DocumentCode :
3220918
Title :
A performance bound for maneuvering target tracking using best-fitting Gaussian distributions
Author :
Hernandez, Marcel L. ; Ristic, Branko ; Farina, Alfonso
Author_Institution :
Malvern Technol. Centre, QinetiQ Ltd., Malvern, UK
Volume :
1
fYear :
2005
fDate :
25-28 July 2005
Abstract :
In this paper, we consider the problem of calculating the posterior Cramer-Rao lower bound (PCRLB) in the case of tracking a maneuvering target. In a recent article (A. Bessel, et al., 2003) the authors calculated the PCRLB conditional on the maneuver sequence and then determined the bound as a weighted average, giving an unconditional PCRLB (referred to herein as the Enumer-PCRLB). However, we argue that this approach can produce an optimistic lower bound because the sequence of maneuvers is implicitly assumed known. Indeed, in simulations we show that in tracking a target that can switch between a nearly constant-velocity (NCV) model and a coordinated turn (CT) model, the Enumer-PCRLB can be lower than the PCRLB in the case of tracking a target whose motion is governed purely by the NCV model. Motivated by this, in this paper we develop a general approach to calculating the maneuvering target PCRLB based on utilizing best-fitting Gaussian distributions. The basis of the technique is, at each stage, to approximate the multi-modal prior target probability density function using a best-fitting Gaussian distribution. We present a recursive formula for calculating the mean and covariance of this Gaussian distribution, and demonstrate how the covariance increases as a result of the potential maneuvers. We are then able to calculate the PCRLB using a standard Riccati-like recursion. Returning to our previous example, we show that this best-fitting Gaussian approach gives a bound that shows the correct qualitative behavior, namely that the bound is greater when the target can maneuver. Moreover, for simulated scenarios taken from (A. Bessel, et al., 2003), we show that the best-fitting Gaussian PCRLB is both greater than the existing bound (the Enumer-PCRLB) and more consistent with the performance of the variable structure interacting multiple model (VS-IMM) tracker utilized therein.
Keywords :
Gaussian distribution; Riccati equations; probability; radar tracking; recursive estimation; target tracking; variable structure systems; NCV; PCRLB; VS-IMM; best-fitting Gaussian distribution; coordinated turn model; multimodal prior target; nearly constant-velocity model; performance bound; posterior Cramer-Rao lower bound; probability density function; sequence maneuvering; standard Riccati-like recursion; target tracking; variable structure interacting multiple model; Acceleration; Australia; Filters; Gaussian approximation; Gaussian distribution; Probability density function; Radar tracking; Riccati equations; Switches; Target tracking; Posterior Cramér-Rao lower bound; best fitting Gaussian approximation; constant acceleration; coordinated turn; manoeuvring target tracking; nearly constant velocity; variable structure interacting multiple model filter;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Information Fusion, 2005 8th International Conference on
Print_ISBN :
0-7803-9286-8
Type :
conf
DOI :
10.1109/ICIF.2005.1591829
Filename :
1591829
Link To Document :
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