Divide-and-conquer manipulation planning by lazily searching a weighted two-layer manipulation graph

Weiwei Wan, K. Harada
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引用次数: 2

Abstract

When people fail to move his or her arms from one configuration to another, they attempt to break the task into smaller tasks and finish them separately. This kind of solution is usually named “divide and conquer”. In this paper, we propose an implementation of “divide and conquer” where the robot attempts to divide one difficult manipulation task into smaller but easier problems according to the results of lazy planning. It leverages the planning of different levels to build a weighted two-layer manipulation graph, and divides and conquer the original task by lazily searching the weighted two-layer manipulation graph. In the lowest level, the planning is motion planning. In the middle level, the planning is grasp planning and placement planning. In the highest level, the planning is manipulation planning. Our implementation uses the grasps and placements computed in the middle level to construct a weighted two-layer manipulation graph for the highest level. It finds a manipulation path through the weighted two-layer manipulation graph in the highest level using lazy searching, and uses motion planning in the lowest level to find the motions that connect the vertices of the weighted two-layer manipulation path. Simulation is developed to demonstrate the the performance of our implementation. The manipulation task in the simulation is divided and separately conquered by leveraging the planning at different levels.
通过延迟搜索加权两层操作图进行分治式操作规划
当人们无法将手臂从一种姿势移动到另一种姿势时,他们会试图将任务分解成更小的任务,然后分别完成。这种解决方案通常被称为“分而治之”。在本文中,我们提出了一种“分而治之”的实现,机器人试图根据懒惰规划的结果将一个困难的操作任务划分为更小但更容易的问题。利用不同层次的规划构建加权两层操作图,并通过对加权两层操作图的惰性搜索对原任务进行划分和征服。最低层次的规划是运动规划。中层的规划是把握规划和布局规划。在最高层次上,规划是操纵规划。我们的实现使用在中间级别计算的抓取和放置来为最高级别构造一个加权的两层操作图。在最上层使用延迟搜索通过加权两层操作图找到操作路径,在最低层使用运动规划找到连接加权两层操作路径顶点的运动。开发了仿真来演示我们实现的性能。通过利用不同层次的规划,对仿真中的操作任务进行划分和单独征服。
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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