利用已学习的先验知识加速掌握探索

Han Yu Li, Michael Danielczuk, A. Balakrishna, V. Satish, Ken Goldberg
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引用次数: 8

摘要

机器人掌握新物体的能力在电子商务订单履行和家庭服务中有工业应用。数据驱动抓取策略在学习抓取任意对象的一般策略方面取得了成功。然而,这些方法可能无法捕获具有复杂几何形状或明显超出训练分布的对象。我们提出了一种汤普森采样算法,该算法利用在线经验学习抓取具有未知几何形状的给定物体。该算法利用从Dexterity Network机器人抓取规划器中学习到的先验知识来指导抓取探索,并为新物体的每个稳定姿态提供抓取成功的概率估计。我们发现用Dex-Net先验来播种策略可以让它更有效地找到对这些对象的鲁棒抓取。实验表明,最好的学习策略获得的平均总奖励比贪婪基线高64.5%,在超过3000个对象姿势的30万次训练中评估时,达到了oracle基线的5.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accelerating Grasp Exploration by Leveraging Learned Priors
The ability of robots to grasp novel objects has industry applications in e-commerce order fulfillment and home service. Data-driven grasping policies have achieved success in learning general strategies for grasping arbitrary objects. However, these approaches can fail to grasp objects which have complex geometry or are significantly outside of the training distribution. We present a Thompson sampling algorithm that learns to grasp a given object with unknown geometry using online experience. The algorithm leverages learned priors from the Dexterity Network robot grasp planner to guide grasp exploration and provide probabilistic estimates of grasp success for each stable pose of the novel object. We find that seeding the policy with the Dex-Net prior allows it to more efficiently find robust grasps on these objects. Experiments suggest that the best learned policy attains an average total reward 64.5% higher than a greedy baseline and achieves within 5.7% of an oracle baseline when evaluated over 300, 000 training runs across a set of 3000 object poses.
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