This paper presents a novel approach for the automatic offline grasp pose synthesis on known rigid objects for parallel jaw grippers. We use several criteria such as gripper stroke, surface friction, and a collision check to determine suitable 6D grasp poses on an object. In contrast to most available approaches, we neither aim for the best grasp pose nor for as many grasp poses as possible, but for a highly diverse set of grasps distributed all along the object. In order to accomplish this objective, we employ a clustering algorithm to the sampled set of grasps. This allows to simultaneously reduce the set of grasp pose candidates and maintain a high variance in terms of position and orientation between the individual grasps. We demonstrate that the grasps generated by our method can be successfully used in real-world robotic grasping applications.
翻译:本文展示了一种新型的自动离线抓取法,将已知的僵硬物体合成为平行的下巴抓抓器。 我们使用若干标准,如抓风、表面摩擦和碰撞检查来确定一个物体上适当的 6D 抓针姿势。 与大多数现有方法相比,我们既不着眼于最佳的抓头姿势,也不着眼于尽可能多的抓头姿势,而是为了在物体上分布的一套高度多样化的抓头。 为了实现这一目标,我们用一组组合算法对一组抽样的抓头进行组合算法。 这样可以同时减少一组抓头姿势,并在个人抓头的位置和方向上保持高度差异。 我们证明,我们的方法所产生的抓头可以在现实世界的机器人抓头应用中成功使用。