Posterior Cramér-Rao Lower Bounds for Extended Target Tracking with PMBM
Conjugate Recursion
Abstract
In this letter, we consider the posterior Cramér-Rao lower bounds
(PCRLB) problem for extended target tracking (ETT) from a stack of
measurement data that are modeled as random variables in the random
finite sets (RFS) framework. We convert the scalars in the traditional
PCRLB into vectors based on RFS to derive a theoretical lower bound. In
this way, the proposed method can be applied to the multi-target
tracking problem and accommodates scenarios with targets of varying.
Moreover, we consider solving the data association problem from four
parts caused by the conjugate update of the Poisson multi-Bernoulli
mixture (PMBM) filter. Simulation results are presented to verify the
effectiveness of the derived PCRLB.