Independent Joint Learning: A Novel Task-to-Task Transfer Learning Scheme for Robot Models

Authors
Um, TaewoongPark, Jung-MinPark, Myoung Soo
Issue Date
2014-05
Publisher
IEEE
Citation
IEEE International Conference on Robotics and Automation (ICRA), pp.5679 - 5684
Abstract
In the past decade, model learning techniques have provided appealing approaches for determining the dynamic model of robots from data. These techniques strongly capture the complicated effects of robot dynamics, which are often neglected in hand-crafted dynamic models. However, unlike robust performance shown in trained tasks, learned models do not exhibit a reliable performance in new tasks as they are valid only near the domain of the trained tasks. In this paper, we propose an alternative approach for task-to-task transfer learning, called "Independent Joint Learning (IJL)." IJL learns the model for each joint independently rather than the whole body at one time to effectively transfer knowledge between tasks. A comparative simulation study on a 6 DOF PUMA robot demonstrates that our approach outperforms other related approaches when a task different from trained tasks is proposed.
ISSN
1050-4729
URI
https://pubs.kist.re.kr/handle/201004/115361
Appears in Collections:
KIST Conference Paper > 2014
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