ProTAMP: Probabilistic Task and Motion Planning Considering Human Action for Harmonious Collaboration

Shun Mochizuki, Yosuke Kawasaki, Masaki Takahashi
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Abstract

For the proper functioning of mobile manipulator-type autonomous robot performing complicated tasks in a human-robot coexistence environment, tasks and motions must be planned simultaneously. In such environments, a human and robot should collaborate with each other. Therefore, the robot must act in accordance with the human and avoid useless actions duplicated with those of humans. However, any action undertaken by a human has uncertainty, and thus, predicting them correctly is challenging. This study proposed probabilistic task and motion planning considering both deterministic and probabilistic environment changes caused by robot and human actions temporarily and spatially, respectively. First, the environmental changes were modeled, where the robot is capable of recognizing the possibility of environmental changes. Second, in task planning, the probabilities of each environmental change owing to human actions was minimized. Finally, in motion planning, a movement path connecting each task in a planned order was planned, thereby enabling the robot to perform actions not duplicated with those by a human. Furthermore, the plans generated were compared without considering possibility of human actions and the effectiveness of the proposed method was verified. Consequently, the proposed method was confirmed to reduce the time required for finishing the tasks.
考虑人类行为的和谐协作的概率任务和运动规划
在人-机器人共存环境中执行复杂任务的移动机械手式自主机器人,必须对任务和运动进行同步规划。在这样的环境中,人类和机器人应该相互协作。因此,机器人的动作必须与人一致,避免与人重复无用的动作。然而,人类采取的任何行动都具有不确定性,因此,正确预测它们是具有挑战性的。本研究提出了概率任务和运动规划,分别考虑了机器人和人的行为在时间和空间上造成的确定性和概率环境变化。首先,对环境变化进行建模,使机器人能够识别环境变化的可能性。其次,在任务规划中,将人类活动引起的各种环境变化的概率最小化。最后,在运动规划中,按照规划的顺序规划出连接各任务的运动路径,从而使机器人能够完成与人类不重复的动作。在不考虑人为行为可能性的情况下,对生成的方案进行了比较,验证了所提方法的有效性。结果表明,该方法能够有效地缩短任务完成时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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