Title
Object-Oriented Bayesian Networks for Detection of Lane Change Maneuvers
Abstract
This article introduces a novel approach towards the recognition of typical driving maneuvers in structured highway scenarios and shows some key benefits of traffic scene modeling with object-oriented Bayesian networks (OOBNs). The approach exploits the advantages of an introduced lane-related coordinate system together with individual occupancy schedule grids for all modeled vehicles. This combination allows an efficient classification of the existing vehicle-lane and vehicle- vehicle relations in traffic scenes and thus substantially improves the understanding of complex traffic scenes. Probabilities and variances within the network are propagated systematically which results in probabilistic sets of the modeled driving maneuvers. Using this generic approach, the network is able to classify a total of 27 driving maneuvers including merging and object following.
Year
DOI
Venue
2012
10.1109/MITS.2012.2203229
Intelligent Transportation Systems Magazine, IEEE
Keywords
Field
DocType
bayesian networks,probabilistic logic,bayes theorem,bayesian methods,modeling,object oriented programming
Coordinate system,Object-oriented programming,Simulation,Transport engineering,Exploit,Bayesian network,Engineering,Probabilistic logic,Object oriented bayesian networks,Bayesian probability,Bayes' theorem
Journal
Volume
Issue
ISSN
4
3
1939-1390
Citations 
PageRank 
References 
32
1.46
3
Authors
7
Name
Order
Citations
PageRank
dietmar kasper1472.30
galia weidl2321.46
Thao Dang3483.49
Breuel, G.4341.87
Andreas Tamke5392.75
Andreas Wedel654525.57
Wolfgang Rosenstiel71462212.32