L. Paletta, Amir Dini, Cornelia Murko, S. Yahyanejad, U. Augsdörfer
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引用次数: 4
摘要
人类注意力过程在人机协作(Human -robot collaboration, HRC)的优化中发挥着重要作用[Huang et al. 2015]。我们描述了一种新的方法来测量和预测实时从眼睛和头部凝视特征的态势感知。利用眼动追踪眼镜和精确光学跟踪系统的数据,通过3D凝视分析来描述对感兴趣的场景物体的感知。不确定性的概率框架考虑了如何处理眼和位置估计中的测量误差。在基于实验室的原型制造环境中,以交接等典型任务对HRC进行了综合实验。注视特征与情境意识标准化问卷得分(SART [Taylor 1990], SAGAT [Endsley 2000])高度相关,并预测HRC任务中的表现。这将为HRC应用中基于人为因素的优化提供新的机会。
Estimation of situation awareness score and performance using eye and head gaze for human-robot collaboration
Human attention processes play a major role in the optimization of human-robot collaboration (HRC) [Huang et al. 2015]. We describe a novel methodology to measure and predict situation awareness from eye and head gaze features in real-time. The awareness about scene objects of interest was described by 3D gaze analysis using data from eye tracking glasses and a precise optical tracking system. A probabilistic framework of uncertainty considers coping with measurement errors in eye and position estimation. Comprehensive experiments on HRC were conducted with typical tasks including handover in a lab based prototypical manufacturing environment. The gaze features highly correlate with scores of standardized questionnaires of situation awareness (SART [Taylor 1990], SAGAT [Endsley 2000]) and predict performance in the HRC task. This will open new opportunities for human factors based optimization in HRC applications.