Authors
R Omar Chavez-Garcia, Jérôme Guzzi, Luca M Gambardella, Alessandro Giusti
Publication date
2017
Conference
Advanced Concepts for Intelligent Vision Systems: 18th International Conference, ACIVS 2017, Antwerp, Belgium, September 18-21, 2017, Proceedings 18
Pages
325-336
Publisher
Springer International Publishing
Description
Mobile ground robots operating on uneven terrain must predict which areas of the environment they are able to pass in order to plan feasible paths. We cast traversability estimation as an image classification problem: we build a convolutional neural network that, given a square px image representing the heightmap of a small m patch of terrain, predicts whether the robot will be able to traverse such patch from bottom to top. The classifier is trained for a specific robot model, which may implement any locomotion type (wheeled, tracked, legged, snake-like), using simulation data on a variety of training terrains; once trained, the classifier can be quickly applied to patches extracted from unseen large heightmaps, in multiple orientations, thus building oriented traversability maps. We quantitatively validate the approach on real-elevation datasets.
Total citations
201820192020202120222023213427
Scholar articles
RO Chavez-Garcia, J Guzzi, LM Gambardella, A Giusti - Advanced Concepts for Intelligent Vision Systems: 18th …, 2017