Combining Task and Motion Planning through Rapidly-Exploring Random Trees

R. Caccavale, Alberto Finzi
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Abstract

Combined task and motion planning is a relevant issue in robotics. In path and motion planning, Rapidly-exploring Random Trees (RRTs) have been proposed as effective methods to efficiently search high-dimensional spaces. On the other hand, the deployment of these techniques to symbolic task planning problems has been partially investigated. In this paper, we explore this issue proposing a method to combine task and motion planning based on RRTs. Our approach relies on a metric space where both symbolic (task) and sub-symbolic (motion) spaces are represented. The associated notion of distance is then exploited by a RRT-based planner to generate a plan that includes both symbolic actions and obstacle-free trajectories. The proposed method is assessed in several case studies provided by a real-world hospital logistic scenario, where an omni-directional mobile robot is involved in pick-carry-and-place tasks.
结合任务和运动规划通过快速探索随机树
任务与运动组合规划是机器人领域的一个相关问题。在路径和运动规划中,快速探索随机树(RRTs)是一种高效搜索高维空间的有效方法。另一方面,这些技术在符号任务规划问题中的应用已经得到了部分的研究。本文对这一问题进行了探讨,提出了一种基于RRTs的任务与运动规划相结合的方法。我们的方法依赖于一个度量空间,其中符号(任务)和子符号(运动)空间都被表示。然后,基于rrt的规划器利用相关的距离概念来生成包含象征性动作和无障碍轨迹的计划。在一个真实的医院物流场景中,一个全方位移动机器人参与取货和放置任务,并在几个案例研究中对所提出的方法进行了评估。
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