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.
翻译:在本文中,我们将横向获取机械搜索问题扩大到堆叠物品的架子,并引入两种新颖的政策 -- -- 堆叠景点分布区减少和堆叠景点蒙特卡洛树搜索 -- -- 使用稀释和重新包装行动。 MCTSS通过考虑每个潜在行动之后的未来状态,改进了先前的外观政策。在1200个模拟和18个物理试验中,用配有刀片和抽吸杯的提取机器人进行了实验,这表明,拆卸和重新包装行动可以揭示目标目标,模拟成功82-100%,物理实验成功66-100%,对于搜索密包装的架子至关重要。在模拟实验中,政策都超越了基线,实现了类似的成功率,但采取了更多的步骤,与具有完整状态信息的甲板政策相比。在模拟和物理试验中,DARSS超越了装有刀片和抽吸杯的提取机器人。DARSS在MTSS的外演练中,在物理感官感知度上显示成功率。