线性推策略增加机器人抓取抓取的机会

Michael Danielczuk, Jeffrey Mahler, Christopher Correa, Ken Goldberg
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引用次数: 52

摘要

为了便于在无法抓住部件时自动拾取垃圾箱,推动动作有可能将物体分开并将其从垃圾箱墙壁和角落移开。在灵巧网络(Dex-Net)机器人抓取框架的背景下,我们提出了两种基于瞄准自由空间和扩散集群的新颖推送策略,并使用四个指标将它们与之前的三种策略进行了比较。我们使用Bullet Physics在超过1000个合成推动场景的数据集上进行模拟评估。通过使用分析抓取指标比较每次推送之前和之后最佳可用抓取动作的质量来评估推送结果。在Dex-Net无法成功抓取物体的情况下进行的实验表明,推动可以将成功抓取的概率提高15%以上。此外,在抓取质量可以提高的情况下,新政策的表现比准随机基线高出近2倍。在ABB YuMi的物理实验中,最高性能的推策略使抓取质量提高了24%。
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Linear Push Policies to Increase Grasp Access for Robot Bin Picking
To facilitate automated bin picking when parts cannot be grasped, pushing actions have the potential to separate objects and move them away from bin walls and corners. In the context of the Dexterity Network (Dex-Net) robot grasping framework, we present two novel push policies based on targeting free space and diffusing clusters, and compare them to three earlier policies using four metrics. We evaluate these in simulation using Bullet Physics on a dataset of over 1,000 synthetic pushing scenarios. Pushing outcomes are evaluated by comparing the quality of the best available grasp action before and after each push using analytic grasp metrics. Experiments conducted on scenarios in which Dex-Net could not successfully grasp objects suggest that pushing can increase the probability of executing a successful grasp by more than 15%. Furthermore, in cases where grasp quality can be improved, the new policies outperform a quasi-random baseline by nearly 2 times. In physical experiments on an ABB YuMi, the highest performing push policy increases grasp quality by 24%.
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