been limited in its applicability, as contextualizing gaze to environmental artifacts is non-trivial. Moreover, the temporal evolution of gaze behavior through open-ended environments where learners are alternating between tasks often remains unclear. In this paper, we propose temporal fully-weighted scanpath graphs as a novel representation of gaze behavior and combine it with a clustering scheme to obtain high-level gaze summaries that can be mapped to cognitive tasks via network metrics and cluster mean graphs. In a case study with nurse simulation-based team training, our approach was able to explain changes in gaze behavior with respect to key events during the simulation. By identifying cognitive tasks via gaze behavior, learners’ strategies can be evaluated to create online performance metrics and personalized feedback.
通过时间全加权扫描路径图识别凝视行为进化
眼球追踪技术扩展了我们定量测量人类感知能力的能力。这个丰富的数据源已被广泛用于表征人类的行为和认知。然而,眼动追踪分析的适用性受到限制,因为对环境工件的语境化凝视是非平凡的。此外,在学习者在不同任务之间交替的开放式环境中,凝视行为的时间进化往往尚不清楚。在本文中,我们提出了时间全加权扫描路径图作为凝视行为的一种新的表示,并将其与聚类方案相结合,以获得可以通过网络度量和聚类平均图映射到认知任务的高级凝视摘要。在一个基于护士模拟的团队培训案例研究中,我们的方法能够解释在模拟过程中注视行为与关键事件相关的变化。通过注视行为识别认知任务,可以评估学习者的策略,以创建在线绩效指标和个性化反馈。
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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