We consider a decluttering problem where multiple rigid convex polygonal objects rest in randomly placed positions and orientations on a planar surface and must be efficiently transported to a packing box using both single and multi-object grasps. Prior work considered frictionless multi-object grasping. In this paper, we introduce friction to increase picks per hour. We train a neural network using real examples to plan robust multi-object grasps. In physical experiments, we find a 13.7% increase in success rate, a 1.6x increase in picks per hour, and a 6.3x decrease in grasp planning time compared to prior work on multi-object grasping. Compared to single object grasping, we find a 3.1x increase in picks per hour.
翻译:我们考虑了一个脱困问题,其中多个刚性凸多边形物体随机放置在平面表面上,必须使用单个和多个抓取方法,将它们高效地运输到装箱中。以前的工作只考虑了无摩擦多物体抓取。本文引入摩擦力以增加每小时抓取次数。我们使用实际示例来训练神经网络,以规划稳健的多物体抓取。在物理实验中,与以前的多物体抓取相比,我们发现成功率增加了13.7%,每小时抓取次数增加了1.6倍,抓取规划时间减少了6.3倍。与单个物体抓取相比,我们发现每小时抓取次数增加了3.1倍。