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Towards Mixed-Initiative Human–Robot Interaction: Assessment of Discriminative Physiological and Behavioral Features for Performance Prediction

机译:迈向混合式人机交互:评估表现预测的区别性生理和行为特征

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摘要

The design of human–robot interactions is a key challenge to optimize operational performance. A promising approach is to consider mixed-initiative interactions in which the tasks and authority of each human and artificial agents are dynamically defined according to their current abilities. An important issue for the implementation of mixed-initiative systems is to monitor human performance to dynamically drive task allocation between human and artificial agents (i.e., robots). We, therefore, designed an experimental scenario involving missions whereby participants had to cooperate with a robot to fight fires while facing hazards. Two levels of robot automation (manual vs. autonomous) were randomly manipulated to assess their impact on the participants’ performance across missions. Cardiac activity, eye-tracking, and participants’ actions on the user interface were collected. The participants performed differently to an extent that we could identify high and low score mission groups that also exhibited different behavioral, cardiac and ocular patterns. More specifically, our findings indicated that the higher level of automation could be beneficial to low-scoring participants but detrimental to high-scoring ones, and vice versa. In addition, inter-subject single-trial classification results showed that the studied behavioral and physiological features were relevant to predict mission performance. The highest average balanced accuracy (74%) was reached using the features extracted from all input devices. These results suggest that an adaptive HRI driving system, that would aim at maximizing performance, would be capable of analyzing such physiological and behavior markers online to further change the level of automation when it is relevant for the mission purpose.
机译:人机交互的设计是优化运营绩效的关键挑战。一种有前途的方法是考虑混合启动交互,其中每个人和人工代理的任务和权限根据其当前能力动态定义。实施混合启动系统的一个重要问题是监视人员绩效,以动态地驱动人员与人工代理(即机器人)之间的任务分配。因此,我们设计了一个包含任务的实验场景,参与者必须与机器人合作在面对危险的同时灭火。随机操纵了两个级别的机器人自动化(手动与自主),以评估它们对各个任务参与者的表现的影响。收集了用户界面上的心脏活动,眼动追踪和参与者的动作。参与者的表现有所不同,以至于我们可以确定表现出不同行为,心脏和眼部模式的高分和低分任务组。更具体地说,我们的发现表明,较高的自动化水平可能对得分较低的参与者有利,但会对得分较高的参与者不利,反之亦然。此外,受试者间的单项试验分类结果表明,所研究的行为和生理特征与预测任务执行情况有关。使用从所有输入设备提取的功能,可以达到最高的平均平衡精度(74%)。这些结果表明,旨在最大化性能的自适应HRI驾驶系统将能够在线分析此类生理和行为标记,以在与任务目的相关时进一步改变自动化水平。

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