This papers deals with the minimization of seminorms \(\|L\cdot\|\) on \(\mathbb R^n\) under the constraint of a bounded I-divergence \(D(b,H\cdot)\). The I-divergence is also known as Kullback-Leibler divergence and appears in many models in imaging science, in particular when dealing with Poisson data. Typically, \(H\) represents here, e.g., a linear blur operator and \(L\) is some discrete derivative operator. Our preference for the constrained approach over the corresponding penalized version is based on the fact that the I-divergence of data corrupted, e.g., by Poisson noise or multiplicative Gamma noise can be estimated by statistical methods. Our minimization technique rests upon relations between constrained and penalized convex p...
Abstract. This paper is concerned with a novel regularisation technique for solving linear ill-posed...
International audienceWe apply divergences to project a prior guess discrete probability law on pq e...
In recent years, there has been a growing interest in mathematical models leading to the minimizatio...
In this papers we analyze the minimization of seminorms ‖L · ‖ on Rn under the con-straint of a bou...
In many imaging applications the image intensity is measured by counting incident particles and, con...
We study the variational inference problem of minimizing a regularized Rényi divergence over an expo...
In this paper, we investigate an approximate model for Poisson data reconstruction inspired by a dis...
International audienceWe study the properties of a regularization method for inverse problems corrup...
In a regularized approach to Poisson data inversion, the problem is reduced to the minimization of a...
Patrice Bertail (rapporteur), Denis Bosq (pésident), Michel Delecroix, Dominique Picard, Ya'acov Rit...
This report presents the solution to the empirical risk minimization with $f$-divergence regularizat...
Medical images obtained with emission processes are corrupted by Poisson noise. Aim of the paper i...
Abstract. The noise contained in data measured by imaging instruments is often primarily of Poisson ...
Nous considérons la détermination, au sens des moindres carrés, d'une fonction u dans un convexe fer...
In this paper, we consider the inverse problem of restoring an unknown signal or image, knowing the ...
Abstract. This paper is concerned with a novel regularisation technique for solving linear ill-posed...
International audienceWe apply divergences to project a prior guess discrete probability law on pq e...
In recent years, there has been a growing interest in mathematical models leading to the minimizatio...
In this papers we analyze the minimization of seminorms ‖L · ‖ on Rn under the con-straint of a bou...
In many imaging applications the image intensity is measured by counting incident particles and, con...
We study the variational inference problem of minimizing a regularized Rényi divergence over an expo...
In this paper, we investigate an approximate model for Poisson data reconstruction inspired by a dis...
International audienceWe study the properties of a regularization method for inverse problems corrup...
In a regularized approach to Poisson data inversion, the problem is reduced to the minimization of a...
Patrice Bertail (rapporteur), Denis Bosq (pésident), Michel Delecroix, Dominique Picard, Ya'acov Rit...
This report presents the solution to the empirical risk minimization with $f$-divergence regularizat...
Medical images obtained with emission processes are corrupted by Poisson noise. Aim of the paper i...
Abstract. The noise contained in data measured by imaging instruments is often primarily of Poisson ...
Nous considérons la détermination, au sens des moindres carrés, d'une fonction u dans un convexe fer...
In this paper, we consider the inverse problem of restoring an unknown signal or image, knowing the ...
Abstract. This paper is concerned with a novel regularisation technique for solving linear ill-posed...
International audienceWe apply divergences to project a prior guess discrete probability law on pq e...
In recent years, there has been a growing interest in mathematical models leading to the minimizatio...