Learning Riemannian Stable Dynamical Systems via Diffeomorphisms
November 06, 2022 ยท Declared Dead ยท ๐ Conference on Robot Learning
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Authors
Jiechao Zhang, Hadi Beik-Mohammadi, Leonel Rozo
arXiv ID
2211.03169
Category
cs.RO: Robotics
Cross-listed
cs.LG
Citations
24
Venue
Conference on Robot Learning
Last Checked
3 months ago
Abstract
Dexterous and autonomous robots should be capable of executing elaborated dynamical motions skillfully. Learning techniques may be leveraged to build models of such dynamic skills. To accomplish this, the learning model needs to encode a stable vector field that resembles the desired motion dynamics. This is challenging as the robot state does not evolve on a Euclidean space, and therefore the stability guarantees and vector field encoding need to account for the geometry arising from, for example, the orientation representation. To tackle this problem, we propose learning Riemannian stable dynamical systems (RSDS) from demonstrations, allowing us to account for different geometric constraints resulting from the dynamical system state representation. Our approach provides Lyapunov-stability guarantees on Riemannian manifolds that are enforced on the desired motion dynamics via diffeomorphisms built on neural manifold ODEs. We show that our Riemannian approach makes it possible to learn stable dynamical systems displaying complicated vector fields on both illustrative examples and real-world manipulation tasks, where Euclidean approximations fail.
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