English

Learning Task-Agnostic Action Spaces for Movement Optimization

Machine Learning 2021-07-26 v2 Robotics Systems and Control Systems and Control Machine Learning

Abstract

We propose a novel method for exploring the dynamics of physically based animated characters, and learning a task-agnostic action space that makes movement optimization easier. Like several previous papers, we parameterize actions as target states, and learn a short-horizon goal-conditioned low-level control policy that drives the agent's state towards the targets. Our novel contribution is that with our exploration data, we are able to learn the low-level policy in a generic manner and without any reference movement data. Trained once for each agent or simulation environment, the policy improves the efficiency of optimizing both trajectories and high-level policies across multiple tasks and optimization algorithms. We also contribute novel visualizations that show how using target states as actions makes optimized trajectories more robust to disturbances; this manifests as wider optima that are easy to find. Due to its simplicity and generality, our proposed approach should provide a building block that can improve a large variety of movement optimization methods and applications.

Keywords

Cite

@article{arxiv.2009.10337,
  title  = {Learning Task-Agnostic Action Spaces for Movement Optimization},
  author = {Amin Babadi and Michiel van de Panne and C. Karen Liu and Perttu Hämäläinen},
  journal= {arXiv preprint arXiv:2009.10337},
  year   = {2021}
}

Comments

Accepted as a regular paper by IEEE Transactions on Visualization and Computer Graphics (TVCG) in July 2021

R2 v1 2026-06-23T18:42:35.499Z