The paper studies some connections between the main results of the well known Wiener-Kalman-Bucy stochastic approach to filtering problems based mainly on the linear stochastic estimation theory and emphasizing the optimality aspects of the achieved results and the classical deterministic frequency domain linear filters such as Chebyshev, Butterworth, Bessel, etc. A new non-stochastic but not necessarily deterministic (possibly non-linear) alternative approach called asymptotic filtering based mainly on the concepts of signal power, signal energy and a system equivalence relation plays an important role in the presentation. Filtering error invariance and convergence aspects are emphasized in the approach. It is shown that introducing the si...
Optimal filters for nonlinear systems are in general difficult to derive or implement. The common ap...
We consider the problem of optimal statistical filtering in non-linear and non-Gaussian systems. The...
The standard $H_2$ optimal filtering problem considers the estimation of a certain output based on t...
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...
Optimal filtering applied to stationary and non-stationary signals provides the most efficient means...
Some time invariant non-linear filters of Zadeh's class ? are optimized. A method is proposed for th...
The asymptotic behavior as a small parameter EPSILON --> 0 is investigated for one dimensional nonli...
International audienceWe consider the problem of optimal statistical filtering in nonlinear and non-...
The use of high-gains in the filtering problem for non-linear stochastic systems is studied. It is s...
This paper derives an expression for the optimal error nonlinearity in adaptive filter design. Usi...
This thesis studies different aspects of the linear and the nonlinear stochastic filtering problem. ...
In this note we present a computationally simple algorithm for non-linear filtering. The algorithm i...
The purpose of this book is to provide graduate students and practitioners with traditional methods ...
Optimal filters for nonlinear systems are in general difficult to derive or implement. The common ap...
We consider the problem of optimal statistical filtering in non-linear and non-Gaussian systems. The...
The standard $H_2$ optimal filtering problem considers the estimation of a certain output based on t...
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...
Optimal filtering applied to stationary and non-stationary signals provides the most efficient means...
Some time invariant non-linear filters of Zadeh's class ? are optimized. A method is proposed for th...
The asymptotic behavior as a small parameter EPSILON --> 0 is investigated for one dimensional nonli...
International audienceWe consider the problem of optimal statistical filtering in nonlinear and non-...
The use of high-gains in the filtering problem for non-linear stochastic systems is studied. It is s...
This paper derives an expression for the optimal error nonlinearity in adaptive filter design. Usi...
This thesis studies different aspects of the linear and the nonlinear stochastic filtering problem. ...
In this note we present a computationally simple algorithm for non-linear filtering. The algorithm i...
The purpose of this book is to provide graduate students and practitioners with traditional methods ...
Optimal filters for nonlinear systems are in general difficult to derive or implement. The common ap...
We consider the problem of optimal statistical filtering in non-linear and non-Gaussian systems. The...
The standard $H_2$ optimal filtering problem considers the estimation of a certain output based on t...