Title :
“Statistics 102” for Multisource-Multitarget Detection and Tracking
Author_Institution :
Lockheed Martin Adv. Technol. Labs., Eagan, MN, USA
Abstract :
This tutorial paper summarizes the motivations, concepts and techniques of finite-set statistics (FISST), a system-level, “top-down,” direct generalization of ordinary single-sensor, single-target engineering statistics to the realm of multisensor, multitarget detection and tracking. Finite-set statistics provides powerful new conceptual and computational methods for dealing with multisensor-multitarget detection and tracking problems. The paper describes how “multitarget integro-differential calculus” is used to extend conventional single-sensor, single-target formal Bayesian motion and measurement modeling to general tracking problems. Given such models, the paper describes the Bayes-optimal approach to multisensor-multitarget detection and tracking: the multisensor-multitarget recursive Bayes filter. Finally, it describes how multitarget calculus is used to derive principled statistical approximations of this optimal filter, such as PHD filters, CPHD filters, and multi-Bernoulli filters.
Keywords :
Bayes methods; filtering theory; integro-differential equations; object detection; object tracking; sensor fusion; statistical analysis; Bayes-optimal approach; CPHD filters; FISST techniques; PHD filters; finite-set statistics technique; measurement modeling; multiBernoulli filters; multisensor-multitarget detection problem; multisensor-multitarget recursive Bayes filter; multisource-multitarget detection; multisource-multitarget tracking problem; multitarget integro-differential calculus; optimal filter; principled statistical approximations; single-sensor single-target formal Bayesian motion; single-target engineering statistics; statistics 102; Data integration; Object detection; Statistics; Target tracking; Data fusion; FISST; finite-set statistics; multitarget detection; multitarget tracking; random sets;
Journal_Title :
Selected Topics in Signal Processing, IEEE Journal of
DOI :
10.1109/JSTSP.2013.2253084