Robot head movements and human effort in the evaluation of tracking performance

Silvia Rossi, M. Staffa, Maurizio Giordano, M. D. Gregorio, Antonio Rossi, Anna Tamburro, C. Vellucci
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引用次数: 7

Abstract

People detection and tracking are essential capabilities in human-robot interaction (HRI). Typically, a tracker performance is evaluated by measuring objective data, such as the tracking error. However, in HRI applications, human- tracking performance does not have to be evaluated by considering it as a passive sensing behavior, but as an active sensing process, where both the robot and the human are involved within-the-loop. In this context, we foresee that the robotic non-verbal feedback, such as the head movement, plays an important role in improving the system tracking performance, as well as in reducing the human effort in the interactive tracking process. In order to verify this assumption, we evaluate a tracker performance in a joint task between a human and a robot, modeled as a game, and in three different settings. We adopt common HRI performance measures, such as the robot attention demand or the human effort, to evaluate the HRI human tracking performance scaling up with respect to the used robot feedback channels.
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机器人头部运动和人的努力在跟踪性能的评价
人的检测和跟踪是人机交互(HRI)的基本功能。通常,跟踪器的性能是通过测量客观数据来评估的,比如跟踪误差。然而,在HRI应用中,人类跟踪性能不必通过将其视为被动感知行为来评估,而是将其视为主动感知过程,其中机器人和人类都参与到循环中。在这种情况下,我们预见机器人的非语言反馈,如头部运动,在提高系统跟踪性能方面发挥重要作用,并在交互式跟踪过程中减少人类的努力。为了验证这一假设,我们评估了跟踪器在人类和机器人之间的联合任务中的性能,建模为游戏,并在三种不同的设置中。我们采用常见的HRI性能度量,如机器人的注意力需求或人类的努力,来评估HRI人类跟踪性能与使用的机器人反馈通道的比例。
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