Upasani Satyajit, Srinivasan Divya, Zhu Qi, Du Jing, Leonessa Alexander
Virginia Tech, Blacksburg, VA, USA.
Clemson University, Clemson, SC, USA.
Hum Factors. 2024 Aug;66(8):2104-2119. doi: 10.1177/00187208231204704. Epub 2023 Oct 4.
In Physical Human-Robot Interaction (pHRI), the need to learn the robot's motor-control dynamics is associated with increased cognitive load. Eye-tracking metrics can help understand the dynamics of fluctuating mental workload over the course of learning.
The aim of this study was to test eye-tracking measures' sensitivity and reliability to variations in task difficulty, as well as their performance-prediction capability, in physical human-robot collaboration tasks involving an industrial robot for object comanipulation.
Participants (9M, 9F) learned to coperform a virtual pick-and-place task with a bimanual robot over multiple trials. Joint stiffness of the robot was manipulated to increase motor-coordination demands. The psychometric properties of eye-tracking measures and their ability to predict performance was investigated.
Stationary Gaze Entropy and pupil diameter were the most reliable and sensitive measures of workload associated with changes in task difficulty and learning. Increased task difficulty was more likely to result in a robot-monitoring strategy. Eye-tracking measures were able to predict the occurrence of success or failure in each trial with 70% sensitivity and 71% accuracy.
The sensitivity and reliability of eye-tracking measures was acceptable, although values were lower than those observed in cognitive domains. Measures of gaze behaviors indicative of visual monitoring strategies were most sensitive to task difficulty manipulations, and should be explored further for the pHRI domain where motor-control and internal-model formation will likely be strong contributors to workload.
Future collaborative robots can adapt to human cognitive state and skill-level measured using eye-tracking measures of workload and visual attention.
在人机物理交互(pHRI)中,了解机器人的运动控制动力学的需求与认知负荷增加相关。眼动追踪指标有助于理解学习过程中波动的心理工作量的动态变化。
本研究的目的是测试眼动追踪测量对任务难度变化的敏感性和可靠性,以及它们在涉及工业机器人进行物体共同操作的人机物理协作任务中的性能预测能力。
参与者(9名男性,9名女性)在多次试验中学习与双臂机器人共同执行虚拟拾取和放置任务。操纵机器人的关节刚度以增加运动协调需求。研究了眼动追踪测量的心理测量特性及其预测性能的能力。
固定注视熵和瞳孔直径是与任务难度和学习变化相关的工作量最可靠和敏感的测量指标。任务难度增加更有可能导致机器人监控策略。眼动追踪测量能够以70%的敏感性和71%的准确率预测每次试验中成功或失败的发生。
眼动追踪测量的敏感性和可靠性是可以接受的,尽管数值低于在认知领域观察到的数值。指示视觉监控策略的注视行为测量对任务难度操纵最为敏感,对于运动控制和内部模型形成可能是工作量的重要贡献因素的pHRI领域,应进一步探索。
未来的协作机器人可以适应使用工作量和视觉注意力的眼动追踪测量所测量的人类认知状态和技能水平。