Abstract :
The multitarget recursive Bayes nonlinear filter is the theoretically optimal approach to multisensor-multitarget detection, tracking, and identification. For applications in which this filter is appropriate, it is likely to be tractable for only a small number of targets. In earlier papers we derived closed-form equations for an approximation of this filter based on propagation of a first-order multitarget moment called the probability hypothesis density (PHD). In a recent paper, Erdinc, Willett, and Bar-Shalom argued for the need for a PHD-type filter which remains first-order in the states of individual targets, but which is higher-order in target number. In this paper we show that this is indeed possible. We derive a closed-form cardinalized PHD (CPHD) filter, which propagates not only the PHD but also the entire probability distribution on target number.
Keywords :
filtering theory; nonlinear filters; probability; recursive filters; sensor fusion; target tracking; closed-form cardinalized filter; closed-form equations; first-order multitarget moment; multisensor-multitarget detection; multitarget identification; multitarget recursive Bayes nonlinear filter; multitarget tracking; probability distribution; probability hypothesis density filters; Electronic mail; Filtering; Integral equations; Kalman filters; Nonlinear equations; Nonlinear filters; Poisson equations; Probability distribution; State-space methods; Target tracking;