How Does It Feel? Self-Supervised Costmap Learning for Off-Road Vehicle Traversability
Abstract
Estimating terrain traversability in off-road environments requires reasoning about complex interaction dynamics between the robot and these terrains. However, it is challenging to create informative labels to learn a model in a supervised manner for these interactions. We propose a method that learns to predict traversability costmaps by combining exteroceptive environmental information with proprioceptive terrain interaction feedback in a self-supervised manner. Additionally, we propose a novel way of incorporating robot velocity into the costmap prediction pipeline. We validate our method in multiple short and large-scale navigation tasks on challenging off-road terrains using two different large, all-terrain robots. Our short-scale navigation results show that using our learned costmaps leads to overall smoother navigation, and provides the robot with a more fine-grained understanding of the robot-terrain interactions. Our large-scale navigation trials show that we can reduce the number of interventions by up to 57% compared to an occupancy-based navigation baseline in challenging off-road courses ranging from 400 m to 3150 m. Appendix and full experiment videos can be found in our website: https://mateoguaman.github.io/hdif.
BibTeX
@conference{Guaman Castro-2023-137559,author = {Mateo Guaman Castro and Samuel Triest and Wenshan Wang and Jason M. Gregory and Felix Sanchez and John G. Rogers III and Sebastian Scherer},
title = {How Does It Feel? Self-Supervised Costmap Learning for Off-Road Vehicle Traversability},
booktitle = {Proceedings of (ICRA) International Conference on Robotics and Automation},
year = {2023},
month = {May},
keywords = {Robot Learning, Field Robotics, Traversability, Self-Supervised, Cross-Modal, Navigation, Off-Road, Costmap, Learning},
}