Author:
Platt Robert,Kohler Colin,Gualtieri Marcus
Abstract
In applications of deep reinforcement learning to robotics, it is often the case that we want to learn pose invariant policies: policies that are invariant to changes in the position and orientation of objects in the world. For example, consider a pegin-hole insertion task. If the agent learns to insert a peg into one hole, we would like that policy to generalize to holes presented in different poses. Unfortunately, this is a challenge using conventional methods. This paper proposes a novel state and action abstraction that is invariant to pose shifts called deictic image maps that can be used with deep reinforcement learning. We provide broad conditions under which optimal abstract policies are optimal for the underlying system. Finally, we show that the method can help solve challenging robotic manipulation problems.
Publisher
Association for the Advancement of Artificial Intelligence (AAAI)
Cited by
3 articles.
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1. Symmetric Models for Visual Force Policy Learning;2024 IEEE International Conference on Robotics and Automation (ICRA);2024-05-13
2. Visual Foresight with a Local Dynamics Model;Springer Proceedings in Advanced Robotics;2023
3. Multi-Task Learning with Sequence-Conditioned Transporter Networks;2022 International Conference on Robotics and Automation (ICRA);2022-05-23