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Using probabilistic movement primitives in robotics

journal contribution
posted on 2023-10-29, 11:56 authored by Alexandros Paraschos, Christian Daniel, Jan Peters, Gerhard Neumann
<p>Movement Primitives are a well-established paradigm for modular movement representation and generation. They provide a data-driven representation of movements and support generalization to novel situations, temporal modulation, sequencing of primitives and controllers for executing the primitive on physical systems. However, while many MP frameworks exhibit some of these properties, there is a need for a unified framework that implements all of them in a principled way. In this paper, we show that this goal can be achieved by using a probabilistic representation. Our approach models trajectory distributions learned from stochastic movements. Probabilistic operations, such as conditioning can be used to achieve generalization to novel situations or to combine and blend movements in a principled way. We derive a stochastic feedback controller that reproduces the encoded variability of themovement and the coupling of the degrees of freedom of the robot. We evaluate and compare our approach on several simulated and real robot scenarios.</p>

History

School affiliated with

  • School of Computer Science (Research Outputs)

Publication Title

Autonomous Robots

Volume

42

Issue

3

Pages/Article Number

529-551

Publisher

Springer Verlag

ISSN

0929-5593

eISSN

1573-7527

Date Submitted

2017-07-18

Date Accepted

2017-06-23

Date of First Publication

2017-07-15

Date of Final Publication

2018-03-30

Date Document First Uploaded

2017-07-17

ePrints ID

27883

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