AbstractThe structured total least squares (STLS) problem has been introduced to handle problems involving structured matrices corrupted by noise. Often the problem is ill-posed. Recently, regularization has been proposed in the STLS framework to solve ill-posed blind deconvolution problems encountered in image deblurring when both the image and the blurring function have uncertainty. The kernel of the regularized STLS (RSTLS) problem is a least squares problem involving Block–Toeplitz–Toeplitz–Block matrices.In this paper an algorithm is described to solve this problem, based on a particular implementation of the generalized Schur Algorithm (GSA). It is shown that this new implementation improves the computational efficiency of the straigh...
open1noFirst Online: 26 June 2014In recent years, ℓ1-regularized least squares have become a popular...
This paper uses techniques from computational algebraic geometry to perform blind image deconvolutio...
Standard supervised learning frameworks for image restoration require a set of noisy measurement and...
Rosen, Park and Glick proposed the structured total least norm (STLN) algorithm for solving problem...
Given a linear system Ax ≈ b over the real or complex field where both A and b are subject to noise,...
AbstractRecently there has been a growing interest and progress in using total least squares (TLS) m...
In this thesis, we present the O(n(log n)^2) superfast linear least squares Schur algorithm (ssschur...
AbstractThe problem of reconstructing signals and images from degraded ones is considered in this pa...
Mastronardi, Lemmerling, and van Huffel presented an algorithm for solving a total least squares pr...
This paper presents some preconditioning techniques that enhance the performance of iterative regula...
This paper presents a couple of preconditioning techniques that can be used to enhance the performan...
We are interested in fast and stable iterative regularization methods for image deblurringproblems w...
Blind image deblurring is a well-known ill-posed inverse problem in the computer vision field. To ma...
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...
open1noFirst Online: 26 June 2014In recent years, ℓ1-regularized least squares have become a popular...
This paper uses techniques from computational algebraic geometry to perform blind image deconvolutio...
Standard supervised learning frameworks for image restoration require a set of noisy measurement and...
Rosen, Park and Glick proposed the structured total least norm (STLN) algorithm for solving problem...
Given a linear system Ax ≈ b over the real or complex field where both A and b are subject to noise,...
AbstractRecently there has been a growing interest and progress in using total least squares (TLS) m...
In this thesis, we present the O(n(log n)^2) superfast linear least squares Schur algorithm (ssschur...
AbstractThe problem of reconstructing signals and images from degraded ones is considered in this pa...
Mastronardi, Lemmerling, and van Huffel presented an algorithm for solving a total least squares pr...
This paper presents some preconditioning techniques that enhance the performance of iterative regula...
This paper presents a couple of preconditioning techniques that can be used to enhance the performan...
We are interested in fast and stable iterative regularization methods for image deblurringproblems w...
Blind image deblurring is a well-known ill-posed inverse problem in the computer vision field. To ma...
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...
open1noFirst Online: 26 June 2014In recent years, ℓ1-regularized least squares have become a popular...
This paper uses techniques from computational algebraic geometry to perform blind image deconvolutio...
Standard supervised learning frameworks for image restoration require a set of noisy measurement and...