Back close

Multiple Model Filtering for Vehicle Trajectory Tracking with Adaptive Noise Covariances

Publication Type : Conference Proceedings

Publisher : Intelligent Computing, Information and Control Systems, Springer International Publishing,

Source : Intelligent Computing, Information and Control Systems, Springer International Publishing, Cham, p.557-565 (2020)

ISBN : 9783030304652

Campus : Bengaluru

School : School of Engineering

Department : Electronics and Communication

Year : 2020

Abstract : As the automotive world is moving towards its ultimate aim of fully autonomous vehicles, predicting the trajectories itself and that of the neighboring vehicles is essential for each vehicle. This paper proposes a novel filtering method for predicting the path of an ego vehicle (i.e., a vehicle of interest) using measurements by a Global Positioning System (GPS) device and combining such measurements with multiple candidate kinematic motion models. The proposed Multiple Model filtering method adapts to the noise conditions as inferred by measurements. It is shown that the proposed adaptive method provides a considerable level of improvement compared to the existing non-adaptive multiple model filtering.

Cite this Research Publication : M. Nithin and Manoj Kumar Panda, “Multiple Model Filtering for Vehicle Trajectory Tracking with Adaptive Noise Covariances”, Intelligent Computing, Information and Control Systems. Springer International Publishing, Cham, pp. 557-565, 2020.

Admissions Apply Now