Learning Visuotactile Estimation and Control for Non-Prehensile Manipulation Under Occlusions

Abstract

Manipulation without grasping, known as non-prehensile manipulation, is essential for dexterous robots in contact-rich environments, but presents many challenges relating with underactuation, hybrid-dynamics, and frictional uncertainty. Additionally, object occlusions in a scenario of contact uncertainty and where the motion of the object evolves independently from the robot becomes a critical problem, which previous literature fails to address. We present a method for learning visuotactile state estimators and uncertainty-aware control policies for non-prehensile manipulation under occlusions, by leveraging diverse interaction data from privileged policies trained in simulation. We formulate the estimator within a Bayesian deep learning framework, to model its uncertainty, and then train uncertainty-aware control policies by incorporating the pre-learned estimator into the reinforcement learning (RL) loop, both of which lead to significantly improved estimator and policy performance. Therefore, unlike prior non-prehensile research that relies on complex external perception set-ups, our method successfully handles occlusions after sim-to-real transfer to robotic hardware with a simple onboard camera.

Cite

Text

Ferrandis et al. "Learning Visuotactile Estimation and Control for Non-Prehensile Manipulation Under Occlusions." Proceedings of The 8th Conference on Robot Learning, 2024.

Markdown

[Ferrandis et al. "Learning Visuotactile Estimation and Control for Non-Prehensile Manipulation Under Occlusions." Proceedings of The 8th Conference on Robot Learning, 2024.](https://mlanthology.org/corl/2024/ferrandis2024corl-learning/)

BibTeX

@inproceedings{ferrandis2024corl-learning,
  title     = {{Learning Visuotactile Estimation and Control for Non-Prehensile Manipulation Under Occlusions}},
  author    = {Ferrandis, Juan Del Aguila and Moura, Joao and Vijayakumar, Sethu},
  booktitle = {Proceedings of The 8th Conference on Robot Learning},
  year      = {2024},
  pages     = {1501-1515},
  volume    = {270},
  url       = {https://mlanthology.org/corl/2024/ferrandis2024corl-learning/}
}