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Daniel Meyer-Delius, Jürgen Sturm and Wolfram Burgard
In this paper, we present an approach for learning generalized models
for traffic situations. We formulate the problem using a dynamic
Bayesian network (DBN) from which we learn the characteristic dynamics
of a situation from labeled trajectories using kernel regression. For
a new and unlabeled trajectory, we can then infer the corresponding
situation by evaluating the data likelihood for the individual
situation models. In experiments carried out on laser range data
gathered on a car in real traffic and in simulation, we show that we
can robustly recognize different traffic situations even from
trajectories corresponding to partial situation instances.
@inproceedings{meyer-delius09iros, author = {D. Meyer-Delius and J. Sturm and W. Burgard}, title = {Regression-Based Online Situation Recognition for Vehicular Traffic Scenarios}, booktitle = {Proc.~of the IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)}, address = {St. Louis, USA}, year = 2009 } PDF-File: paper, 499K pdf file |