计算机科学
人工智能
人机交互
业务
心理学
计算机视觉
作者
Jeffrey Mahler,Matthew Matl,Vishal Satish,Michael Danielczuk,Bill DeRose,Stephen McKinley,Ken Goldberg
出处
期刊:Science robotics
[American Association for the Advancement of Science]
日期:2019-01-17
卷期号:4 (26)
被引量:503
标识
DOI:10.1126/scirobotics.aau4984
摘要
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.
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