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用于手动交互的时空运动规划和快速适应。

Spatiotemporal movement planning and rapid adaptation for manual interaction.

机构信息

Center for Sensorimotor Research, Institute for Clinical Neuroscience, Ludwig-Maximilian University Munich, Munich, Germany.

出版信息

PLoS One. 2013 May 28;8(5):e64982. doi: 10.1371/journal.pone.0064982. Print 2013.

Abstract

Many everyday tasks require the ability of two or more individuals to coordinate their actions with others to increase efficiency. Such an increase in efficiency can often be observed even after only very few trials. Previous work suggests that such behavioral adaptation can be explained within a probabilistic framework that integrates sensory input and prior experience. Even though higher cognitive abilities such as intention recognition have been described as probabilistic estimation depending on an internal model of the other agent, it is not clear whether much simpler daily interaction is consistent with a probabilistic framework. Here, we investigate whether the mechanisms underlying efficient coordination during manual interactions can be understood as probabilistic optimization. For this purpose we studied in several experiments a simple manual handover task concentrating on the action of the receiver. We found that the duration until the receiver reacts to the handover decreases over trials, but strongly depends on the position of the handover. We then replaced the human deliverer by different types of robots to further investigate the influence of the delivering movement on the reaction of the receiver. Durations were found to depend on movement kinematics and the robot's joint configuration. Modeling the task was based on the assumption that the receiver's decision to act is based on the accumulated evidence for a specific handover position. The evidence for this handover position is collected from observing the hand movement of the deliverer over time and, if appropriate, by integrating this sensory likelihood with prior expectation that is updated over trials. The close match of model simulations and experimental results shows that the efficiency of handover coordination can be explained by an adaptive probabilistic fusion of a-priori expectation and online estimation.

摘要

许多日常任务都需要两个人或更多人协调他们的行动,以提高效率。即使只有很少的几次尝试,也能明显观察到这种效率的提高。以前的工作表明,这种行为适应可以用概率框架来解释,该框架将感官输入和先前的经验整合在一起。尽管更高的认知能力,如意图识别,已被描述为依赖于其他代理的内部模型的概率估计,但尚不清楚更简单的日常交互是否与概率框架一致。在这里,我们研究了在手动交互过程中高效协调的机制是否可以理解为概率优化。为此,我们在几个实验中研究了一个简单的手动交接任务,重点关注接收者的动作。我们发现,接收者对交接的反应时间随着试验的进行而减少,但强烈依赖于交接的位置。然后,我们用不同类型的机器人代替人类交付者,进一步研究交付运动对接收者反应的影响。结果发现,持续时间取决于运动运动学和机器人的关节配置。任务建模是基于这样的假设,即接收者的行动决策是基于对特定交接位置的累积证据。这个交接位置的证据是通过观察交付者的手部运动随时间的变化而收集的,如果合适的话,还可以通过将这种感官似然性与随试验更新的先验期望进行集成来收集。模型模拟和实验结果的高度匹配表明,通过对先验期望和在线估计进行自适应概率融合,可以解释交接协调的效率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8f60/3665711/2e6973b08d78/pone.0064982.g001.jpg

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