Leveraging symmetries in pick and place

Haojie Huang, Dian Wang, Arsh Tangri, Robin Walters, Robert Platt
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Abstract

Robotic pick and place tasks are symmetric under translations and rotations of both the object to be picked and the desired place pose. For example, if the pick object is rotated or translated, then the optimal pick action should also rotate or translate. The same is true for the place pose; if the desired place pose changes, then the place action should also transform accordingly. A recently proposed pick and place framework known as Transporter Net (Zeng, Florence, Tompson, Welker, Chien, Attarian, Armstrong, Krasin, Duong, Sindhwani et al., 2021) captures some of these symmetries, but not all. This paper analytically studies the symmetries present in planar robotic pick and place and proposes a method of incorporating equivariant neural models into Transporter Net in a way that captures all symmetries. The new model, which we call Equivariant Transporter Net, is equivariant to both pick and place symmetries and can immediately generalize pick and place knowledge to different pick and place poses. We evaluate the new model empirically and show that it is much more sample-efficient than the non-symmetric version, resulting in a system that can imitate demonstrated pick and place behavior using very few human demonstrations on a variety of imitation learning tasks.
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利用采摘和放置的对称性
机器人拾取和放置任务在待拾取物体和所需放置姿势的平移和旋转下是对称的。例如,如果拾取对象旋转或平移,那么最佳拾取动作也应旋转或平移。摆放姿势也是如此;如果所需的摆放姿势发生了变化,那么摆放动作也应进行相应的变换。最近提出的一种名为 Transporter Net 的取放框架(Zeng、Florence、Tompson、Welker、Chien、Attarian、Armstrong、Krasin、Duong、Sindhwani 等人,2021 年)捕捉到了其中的一些对称性,但并非全部。本文分析研究了平面机器人拾放中存在的对称性,并提出了一种将等变神经模型纳入 Transporter Net 的方法,这种方法能捕捉到所有对称性。我们称之为等变传输网的新模型对取放对称性都具有等变性,并能立即将取放知识推广到不同的取放姿势。我们对新模型进行了实证评估,结果表明它比非对称性版本更节省样本,因此在各种模仿学习任务中,只需极少的人类示范,系统就能模仿出已演示过的拾放行为。
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