DocumentCode
1759522
Title
Efficient Road Scene Understanding for Intelligent Vehicles Using Compositional Hierarchical Models
Author
Topfer, D. ; Spehr, J. ; Effertz, J. ; Stiller, C.
Author_Institution
Driver Assistance & Integrated Safety Dept., Volkswagen AG, Wolfsburg, Germany
Volume
16
Issue
1
fYear
2015
fDate
Feb. 2015
Firstpage
441
Lastpage
451
Abstract
In this paper, we present a novel compositional hierarchical framework for road scene understanding that allows for reliable estimation of scene topologies, such as the number, location, and width of lanes and the lane topology, i.e., parallel, splitting, or merging. In our approach, lanes and roads are represented in a hierarchical compositional model in which nodes represent parts of roads and edges represent probabilistic constraints between pairs of parts. A key benefit of our approach is the representation of lanes and roads as a set of common parts. This makes our approach applicable to scenes with rich topological diversity, while bringing along the much desired computational efficiency. To cope with the high-dimensional and continuous parameter space of our model and the non-Gaussian image evidence, we perform inference using nonparametric belief propagation. Based on this approximate inference algorithm, we introduce depth-first message passing for lane detection, which performs inference in several sweeps. Empirical results show that depth-first message passing requires significantly lower computation for performance comparable with classical belief propagation.
Keywords
approximation theory; automobiles; belief networks; edge detection; inference mechanisms; intelligent transportation systems; message passing; natural scenes; nonparametric statistics; approximate inference algorithm; compositional hierarchical models; computational efficiency; depth-first message passing; edge detection; empirical analysis; high-dimensional continuous parameter space; intelligent vehicles; lane detection; lane location; lane number; lane representation; lane width; merging lane topology; network edges; network nodes; nonGaussian image evidence; nonparametric belief propagation; parallel lane topology; probabilistic constraints; road parts; road scene understanding; scene topology estimation; splitting lane topology; Feature extraction; Graphical models; Image edge detection; Message passing; Roads; Topology; Visualization; Hierarchical graphical models; multifeature fusion; multilane recognition; nonparametric belief propagation (NBP);
fLanguage
English
Journal_Title
Intelligent Transportation Systems, IEEE Transactions on
Publisher
ieee
ISSN
1524-9050
Type
jour
DOI
10.1109/TITS.2014.2354243
Filename
6915713
Link To Document