Paper Number: 191
Date: Tuesday, 11 July 2006
Time:
Duration: 20 minutes
Session: Nonlinear Filtering I
Location: Bargello
Closed-form Posterior Cram'er-Rao Bound for a Manoeuvring Target in the Bearings-Only Tracking Context Using Best-Fitting Gaussian Distribution
Thomas Brehard
Jean-Pierre Le Cadre
Abstract: In this paper, we investigate
the problem of the computation of the Posterior Cramér-Rao Bound
(PCRB) in the context of Bearings-Only Tracking (BOT) for a
manoeuvering target. The PCRB provides a lower bound on the mean
square error. In a recent paper, Hernandez et al have proposed a new
approach named Best-Fitting Gaussian (BFG) model to calculate the
bound for Jump Markov Linear filtering problems with a linear
measurement equation. Thanks to the linear property of the
measurement equation, an exact formula for the PCRB associated to
the BFG model can be obtained via a classical Riccati-like
recursion. However, in the BOT framework, the measurement equation
is non linear so that we do not have a closed-form formula.
Consequently, the BFG-PCRB must be approximated using Monte-Carlo
methods. This implies a high computational burden. We show in this
paper that the BFG model associated to the BOT problem can be
computed exactly using another coordinate system named Log Polar
Coordinate (LPC) system.