This paper is focused on the solution of the blind deconvolution problem, here modeled as a separable nonlinear least squares problem. The well known ill-posedness, both on recovering the blurring operator and the true image, makes the problem really difficult to handle. We show that, by imposing appropriate constraints on the variables and with well chosen regularization parameters, it is possible to obtain an objective function that is fairly well behaved. Hence, the resulting nonlinear minimization problem can be effectively solved by classical methods, such as the Gauss-Newton algorithm
We propose a novel blind deconvolution method that consist-ing of firstly estimating the variance of...
Blind deconvolution problems arise in many imaging modalities, where both the underlying point sprea...
AbstractRecently there has been a growing interest and progress in using total least squares (TLS) m...
This paper is focused on the solution of the blind deconvolution problem, here modeled as a separabl...
This paper describes a nonlinear least squares framework to solve a separable nonlinear ill-posed in...
The aim of this work is to present a new and efficient optimization method for the solution of blind...
The need for image restoration arises in many applications of various scientific disciplines, such a...
AbstractThe need for image restoration arises in many applications of various scientific disciplines...
Abstract. This paper is devoted to blind deconvolution and blind separation problems. Blind deconvol...
A rank-constrained reformulation of the blind deconvolution problem on images taken with coherent il...
In this work we consider one-dimensional blind deconvolution with prior knowledge of signal autocorr...
The relative Newton algorithm, previously proposed for quasi maximum likelihood blind source separat...
Blind deconvolution is a technique to recover an original signal without knowing a convolving filter...
We study the question of reconstructing two signals $f$ and $g$ from their convolution $y =...
In this paper the blind deconvolution problem is formulated using the variational framework. With it...
We propose a novel blind deconvolution method that consist-ing of firstly estimating the variance of...
Blind deconvolution problems arise in many imaging modalities, where both the underlying point sprea...
AbstractRecently there has been a growing interest and progress in using total least squares (TLS) m...
This paper is focused on the solution of the blind deconvolution problem, here modeled as a separabl...
This paper describes a nonlinear least squares framework to solve a separable nonlinear ill-posed in...
The aim of this work is to present a new and efficient optimization method for the solution of blind...
The need for image restoration arises in many applications of various scientific disciplines, such a...
AbstractThe need for image restoration arises in many applications of various scientific disciplines...
Abstract. This paper is devoted to blind deconvolution and blind separation problems. Blind deconvol...
A rank-constrained reformulation of the blind deconvolution problem on images taken with coherent il...
In this work we consider one-dimensional blind deconvolution with prior knowledge of signal autocorr...
The relative Newton algorithm, previously proposed for quasi maximum likelihood blind source separat...
Blind deconvolution is a technique to recover an original signal without knowing a convolving filter...
We study the question of reconstructing two signals $f$ and $g$ from their convolution $y =...
In this paper the blind deconvolution problem is formulated using the variational framework. With it...
We propose a novel blind deconvolution method that consist-ing of firstly estimating the variance of...
Blind deconvolution problems arise in many imaging modalities, where both the underlying point sprea...
AbstractRecently there has been a growing interest and progress in using total least squares (TLS) m...