Title
Trajectory prediction of a lane changing vehicle based on driver behavior estimation and classification
Abstract
Accurate trajectory prediction of a lane changing vehicle is a key issue for risk assessment and early danger warning in advanced driver assistance systems(ADAS). This paper proposes a trajectory prediction approach for a lane changing vehicle considering high-level driver status. A driving behavior estimation and classification model is developed based on Hidden Markov Models(HMMs). The lane change behavior is estimated by observing the vehicle state emissions in the beginning stage of a lane change procedure, and then classified by the classifier before the vehicle crosses the lane mark. Furthermore, the future trajectory of the lane changing vehicle is predicted in a statistical way combining the driver status estimated by the classifier. The classifier is trained and tested using naturalistic driving data, which shows satisfactory performance in classifying driver status. The trajectory prediction method generates different trajectories based on the classification results, which is important for the design of both autonomous driving controller and early danger warning systems.
Year
DOI
Venue
2014
10.1109/ITSC.2014.6957810
ITSC
Keywords
Field
DocType
control engineering computing,driver information systems,hidden markov models,risk management,road safety,road traffic control,trajectory control,adas,hmm,advanced driver assistance systems,autonomous driving controller,driver behavior classification,driver behavior estimation,driver status,early danger warning,early danger warning systems,high-level driver status,lane change procedure,lane changing vehicle,naturalistic driving data,risk assessment,statistical way,trajectory prediction,vehicle state emissions,markov processes,behavior
Warning system,Computer vision,Control theory,Markov process,Simulation,Advanced driver assistance systems,Artificial intelligence,Engineering,Trajectory control,Hidden Markov model,Classifier (linguistics),Trajectory
Conference
Citations 
PageRank 
References 
6
0.57
8
Authors
3
Name
Order
Citations
PageRank
Peng Liu1192.24
Arda Kurt2181.65
Ümit Özgüner31014166.59