DocumentCode :
5392
Title :
Probabilistic and Holistic Prediction of Vehicle States Using Sensor Fusion for Application to Integrated Vehicle Safety Systems
Author :
Beomjun Kim ; Kyongsu Yi
Author_Institution :
Seoul Nat. Univ., Seoul, South Korea
Volume :
15
Issue :
5
fYear :
2014
fDate :
Oct. 2014
Firstpage :
2178
Lastpage :
2190
Abstract :
This paper presents a probabilistic and holistic prediction algorithm for vehicle states using multisensor fushion. Three concerns are mainly considered in this paper, i.e, reliable and reasonable information fusion, extension of predicted states, and real-time evaluation of prediction uncertainties. The main idea of this paper is that a state-prediction problem can be solved as a multistage optimal estimation problem based on the current vehicle motion, a road geometry description in the current body-fixed frame, a path-following behavior model, and the error covariance of each. The prediction algorithm consists of two sequential parts. The first part is estimation, which contains a vehicle filter that estimates the current vehicle states, and a road geometry filter, which approximates the road geometry. The second part is prediction, which consists of a path-following model that generates the future desired yaw rate, which acts as a virtual measurement, and a vehicle predictor, which predicts the future vehicle states by a maximum-likelihood filtering method. The prediction performance of the proposed method has been investigated via vehicle tests. Moreover, its applicability to integrated vehicle safety system (IVSS) has been validated via computer simulation studies. It is shown that the state-prediction performance can be significantly enhanced by the proposed prediction algorithm compared with conventional methods. The enhancement of the prediction performance allows for the improvement of driver assistance functions of an IVSS by providing accurate predictions about the future driving environment.
Keywords :
covariance analysis; digital simulation; driver information systems; maximum likelihood estimation; probability; road safety; road vehicles; sensor fusion; traffic engineering computing; IVSS driver assistance functions; computer simulation; error covariance; integrated vehicle safety systems; maximum-likelihood filtering method; multisensor fusion; multistage optimal estimation problem; path-following behavior model; road geometry approximation; road geometry description; road geometry filter; state-prediction problem; vehicle filter; vehicle motion; vehicle state estimation; vehicle state holistic prediction; vehicle state probabilistic prediction; Acceleration; Estimation; Geometry; Prediction algorithms; Predictive models; Roads; Vehicles; Advanced driver assistance system (ADAS); integrated vehicle safety system (IVSS); multisensor fushion; probabilistic prediction; vehicle state prediction;
fLanguage :
English
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
1524-9050
Type :
jour
DOI :
10.1109/TITS.2014.2312720
Filename :
6815699
Link To Document :
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