Sample Efficient Grasp Learning Using Equivariant Models
Xupeng Zhu, Dian Wang, Ondřej Bíža, Guanang Su, Robin Walters, Robert W. Platt
Abstract
In planar grasp detection, the goal is to learn a function from an image of a scene onto a set of feasible grasp poses in SE(2). In this paper, we recognize that the optimal grasp function is SE(2)-equivariant and can be modeled using an equivariant convolutional neural network. As a result, we are able to significantly improve the sample efficiency of grasp learning, obtaining a good approximation of the grasp function after only 600 grasp attempts. This is few enough that we can learn to grasp completely on a physical robot in about 1.5 hours. Code is available at https://github.com/ZXP-S-works/ SE2-equivariant-grasp-learning.
Topics & Concepts
GRASPComputer scienceSample (material)Equivariant mapArtificial intelligenceMathematicsProgramming languageChromatographyChemistryPure mathematicsFace and Expression RecognitionMachine Learning and AlgorithmsReinforcement Learning in Robotics