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@inproceedings{scannellTrajectory2021,
title = {Trajectory {Optimisation} in {Learned} {Multimodal}
{Dynamical} {Systems} {Via} {Latent}-{ODE} {Collocation}},
abstract = {This paper presents a two-stage method to perform
trajectory optimisation in multimodal dynamical systems with
unknown nonlinear stochastic transition dynamics. The method
finds trajectories that remain in a preferred dynamics mode
where possible and in regions of the transition dynamics model
that have been observed and can be predicted confidently. The
first stage leverages a Mixture of Gaussian Process Experts
method to learn a predictive dynamics model from historical
data. Importantly, this model learns a gating function that
indicates the probability of being in a particular dynamics
mode at a given state location. This gating function acts as a
coordinate map for a latent Riemannian manifold on which
shortest trajectories are solutions to our trajectory
optimisation problem. Based on this intuition, the second
stage formulates a geometric cost function, which it then
implicitly minimises by projecting the trajectory optimisation
onto the second-order geodesic ODE; a classic result of
Riemannian geometry. A set of collocation constraints are
derived that ensure trajectories are solutions to this ODE,
implicitly solving the trajectory optimisation problem.},
booktitle = {Proceedings of the {IEEE} {International} {Conference} on
{Robotics} and {Automation}},
publisher = {IEEE},
author = {Aidan Scannell and Carl Henrik Ek and Arthur Richards},
year = {June 2021},
}