DeepRoadMapper: Extracting Road Topology from Aerial Images
University of Toronto · Advanced Technologies Group (United States)
Abstract
Creating road maps is essential for applications such as autonomous driving and city planning. Most approaches in industry focus on leveraging expensive sensors mounted on top of a fleet of cars. This results in very accurate estimates when exploiting a user in the loop. However, these solutions are very expensive and have small coverage. In contrast, in this paper we propose an approach that directly estimates road topology from aerial images. This provides us with an affordable solution with large coverage. Towards this goal, we take advantage of the latest developments in deep learning to have an initial segmentation of the aerial images. We then propose an algorithm that reasons about missing connections…
Citation impact
- FWCI
- 35.75
- Percentile
- 100%
- References
- 36
Authors
3Topics & keywords
- Computer science
- Segmentation
- Focus (optics)
- Motion planning
- Topology (electrical circuits)
- Aerial image
- Artificial intelligence
- Shortest path problem
- Sustainable cities and communities