Robots will be expected to manipulate a wide variety of objects in complex and arbitrary ways as they become more widely used in human environments. As such, the rearrangement of objects has been noted to be an important benchmark for AI capabilities in recent years. We propose NeRP (Neural Rearrangement Planning), a deep learning based approach for multi-step neural object rearrangement planning which works with never-before-seen objects, that is trained on simulation data, and generalizes to the real world. We compare NeRP to several naive and model-based baselines, demonstrating that our approach is measurably better and can efficiently arrange unseen objects in fewer steps and with less planning time. Finally, we demonstrate it on several challenging rearrangement problems in the real world.
翻译:机器人预计将以复杂和任意的方式操纵各种物体,因为这些物体在人类环境中日益广泛使用。 因此,人们注意到,物体的重新排列是近年来AI能力的一个重要基准。 我们提议NERP(神经重新布置规划),这是多步神经物体重新布局的深层次学习方法,它与从未见天体一起工作,受过模拟数据培训,并概括到现实世界。我们把NERP与若干天真和基于模型的基线进行比较,表明我们的方法可以更好,并且能够以较少的步骤和较少的规划时间有效地安排看不见物体。最后,我们展示了现实世界中若干具有挑战性的重新布局问题。