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Addressing Cost-Space Chasms in Manipulation Planning

机译:解决操作计划中的成本空间鸿沟

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摘要

Finding paths in high-dimensional spaces becomes difficult when we wish to optimize the cost of a path in addition to obeying feasibility constraints. Recently the T-RRT algorithm was presented as a method to plan in high-dimensional cost spaces and it was shown to perform well across a variety of problems. However, since the T-RRT relies solely on sampling to explore the space, it has difficulty navigating cost-space chasms narrow low-cost regions surrounded by increasing cost. Such chasms are particularly common in planning for manipulators because many useful cost functions induce narrow or lower dimensional low-cost areas. This paper presents the GradienT-RRT algorithm, which combines the T-RRT with a local gradient method to bias the search toward lower-cost regions. GradienT-RRT is effective at navigating chasms because it explores low-cost regions that are too narrow to explore by sampling alone. We compare the performance of T-RRT and GradienT-RRT on planning problems involving cost functions defined in workspace, task space, and C-space. We find that GradienT-RRT outperforms T-RRT in terms of the cost of the final path while maintaining better or comparable computation time. We also find that the cost of paths generated by GradienT-RRT is far less sensitive to changes in a key parameter, making it easier to tune the algorithm. Finally, we conclude with a demonstration of GradienT-RRT on a planning-with-uncertainty task on the physical HFRB robot.
机译:当我们除了遵守可行性约束之外,还希望优化路径成本时,在高维空间中查找路径变得困难。最近,提出了T-RRT算法作为一种在高维成本空间中进行规划的方法,并且在各种问题上都表现出出色的性能。但是,由于T-RRT仅依靠采样来探索空间,因此难以导​​航成本空间鸿沟,而狭窄的低成本区域又被成本增加所包围。由于许多有用的成本函数会导致狭窄或较低维的低成本区域,因此在机械手的计划中这种鸿沟特别常见。本文提出了GradienT-RRT算法,该算法结合了T-RRT和局部梯度方法,将搜索偏向低成本区域。 GradienT-RRT可以有效地导航鸿沟,因为它可以探索低成本区域,而这些区域过于狭窄,无法仅通过采样进行探索。我们在涉及工作空间,任务空间和C空间中定义的成本函数的计划问题上比较了T-RRT和GradienT-RRT的性能。我们发现,就最终路径的成本而言,GradienT-RRT优于T-RRT,同时保持了更好或可比的计算时间。我们还发现,由GradienT-RRT生成的路径的成本对关键参数的更改不那么敏感,从而更容易调整算法。最后,我们以GradienT-RRT在物理HFRB机器人上的不确定性规划任务为例进行了总结。

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