Simultaneous Learning of Contact and Continuous Dynamics
Abstract
Robotic manipulation can greatly benefit from the data efficiency, robustness, and predictability of model-based methods if robots can quickly generate models of novel objects they encounter. This is especially difficult when effects like complex joint friction lack clear first-principles models and are usually ignored by physics simulators. Further, numerically-stiff contact dynamics can make common model-building approaches struggle. We propose a method to simultaneously learn contact and continuous dynamics of a novel, possibly multi-link object by observing its motion through contact-rich trajectories. We formulate a system identification process with a loss that infers unmeasured contact forces, penalizing their violation of physical constraints and laws of motion given current model parameters. Our loss is unlike prediction-based losses used in differentiable simulation. Using a new dataset of real articulated object trajectories and an existing cube toss dataset, our method outperforms differentiable simulation and end-to-end alternatives with more data efficiency. See our project page for code, datasets, and media: https://sites.google.com/view/continuous-contact-nets/home
Cite
Text
Bianchini et al. "Simultaneous Learning of Contact and Continuous Dynamics." Conference on Robot Learning, 2023.Markdown
[Bianchini et al. "Simultaneous Learning of Contact and Continuous Dynamics." Conference on Robot Learning, 2023.](https://mlanthology.org/corl/2023/bianchini2023corl-simultaneous/)BibTeX
@inproceedings{bianchini2023corl-simultaneous,
title = {{Simultaneous Learning of Contact and Continuous Dynamics}},
author = {Bianchini, Bibit and Halm, Mathew and Posa, Michael},
booktitle = {Conference on Robot Learning},
year = {2023},
pages = {3966-3978},
volume = {229},
url = {https://mlanthology.org/corl/2023/bianchini2023corl-simultaneous/}
}