DocumentCode :
679327
Title :
Learning context sensitive behavior models from observations for predicting traffic situations
Author :
Gindele, Tobias ; Brechtel, Sebastian ; Dillmann, Rudiger
Author_Institution :
Humanoids & Intell. Syst. Labs., Karlsruhe Inst. of Technol., Karlsruhe, Germany
fYear :
2013
fDate :
6-9 Oct. 2013
Firstpage :
1764
Lastpage :
1771
Abstract :
Estimating and predicting traffic situations over time is an essential capability for sophisticated driver assistance systems or autonomous driving. When longer prediction horizons are needed, e.g., in decision making or motion planning, the uncertainty induced by incomplete environment perception and stochastic situation development over time cannot be neglected without sacrificing robustness and safety. Especially describing the unknown behavior of other traffic participants poses a complex problem. Building consistent probabilistic models of their manifold and changing interactions with the environment, the road network and other traffic participants by hand is error-prone. Further, the results could hardly cover the complete diversity of human behaviors. This paper presents an approach for learning continuous, non-linear, context dependent process models for the behavior of traffic participants from unlabeled observations. The resulting models are naturally embedded into a Dynamic Bayesian Network (DBN) that enables the prediction and estimation of traffic situations based on noisy and incomplete measurements. Using a hybrid state representation it combines discrete and continuous quantities in a mathematically sound way. Experiments show a significant improvement in estimation and prediction accuracy by the learned context dependent models over standard models, which only consider vehicle dynamics.
Keywords :
Bayes methods; behavioural sciences computing; belief networks; driver information systems; learning (artificial intelligence); road traffic; DBN; autonomous driving; continuous nonlinear context dependent process model learning; dynamic Bayesian network; hybrid state representation; probabilistic models; road network; sophisticated driver assistance systems; traffic participants; traffic participants behavior; traffic situation estimation; traffic situation prediction; vehicle dynamics; Atmospheric measurements; Bayes methods; Context; Particle measurements; Predictive models; Roads; Vehicles;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Intelligent Transportation Systems - (ITSC), 2013 16th International IEEE Conference on
Conference_Location :
The Hague
Type :
conf
DOI :
10.1109/ITSC.2013.6728484
Filename :
6728484
Link To Document :
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