AbstractThe problem of reconstructing signals and images from degraded ones is considered in this paper. The latter problem is formulated as a linear system whose coefficient matrix models the unknown point spread function and the right hand side represents the observed image. Moreover, the coefficient matrix is very ill-conditioned, requiring an additional regularization term. Different boundary conditions can be proposed. In this paper antireflective boundary conditions are considered. Since both sides of the linear system have uncertainties and the coefficient matrix is highly structured, the Regularized Structured Total Least Squares approach seems to be the more appropriate one to compute an approximation of the true signal/image. With...
This paper is concerned with the image deconvolution problem. For the basic model, where the convolu...
AbstractThe need for image restoration arises in many applications of various scientific disciplines...
We consider the classical de-blurring problem of noisy and blurred signals or images in the case of ...
AbstractThe problem of reconstructing signals and images from degraded ones is considered in this pa...
The problem of reconstructing signals and images from degraded ones is considered in this paper. The...
AbstractRecently there has been a growing interest and progress in using total least squares (TLS) m...
We study strategies to increase the precision in deconvolution models, while maintaining the complex...
Given a linear system Ax ≈ b over the real or complex field where both A and b are subject to noise,...
This paper presents a couple of preconditioning techniques that can be used to enhance the performan...
Rosen, Park and Glick proposed the structured total least norm (STLN) algorithm for solving problem...
AbstractThe structured total least squares (STLS) problem has been introduced to handle problems inv...
The aim of this work is to present a new and efficient optimization method for the solution of blind...
This paper presents some preconditioning techniques that enhance the performance of iterative regula...
This paper is concerned with the image deconvolution problem. For the basic model, where the convolu...
This paper is concerned with the image deconvolution problem. For the basic model, where the convolu...
AbstractThe need for image restoration arises in many applications of various scientific disciplines...
We consider the classical de-blurring problem of noisy and blurred signals or images in the case of ...
AbstractThe problem of reconstructing signals and images from degraded ones is considered in this pa...
The problem of reconstructing signals and images from degraded ones is considered in this paper. The...
AbstractRecently there has been a growing interest and progress in using total least squares (TLS) m...
We study strategies to increase the precision in deconvolution models, while maintaining the complex...
Given a linear system Ax ≈ b over the real or complex field where both A and b are subject to noise,...
This paper presents a couple of preconditioning techniques that can be used to enhance the performan...
Rosen, Park and Glick proposed the structured total least norm (STLN) algorithm for solving problem...
AbstractThe structured total least squares (STLS) problem has been introduced to handle problems inv...
The aim of this work is to present a new and efficient optimization method for the solution of blind...
This paper presents some preconditioning techniques that enhance the performance of iterative regula...
This paper is concerned with the image deconvolution problem. For the basic model, where the convolu...
This paper is concerned with the image deconvolution problem. For the basic model, where the convolu...
AbstractThe need for image restoration arises in many applications of various scientific disciplines...
We consider the classical de-blurring problem of noisy and blurred signals or images in the case of ...