The asymptotic behavior as a small parameter EPSILON --> 0 is investigated for one dimensional nonlinear filtering problems. Both weakly nonlinear systems (WNL) and systems measured through a low noise channel are considered. Upper and lower bounds on the optimal mean square error combined with perturbation methods are used to show that, in the case of WNL, the Kalman filter formally designed for the underlying linear systems is asymptotically optimal in some sense. In the case of systems with low measurement noise, three asymptotically optimal filters are provided, one of which is linear. Examples with simulation results are provided
International audienceWe study the asymptotic behaviour of the Bayesian estimator for a deterministi...
International audienceWe study the asymptotic behaviour of the Bayesian estimator for a deterministi...
International audienceWe study the asymptotic behaviour of the Bayesian estimator for a deterministi...
A lower and upper bound approach on the optimal mean square error is used to study the asymptotic be...
A lower and upper bound approach on the optimal mean square error is used to study the asymptotic be...
In this paper, we consider the filtering of diffusion processes observed in non-Gaussian noise, when...
Abstract. The asymptotic behavior of a nonlinear continuous time filtering problem is studied when t...
We consider a family of processes (X[var epsilon], Y[var epsilon]) where X[var epsilon] = (X[var eps...
AbstractThe paper treats the nonlinear filtering problem for jump-diffusion processes. The optimal f...
In this note we present a computationally simple algorithm for non-linear filtering. The algorithm i...
AbstractWe show how to obtain sharp lower bounds on the asymptotic error of algorithms for solving n...
A rate distortion lower bound of minimum mean square error is presented for a special class of discr...
AbstractWe consider a family of processes (Xε, Yε) where Xε = (Xεt) is unobservable, while Yε = (Yεt...
We study the asymptotic behaviour of the Bayesian estimator for a deterministic signal in additive G...
We consider the problem of optimal filtering of two dimensional diffusion process measured in a nois...
International audienceWe study the asymptotic behaviour of the Bayesian estimator for a deterministi...
International audienceWe study the asymptotic behaviour of the Bayesian estimator for a deterministi...
International audienceWe study the asymptotic behaviour of the Bayesian estimator for a deterministi...
A lower and upper bound approach on the optimal mean square error is used to study the asymptotic be...
A lower and upper bound approach on the optimal mean square error is used to study the asymptotic be...
In this paper, we consider the filtering of diffusion processes observed in non-Gaussian noise, when...
Abstract. The asymptotic behavior of a nonlinear continuous time filtering problem is studied when t...
We consider a family of processes (X[var epsilon], Y[var epsilon]) where X[var epsilon] = (X[var eps...
AbstractThe paper treats the nonlinear filtering problem for jump-diffusion processes. The optimal f...
In this note we present a computationally simple algorithm for non-linear filtering. The algorithm i...
AbstractWe show how to obtain sharp lower bounds on the asymptotic error of algorithms for solving n...
A rate distortion lower bound of minimum mean square error is presented for a special class of discr...
AbstractWe consider a family of processes (Xε, Yε) where Xε = (Xεt) is unobservable, while Yε = (Yεt...
We study the asymptotic behaviour of the Bayesian estimator for a deterministic signal in additive G...
We consider the problem of optimal filtering of two dimensional diffusion process measured in a nois...
International audienceWe study the asymptotic behaviour of the Bayesian estimator for a deterministi...
International audienceWe study the asymptotic behaviour of the Bayesian estimator for a deterministi...
International audienceWe study the asymptotic behaviour of the Bayesian estimator for a deterministi...