Automated generation of road marking maps from street-level panoramic images
Abstract
Accurate maps of road markings are useful for many applications, such as road maintenance, improving navigation, and prediction of upcoming road situations within autonomously driving vehicles. This paper introduces a generic... [ view full abstract ]
Accurate maps of road markings are useful for many applications, such as road maintenance, improving navigation, and prediction of upcoming road situations within autonomously driving vehicles. This paper introduces a generic and learning-based system for the recognition of road markings from street-level panoramic images. This system starts with an Inverse Perspective Mapping, followed by segmentation to retrieve road marking candidates. The contours of all found segments are classified, after which a Markov Random Field is applied to adjust the resulting probabilities based on the surrounding context. Finally, the spatial placement of the found individual markings (e.g. shark teeth) is analyzed to retrieve the traffic situations (e.g. priority situations). This system is evaluated for priority, block, striped lines and pedestrian crossing markings, and is able to recognize 80-95% of the individual markings, and about 90% of the occurring situations (e.g. pedestrian crossings).
Authors
-
Thomas Woudsma
(Eindhoven University of Technology)
-
Lykele Hazelhoff
(CycloMedia Technology BV)
-
Peter H.N. de With
(Eindhoven University of Technology)
-
Ivo Creusen
(CycloMedia Technology BV)
Topic Areas
Automated Vehicle Operation, Motion Planning, Navigation , Data Management and Geographic Information Systems , Data Mining and Data Analysis , Driver Assistance Systems , Sensing, Vision, and Perception , Travel Information, Guidance and Demand Management , Positioning , Road Traffic Management
Session
We-B9 » Special Session - Computer Vision and Imaging Systems in Transportation II (13:40 - Wednesday, 16th September, San Borondón B1)