Learning Parametric Constraints in High Dimensions from Demonstrations
Abstract
We present a scalable algorithm for learning parametric constraints in high dimensions from safe expert demonstrations. To reduce the ill-posedness of the constraint recovery problem, our method uses hit-and-run sampling to generate lower cost, and thus unsafe, trajectories. Both safe and unsafe trajectories are used to obtain a representation of the unsafe set that is compatible with the data by solving an integer program in that representation’s parameter space. Our method can either leverage a known parameterization or incrementally grow a parameterization while remaining consistent with the data, and we provide theoretical guarantees on the conservativeness of the recovered unsafe set. We evaluate our method on high-dimensional constraints for high-dimensional systems by learning constraints for 7-DOF arm, quadrotor, and planar pushing examples, and show that our method outperforms baseline approaches.
Cite
Text
Chou et al. "Learning Parametric Constraints in High Dimensions from Demonstrations." Conference on Robot Learning, 2019.Markdown
[Chou et al. "Learning Parametric Constraints in High Dimensions from Demonstrations." Conference on Robot Learning, 2019.](https://mlanthology.org/corl/2019/chou2019corl-learning/)BibTeX
@inproceedings{chou2019corl-learning,
title = {{Learning Parametric Constraints in High Dimensions from Demonstrations}},
author = {Chou, Glen and Ozay, Necmiye and Berenson, Dmitry},
booktitle = {Conference on Robot Learning},
year = {2019},
pages = {1211-1230},
volume = {100},
url = {https://mlanthology.org/corl/2019/chou2019corl-learning/}
}