Title :
Asymptotically Optimal Discrete-Time Nonlinear Filters From Stochastically Convergent State Process Approximations
Author :
Kalogerias, Dionysios S. ; Petropulu, Athina P.
Author_Institution :
Dept. of Electr. & Comput. Eng., State Univ. of New Jersey, Piscataway, NJ, USA
Abstract :
We consider the problem of approximating optimal in the Minimum Mean Squared Error (MMSE) sense nonlinear filters in a discrete time setting, exploiting properties of stochastically convergent state process approximations. More specifically, we consider a class of nonlinear, partially observable stochastic systems, comprised by a (possibly nonstationary) hidden stochastic process (the state), observed through another conditionally Gaussian stochastic process (the observations). Under general assumptions, we show that, given an approximating process which, for each time step, is stochastically convergent to the state process, an approximate filtering operator can be defined, which converges to the true optimal nonlinear filter of the state in a strong and well defined sense. In particular, the convergence is compact in time and uniform in a completely characterized set of probability measure almost unity. The results presented in this paper can form a common basis for the analysis and characterization of a number of popular but heuristic approaches for approximating optimal nonlinear filters, such as approximate grid based techniques.
Keywords :
Gaussian processes; approximation theory; least mean squares methods; nonlinear filters; Gaussian stochastic process; MMSE sense nonlinear filters; approximate filtering operator; asymptotic optimal discrete-time nonlinear filters; hidden stochastic process; minimum mean squared error sense nonlinear filters; nonlinear partial observable stochastic systems; probability measure; stochastic convergent state process approximations; Approximation methods; Channel estimation; Convergence; Government; Markov processes; Time measurement; ${cal C}$-weak convergence; Approximate nonlinear filtering; hidden models; partially observable systems; stochastic processes;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2015.2428220