The restricted structure optimal deconvolution filtering, smoothing and prediction problem for multivariable, discrete-time linear signal processing problems is considered. A new class of discrete-time optimal linear estimators is introduced that directly minimises a minimum variance criterion but where the structure is prespecified to have a relatively simple form. The resulting estimator can be of much lower order than a Kalman or Wiener estimator and it minimises the estimation error variance, subject to the constraint referred to above. The numerical optimisation algorithm is simple to implement and the full-order optimal solutions are available as a by-product of the analysis. Moreover, the restricted structure solution may be used to ...
[[abstract]]This paper considers the design of robust deconvolution filters for linear discrete time...
This paper studies the L² (mean-square) optimal design of discrete-time FIR estimators. A solution p...
A nonlinear operator approach to estimation in discrete-time multivariable systems is described. It ...
The restricted structure optimal deconvolution filtering, smoothing and prediction problem for multi...
The Restricted Structure(RS)optimal deconvolution filtering problem for Multi-Channel (linear and no...
A new class of discrete-time optimal linear estimators is introduced that minimizes estimation error...
[[abstract]]A new l1 optimal deconvolution filter design approach for systems with uncertain (or unk...
A non-linear operator approach to estimation in discrete-time multivariable systems is described. It...
The purpose of this book is to provide graduate students and practitioners with traditional methods ...
This paper discusses linear inverse filtering (deconvolution) from a stochastic signal processing po...
Discrete-time linear additive hybrid systems arise in many applications of interest including estima...
In this paper, we study the joint design of optimal linear encoders and decoders for filtering and t...
The problem of band-limited extrapolation is studied in a general framework of estimation of a signa...
The optimal linear estimation problems are investigated in this paper for a class of discrete linear...
[[abstract]]This paper considers the design of robust deconvolution filters for linear discrete time...
This paper studies the L² (mean-square) optimal design of discrete-time FIR estimators. A solution p...
A nonlinear operator approach to estimation in discrete-time multivariable systems is described. It ...
The restricted structure optimal deconvolution filtering, smoothing and prediction problem for multi...
The Restricted Structure(RS)optimal deconvolution filtering problem for Multi-Channel (linear and no...
A new class of discrete-time optimal linear estimators is introduced that minimizes estimation error...
[[abstract]]A new l1 optimal deconvolution filter design approach for systems with uncertain (or unk...
A non-linear operator approach to estimation in discrete-time multivariable systems is described. It...
The purpose of this book is to provide graduate students and practitioners with traditional methods ...
This paper discusses linear inverse filtering (deconvolution) from a stochastic signal processing po...
Discrete-time linear additive hybrid systems arise in many applications of interest including estima...
In this paper, we study the joint design of optimal linear encoders and decoders for filtering and t...
The problem of band-limited extrapolation is studied in a general framework of estimation of a signa...
The optimal linear estimation problems are investigated in this paper for a class of discrete linear...
[[abstract]]This paper considers the design of robust deconvolution filters for linear discrete time...
This paper studies the L² (mean-square) optimal design of discrete-time FIR estimators. A solution p...
A nonlinear operator approach to estimation in discrete-time multivariable systems is described. It ...