Demonstrating Large-Scale Package Manipulation via Learned Metrics of Pick Success

Shuai-Peng Li, Azarakhsh Keipour, Kevin G. Jamieson, Nicolas Hudson, Charles Swan, Kostas E. Bekris
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引用次数: 3

Abstract

Automating warehouse operations can reduce logistics overhead costs, ultimately driving down the final price for consumers, increasing the speed of delivery, and enhancing the resiliency to workforce fluctuations. The past few years have seen increased interest in automating such repeated tasks but mostly in controlled settings. Tasks such as picking objects from unstructured, cluttered piles have only recently become robust enough for large-scale deployment with minimal human intervention. This paper demonstrates a large-scale package manipulation from unstructured piles in Amazon Robotics' Robot Induction (Robin) fleet, which utilizes a pick success predictor trained on real production data. Specifically, the system was trained on over 394K picks. It is used for singulating up to 5 million packages per day and has manipulated over 200 million packages during this paper's evaluation period. The developed learned pick quality measure ranks various pick alternatives in real-time and prioritizes the most promising ones for execution. The pick success predictor aims to estimate from prior experience the success probability of a desired pick by the deployed industrial robotic arms in cluttered scenes containing deformable and rigid objects with partially known properties. It is a shallow machine learning model, which allows us to evaluate which features are most important for the prediction. An online pick ranker leverages the learned success predictor to prioritize the most promising picks for the robotic arm, which are then assessed for collision avoidance. This learned ranking process is demonstrated to overcome the limitations and outperform the performance of manually engineered and heuristic alternatives. To the best of the authors' knowledge, this paper presents the first large-scale deployment of learned pick quality estimation methods in a real production system.
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通过学习采摘成功的度量来演示大规模的包操作
自动化仓库操作可以降低物流间接成本,最终降低消费者的最终价格,提高交付速度,并增强对劳动力波动的弹性。过去几年,人们对这些重复任务的自动化越来越感兴趣,但主要是在受控环境中。从杂乱杂乱的堆中挑选物品等任务直到最近才变得足够强大,可以在最少人为干预的情况下进行大规模部署。本文展示了亚马逊机器人公司的机器人感应(Robin)车队中对非结构化堆的大规模包装操作,该车队利用了经过实际生产数据训练的拣选成功预测器。具体来说,该系统接受了超过394K次选秀的训练。在本文的评估期间,它每天被用来处理多达500万个包裹,并操纵了超过2亿个包裹。开发的学习采摘质量度量对各种采摘方案进行实时排序,并优先考虑最有希望执行的方案。拾取成功预测器的目的是根据先前的经验估计在包含部分已知属性的可变形和刚性物体的混乱场景中部署的工业机械臂的期望拾取的成功概率。这是一个浅层机器学习模型,它允许我们评估哪些特征对预测最重要。在线拾取排序器利用学习到的成功预测器来优先考虑机器人手臂最有希望的拾取,然后对其进行碰撞避免评估。这种学习排序过程被证明克服了局限性,并且优于手动设计和启发式替代方案的性能。据作者所知,本文首次在实际生产系统中大规模部署了学习后的采摘质量估计方法。
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