Publication

Gamma Gaussian inverse-Wishart Poisson multi-Bernoulli Filter for Extended Target Tracking

This paper presents a gamma-Gaussian-inverse Wishart (GGIW) implementation of a Poisson multi-Bernoulli mixture (PMBM) filter for multiple extended target tracking. The GGIW density is the single extended target conjugate prior assuming a Poisson distributed number of Gaussian distributed measurements, and the PMBM density is the multi-object conju- gate prior assuming Poisson target measurements, Poisson clutter, and Poisson target birth. Specifically, the Poisson part of the GGIW-PMBM multi-object density represents the distribution of targets that have not yet been detected, and the multi-Bernoulli mixture part of the GGIW-PMBM multi-object density represents the distribution of targets that have been detected at least once. The update and the prediction of the GGIW-PMBM density parameters are given, and the filter is evaluated in a simulation study. The results show that the GGIW-PMBM filter outperforms PHD and CPHD filters for extended target tracking.

Author(s)
Karl Granström, Maryam Fatemi, Lennart Svensson
Research area
Systems for accident prevention and AD
Publication type
Conference paper
Published in
FUSION 2016 - 19th International Conference on Information Fusion, Proceedings p. 893-900. (2016)
Year of publication
2016