具有有效堆放和拆卸物品的货架上的机械搜索

Huang Huang, Letian Fu, Michael Danielczuk, C. Kim, Zachary Tam, Jeffrey Ichnowski, A. Angelova, Brian Ichter, Ken Goldberg
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引用次数: 6

摘要

堆垛提高了货架的存储效率,但缺乏可见性和可及性使得机器人的机械搜索问题难以显示和提取目标物体。在本文中,我们将横向存取的机械搜索问题扩展到有堆叠物品的货架上,并引入了两种新的策略——基于堆叠场景的分布面积缩减(DARSS)和基于堆叠场景的蒙特卡罗树搜索(MCTSSS)——这两种策略使用了卸载和再堆叠动作。MCTSSS通过考虑每个潜在动作之后的未来状态来改进先前的前瞻性策略。在1200次模拟实验和18次物理实验中,Fetch机器人配备了叶片和吸盘,实验表明,拆装和再装动作可以显示目标物体,模拟成功率为82—100%,物理实验成功率为66—100%,对于搜索密集的货架至关重要。在模拟实验中,这两种策略都优于基线并获得相似的成功率,但与具有完整状态信息的oracle策略相比,需要采取更多步骤。在模拟和物理实验中,DARSS在揭示目标的中位数步数上优于MCTSSS,但MCTSSS在物理实验中成功率更高,表明了对感知噪声的鲁棒性。参见https://sites.google.com/berkeley.edu/stax-ray获取补充资料。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mechanical Search on Shelves with Efficient Stacking and Destacking of Objects
Stacking increases storage efficiency in shelves, but the lack of visibility and accessibility makes the mechanical search problem of revealing and extracting target objects difficult for robots. In this paper, we extend the lateral-access mechanical search problem to shelves with stacked items and introduce two novel policies -- Distribution Area Reduction for Stacked Scenes (DARSS) and Monte Carlo Tree Search for Stacked Scenes (MCTSSS) -- that use destacking and restacking actions. MCTSSS improves on prior lookahead policies by considering future states after each potential action. Experiments in 1200 simulated and 18 physical trials with a Fetch robot equipped with a blade and suction cup suggest that destacking and restacking actions can reveal the target object with 82--100% success in simulation and 66--100% in physical experiments, and are critical for searching densely packed shelves. In the simulation experiments, both policies outperform a baseline and achieve similar success rates but take more steps compared with an oracle policy that has full state information. In simulation and physical experiments, DARSS outperforms MCTSSS in median number of steps to reveal the target, but MCTSSS has a higher success rate in physical experiments, suggesting robustness to perception noise. See https://sites.google.com/berkeley.edu/stax-ray for supplementary material.
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