| Approximate Conditional Mean Particle Filtering
for Linear/Nonlinear Dynamic State Space Models
IEEE Transactions on Signal Processing, Vol.
58, No.12, December 2008.
Derek Yee, J.P. Reilly, T. Kirubarajan, and K. Punithakumar
Abstract We consider
linear systems whose state parameters are separable into linear
and nonlinear sets, and evolve according to some known transition
distribution, and whose measurement noise is distributed according
to a mixture of Gaussians. In doing so, we propose a novel particle
filter that addresses the optimal state estimation problem for the
aforementioned class of systems. The proposed filter, referred to
as the ACM-PF, is a combination of the approximate conditional mean
filter and the sequential importance sampling particle filter. The
algorithm development depends on approximating a mixture of Gaussians
distribution with a moment-matched Gaussian in the weight update
recursion. A condition indicating when this approximation is valid
is given. In order to evaluate the performance of the proposed algorithm,
we address the blind signal detection problem for an impulsive flat
fading channel and the tracking of a maneuvering target in the presence
of glint noise. Extensive computer simulations were carried out.
For computationally intensive implementations (large number of particles),
the proposed algorithm offers performance that is comparable to
other state–of–the–art particle filtering algorithms. In the scenario
where computational horsepower is heavily constrained, it is shown
that the proposed algorithm offers the best performance amongst
the considered algorithms for these specific examples.
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