任务相关抓取选择:规划抓取和操作运动轨迹的联合解决方案

E. AmirM.Ghalamzan, Nikos Mavrakis, Marek Kopicki, R. Stolkin, A. Leonardis
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引用次数: 29

摘要

本文讨论了抓取和后续操作动作的联合规划问题。以前,这两个问题通常是单独研究的,但是联合推理对于使机器人完成真正的操作任务至关重要。本文对这两个问题进行了综合研究,并提出了一种综合考虑的解决方案。为此,定义了一个操作能力索引,它是任务执行路径点和对象抓取接触点的函数。我们以最新的最先进的抓取学习方法为基础,展示了该指数如何与抓取选择的概率模型计算的似然函数相结合,从而能够规划具有高稳定可能性的抓取,但也最大限度地提高了机器人提供所需抓取后任务轨迹的能力。我们还展示了如何将这种范例从单臂和手扩展到双手机器人的有效抓取和操作。我们通过模拟和真实机器人的实验证明了该方法的有效性。
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Task-relevant grasp selection: A joint solution to planning grasps and manipulative motion trajectories
This paper addresses the problem of jointly planning both grasps and subsequent manipulative actions. Previously, these two problems have typically been studied in isolation, however joint reasoning is essential to enable robots to complete real manipulative tasks. In this paper, the two problems are addressed jointly and a solution that takes both into consideration is proposed. To do so, a manipulation capability index is defined, which is a function of both the task execution waypoints and the object grasping contact points. We build on recent state-of-the-art grasp-learning methods, to show how this index can be combined with a likelihood function computed by a probabilistic model of grasp selection, enabling the planning of grasps which have a high likelihood of being stable, but which also maximise the robot's capability to deliver a desired post-grasp task trajectory. We also show how this paradigm can be extended, from a single arm and hand, to enable efficient grasping and manipulation with a bi-manual robot. We demonstrate the effectiveness of the approach using experiments on a simulated as well as a real robot.
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