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Probabilistic movement primitives for coordination of multiple human–robot collaborative tasks

Version 2 2024-03-12, 14:59
Version 1 2024-03-01, 09:59
journal contribution
posted on 2024-03-12, 14:59 authored by G. J. Maeda, Gerhard Neumann, M. Ewerton, R. Lioutikov, O. Kroemer, J. Peters
<p>This paper proposes an interaction learning method for collaborative and assistive robots based on movement primitives. The method allows for both action recognition and human–robot movement coordination. It uses imitation learning to construct a mixture model of human–robot interaction primitives. This probabilistic model allows the assistive trajectory of the robot to be inferred from human observations. The method is scalable in relation to the number of tasks and can learn nonlinear correlations between the trajectories that describe the human–robot interaction. We evaluated the method experimentally with a lightweight robot arm in a variety of assistive scenarios, including the coordinated handover of a bottle to a human, and the collaborative assembly of a toolbox. Potential applications of the method are personal caregiver robots, control of intelligent prosthetic devices, and robot coworkers in factories.</p>

Funding

Forum fr interdisziplinre Forschung (FiF) of the TU Darmstadt BIMROB

FP7-ICT-2013-10 #610878 (3rdHand)

Horizon 2020 #645582 (RoMaNS)

History

School affiliated with

  • School of Computer Science (Research Outputs)

Publication Title

Autonomous Robots

Volume

41

Issue

3

Pages/Article Number

593-612

Publisher

Springer

ISSN

0929-5593

Date Submitted

2017-01-17

Date Accepted

2016-02-10

Date of First Publication

2016-03-10

Date of Final Publication

2017-03-01

Date Document First Uploaded

2017-01-13

ePrints ID

25744

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