Department of Electrical Engineering and Computer Sciences, UC Berkeley, Berkeley, CA 94720, USA.
Department of Industrial Engineering and Operations Research, UC Berkeley, Berkeley, CA 94720, USA.
Sci Robot. 2019 Jan 16;4(26). doi: 10.1126/scirobotics.aau4984.
Universal picking (UP), or reliable robot grasping of a diverse range of novel objects from heaps, is a grand challenge for e-commerce order fulfillment, manufacturing, inspection, and home service robots. Optimizing the rate, reliability, and range of UP is difficult due to inherent uncertainty in sensing, control, and contact physics. This paper explores "ambidextrous" robot grasping, where two or more heterogeneous grippers are used. We present Dexterity Network (Dex-Net) 4.0, a substantial extension to previous versions of Dex-Net that learns policies for a given set of grippers by training on synthetic datasets using domain randomization with analytic models of physics and geometry. We train policies for a parallel-jaw and a vacuum-based suction cup gripper on 5 million synthetic depth images, grasps, and rewards generated from heaps of three-dimensional objects. On a physical robot with two grippers, the Dex-Net 4.0 policy consistently clears bins of up to 25 novel objects with reliability greater than 95% at a rate of more than 300 mean picks per hour.
通用拾取(UP),或可靠地从堆中抓取各种新颖的物体,是电子商务订单履行、制造、检查和家庭服务机器人的一大挑战。由于感知、控制和接触物理的固有不确定性,优化 UP 的速率、可靠性和范围具有挑战性。本文探讨了“双手”机器人抓取,其中使用两个或更多异种夹爪。我们提出了 Dexterity Network(Dex-Net)4.0,这是对以前版本的 Dex-Net 的重大扩展,它通过在具有物理和几何分析模型的域随机化的合成数据集上使用训练来学习给定夹爪集的策略。我们在物理机器人上用两个夹爪对平行夹爪和基于真空的吸盘夹爪进行训练,在三维物体的堆上生成了 500 万张合成深度图像、抓取和奖励。在具有两个夹爪的物理机器人上,Dex-Net 4.0 策略始终以超过 300 个平均每小时的速度可靠地清除多达 25 个新颖物体的容器,可靠性大于 95%。