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RLAfford: End-to-End Affordance Learning for Robotic Manipulation

Yiran Geng, Boshi An, Haoran Geng, Yuanpei Chen, Yaodong Yang, Hao Dong

202352 citationsDOI

Abstract

Learning to manipulate 3D objects in an interactive environment has been a challenging problem in Reinforcement Learning (RL). In particular, it is hard to train a policy that can generalize over objects with different semantic categories, diverse shape geometry and versatile functionality. In this study, we focused on the contact information in manipulation processes, and proposed a unified representation for critical interactions to describe different kinds of manipulation tasks. Specifically, we take advantage of the contact information generated during the RL training process and employ it as unified visual representation to predict contact map of interest. Such representation leads to an end-to-end learning framework that combined affordance based and RL based methods for the first time. Our unified framework can generalize over different types of manipulation tasks. Surprisingly, the effectiveness of such framework holds even under the multi-stage and multi-agent scenarios. We tested our method on eight types of manipulation tasks. Results showed that our methods outperform baseline algorithms, including visual affordance methods and RL methods, by a large margin on the success rate. The demonstration can be found at https://sites.google.com/view/rlafford/.

Topics & Concepts

AffordanceComputer scienceRepresentation (politics)Reinforcement learningMargin (machine learning)Process (computing)Artificial intelligenceHuman–computer interactionRobotMachine learningProgramming languageLawPoliticsPolitical scienceRobot Manipulation and LearningReinforcement Learning in RoboticsMultimodal Machine Learning Applications
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