功能性任务执行过程中情感人体运动的分析:一种逆最优控制方法

Pamela Carreno-Medrano, T. Harada, J. Lin, D. Kulić, G. Venture
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引用次数: 7

摘要

对于与人类一起协作和工作的机器人来说,提高机器人的沟通能力以实现引人入胜和成功的互动是非常有兴趣的。人类之间成功的任务协作通常涉及功能运动,其中嵌入了隐式通信信号,如情感。因此,为了提高机器人的通信能力,有必要确定人类在产生这种隐式信号时采用的不同运动控制策略。本文详细介绍了逆最优控制(IOC)方法的适应性。我们假设,IOC允许识别在功能运动表现期间涉及情感内容的内隐交流的运动策略。为了验证我们的假设,我们收集了一个由上半身功能运动组成的动作捕捉数据集,并通过感知用户研究由多个观察者进行了注释。在我们分析过程中考虑的不同控制策略中,我们发现在区分传递不同情感状态的运动时,质心运动、运动量、拉班空间努力和努力是最相关的。
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Analysis of Affective Human Motion During Functional Task Performance: An Inverse Optimal Control Approach
For robots that collaborate alongside and work with humans, there is great interest in improving robot communication abilities to achieve engaging and successful interactions. Successful task collaborations between humans often involve functional motions in which implicit communication signals, such as affect, are embedded. Thus in order to improve a robot's communication capabilities, it is necessary to identify the different motor control strategies that humans employ when generating such implicit signals. This paper details the adaptation of an Inverse Optimal Control (IOC) methodology for this purpose. We hypothesize that IOC allows for the identification of the motion strategies involved in the implicit communication of affective content during the performance of functional movement. To test our hypothesis, a motion capture dataset consisting of upper-body functional movements was collected and annotated by multiple observers through a perceptual user study. Among the different control strategies considered during our analysis, we found that center of mass movement, quantity of motion, Laban space effort and effort were the most relevant when distinguishing motions that convey different affective states.
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