几何末端执行器约束下的机器人拾取垃圾桶:垃圾桶放置和抓取选择

Irja Gravdahl, Katrine Seel, E. Grøtli
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引用次数: 3

摘要

在本文中,我们演示了如何在垃圾箱拾取应用中选择预定的抓取点时考虑路径可达性,其中抓取点是独立于手头的机器人提供的。我们通过创建工作空间的映射来优化放置箱子,考虑到逆运动学解和无碰撞路径的存在,这是工作空间中有障碍物的系统的必要条件。此外,我们密集地重新映射该区域,并基于该地图预测机器人是否可以抓取。此外,还实现了一种算法,根据路径存在性、长度和时间消耗对抓取点进行加权。仿真结果表明,在考虑路径可达性的情况下,该算法可以实现更快的抓取速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robotic Bin-Picking under Geometric End-Effector Constraints: Bin Placement and Grasp Selection
In this paper we demonstrate how path reachability can be taken into account when selecting among predetermined grasps in a bin-picking application, where grasps are supplied independently of the robot at hand. We do this by creating a map of the workspace to optimally place the bin with regards to the existence of an inverse kinematic solution and a collision-free path, a necessary condition for systems with obstructions in the workspace. Furthermore, we densely re-map this region and based on this map predict whether a grasp is reachable by the robot. Moreover, an algorithm is implemented to weight the grasps in terms of path existence, length and time consumption. The algorithm was tested with grasps generated by the neural network in simulation and the results indicate that faster picking can be achieved when taking path reachability into consideration.
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