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Published in: Intelligent Service Robotics 2/2022

08-01-2022 | Original Research Paper

Object manipulation system based on image-based reinforcement learning

Authors: Sunin Kim, HyunJun Jo, Jae-Bok Song

Published in: Intelligent Service Robotics | Issue 2/2022

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Abstract

Advances in reinforcement learning algorithms allow robots to learn complex tasks such as object manipulation. However, most of these tasks have been implemented only in simulations. In addition, it is difficult to apply reinforcement learning in the real world because of the difficulty in obtaining the state details for the learning process, such as the position of an object, and collecting large amount of data. Moreover, existing reinforcement learning algorithms are designed to learn a single task, so there is a limit to learning multiple tasks. To address these problems, a novel system is proposed in this study for applications to the real world after learning multiple tasks in the simulation. First, a generative model that converts real-world images into simulation images is proposed, so that simulation-to-real-world transfer wherein the learning results from simulation can be applied directly to the real-world scenarios is possible. Additionally, to learn multiple tasks using images, a reinforcement learning algorithm combining variational auto-encoder and asymmetric actor-critic is developed. To verify this system, experiments are conducted in which the algorithms learned in the simulation are applied to the real world to achieve a success rate of 83.8%; this shows that the proposed system can perform multiple manipulation tasks successfully.

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Metadata
Title
Object manipulation system based on image-based reinforcement learning
Authors
Sunin Kim
HyunJun Jo
Jae-Bok Song
Publication date
08-01-2022
Publisher
Springer Berlin Heidelberg
Published in
Intelligent Service Robotics / Issue 2/2022
Print ISSN: 1861-2776
Electronic ISSN: 1861-2784
DOI
https://doi.org/10.1007/s11370-021-00402-6

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