Orientation Probabilistic Movement Primitives on Riemannian Manifolds

Research output: Chapter in Book/Report/Conference proceedingConference contribution

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Orientation Probabilistic Movement Primitives on Riemannian Manifolds. / Rozo, Leonel; Dave, Vedant.
Conference on Robot Learning. Vol. 164 5. ed. 2021. p. 373-383.

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Harvard

Rozo, L & Dave, V 2021, Orientation Probabilistic Movement Primitives on Riemannian Manifolds. in Conference on Robot Learning. 5 edn, vol. 164, pp. 373-383.

APA

Rozo, L., & Dave, V. (2021). Orientation Probabilistic Movement Primitives on Riemannian Manifolds. In Conference on Robot Learning (5 ed., Vol. 164, pp. 373-383)

Vancouver

Rozo L, Dave V. Orientation Probabilistic Movement Primitives on Riemannian Manifolds. In Conference on Robot Learning. 5 ed. Vol. 164. 2021. p. 373-383

Author

Rozo, Leonel ; Dave, Vedant. / Orientation Probabilistic Movement Primitives on Riemannian Manifolds. Conference on Robot Learning. Vol. 164 5. ed. 2021. pp. 373-383

Bibtex - Download

@inproceedings{e5f0108634794c269c52b47c043d52be,
title = "Orientation Probabilistic Movement Primitives on Riemannian Manifolds",
abstract = "Learning complex robot motions necessarily demands to have models that are able to encode and retrieve full-pose trajectories when tasks are defined in operational spaces. Probabilistic movement primitives (ProMPs) stand out as a principled approach that models trajectory distributions learned from demonstrations. ProMPs allow for trajectory modulation and blending to achieve better generalization to novel situations. However, when ProMPs are employed in operational space, their original formulation does not directly apply to full-pose movements including rotational trajectories described by quaternions. This paper proposes a Riemannian formulation of ProMPs that enables encoding and retrieving of quaternion trajectories. Our method builds on Riemannian manifold theory, and exploits multilinear geodesic regression for estimating the ProMPs parameters. This novel approach makes ProMPs a suitable model for learning complex full-pose robot motion patterns. Riemannian ProMPs are tested on toy examples to illustrate their workflow, and on real learning-from-demonstration experiments. ",
author = "Leonel Rozo and Vedant Dave",
year = "2021",
month = nov,
day = "8",
language = "English",
volume = "164",
pages = "373--383",
booktitle = "Conference on Robot Learning",
edition = "5",

}

RIS (suitable for import to EndNote) - Download

TY - GEN

T1 - Orientation Probabilistic Movement Primitives on Riemannian Manifolds

AU - Rozo, Leonel

AU - Dave, Vedant

PY - 2021/11/8

Y1 - 2021/11/8

N2 - Learning complex robot motions necessarily demands to have models that are able to encode and retrieve full-pose trajectories when tasks are defined in operational spaces. Probabilistic movement primitives (ProMPs) stand out as a principled approach that models trajectory distributions learned from demonstrations. ProMPs allow for trajectory modulation and blending to achieve better generalization to novel situations. However, when ProMPs are employed in operational space, their original formulation does not directly apply to full-pose movements including rotational trajectories described by quaternions. This paper proposes a Riemannian formulation of ProMPs that enables encoding and retrieving of quaternion trajectories. Our method builds on Riemannian manifold theory, and exploits multilinear geodesic regression for estimating the ProMPs parameters. This novel approach makes ProMPs a suitable model for learning complex full-pose robot motion patterns. Riemannian ProMPs are tested on toy examples to illustrate their workflow, and on real learning-from-demonstration experiments.

AB - Learning complex robot motions necessarily demands to have models that are able to encode and retrieve full-pose trajectories when tasks are defined in operational spaces. Probabilistic movement primitives (ProMPs) stand out as a principled approach that models trajectory distributions learned from demonstrations. ProMPs allow for trajectory modulation and blending to achieve better generalization to novel situations. However, when ProMPs are employed in operational space, their original formulation does not directly apply to full-pose movements including rotational trajectories described by quaternions. This paper proposes a Riemannian formulation of ProMPs that enables encoding and retrieving of quaternion trajectories. Our method builds on Riemannian manifold theory, and exploits multilinear geodesic regression for estimating the ProMPs parameters. This novel approach makes ProMPs a suitable model for learning complex full-pose robot motion patterns. Riemannian ProMPs are tested on toy examples to illustrate their workflow, and on real learning-from-demonstration experiments.

M3 - Conference contribution

VL - 164

SP - 373

EP - 383

BT - Conference on Robot Learning

ER -