在崎岖地形上自主行走的脚步规划

Robert J. Griffin, Georg Wiedebach, Stephen McCrory, S. Bertrand, Inho Lee, J. Pratt
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引用次数: 55

摘要

为了提高操作速度并减轻操作人员的负担,人形机器人必须能够在复杂、混乱的环境中自主运行。为了实现这一点,它们必须能够快速有效地计算所需的脚步以达到目标。在这项工作中,我们提出了一种新的a *足迹规划器,它利用环境的平面区域表示来实现崎岖地形上的足迹规划。为了增加可用立足点的数量,我们提出了一种在规划过程中允许使用部分立足点的方法。然后对脚步计划解进行后处理,以捕获位于脚步图的点阵离散之间的更好的解。然后,我们在各种虚拟和现实世界的环境中演示了这个规划器,包括一些需要使用Atlas和Valkyrie人形机器人的部分立足点和崎岖地形。
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Footstep Planning for Autonomous Walking Over Rough Terrain
To increase the speed of operation and reduce operator burden, humanoid robots must be able to function autonomously, even in complex, cluttered environments. For this to be possible, they must be able to quickly and efficiently compute desired footsteps to reach a goal. In this work, we present a new A * footstep planner that utilizes a planar region representation of the environment enable footstep planning over rough terrain. To increase the number of available footholds, we present an approach to allow the use of partial footholds during the planning process. The footstep plan solutions are then post-processed to capture better solutions that lie between the lattice discretization of the footstep graph. We then demonstrate this planner over a variety of virtual and real world environments, including some that require partial footholds and rough terrain using the Atlas and Valkyrie humanoid robots.
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