In this paper, we investigate an approximate model for Poisson data reconstruction inspired by a discrepancy principle for the selection of the regularization parameter, recently proposed by Bardsley and Goldes. The model can be obtained by approximating the generalized Kullback-Leibler (KL) divergence in terms of a weighted least-squares function, with weights depending on the object to be reconstructed. We show that it is possible to develop a complete theory, based on this approximation, including results of existence and uniqueness of regularized solutions and simple gradient-based reconstruction algorithms for their computation. Moreover, in this context, the criterion of Bardsley and Goldes is a natural one and it is possible to prove...
The application of Poisson data inversions is important in both specific and very different domains ...
This papers deals with the minimization of seminorms \(\|L\cdot\|\) on \(\mathbb R^n\) under the con...
Variational models are a valid tool for edge-preserving image restoration from data affected by Pois...
In many imaging applications the image intensity is measured by counting incident particles and, con...
In a regularized approach to Poisson data inversion, the problem is reduced to the minimization of a...
Analysis of an approximate model for Poisson data reconstruction and a related discrepancy principle...
In applications of imaging science, such as emissiontomography, fluorescence microscopy and optical/...
Abstract In a regularized approach to Poisson data inver-sion, the problem is reduced to the minimiz...
The paper is concerned with the uniqueness of the Maximum a Posteriori estimate for restoration prob...
Abstract. In image processing applications, image intensity is often measured via the counting of in...
Abstract. Let z = Au+ γ, where γ> 0 is constant, be an ill-posed, linear operator equation. Such ...
International audienceWe study the properties of a regularization method for inverse problems corrup...
This work deals with the solution of image restoration problems by an iterative regularization metho...
The noise contained in images collected by a charge coupled device (CCD) camera is predominantly of ...
Inverse problems with Poisson data arise in many photonic imaging modalities in medicine, engineerin...
The application of Poisson data inversions is important in both specific and very different domains ...
This papers deals with the minimization of seminorms \(\|L\cdot\|\) on \(\mathbb R^n\) under the con...
Variational models are a valid tool for edge-preserving image restoration from data affected by Pois...
In many imaging applications the image intensity is measured by counting incident particles and, con...
In a regularized approach to Poisson data inversion, the problem is reduced to the minimization of a...
Analysis of an approximate model for Poisson data reconstruction and a related discrepancy principle...
In applications of imaging science, such as emissiontomography, fluorescence microscopy and optical/...
Abstract In a regularized approach to Poisson data inver-sion, the problem is reduced to the minimiz...
The paper is concerned with the uniqueness of the Maximum a Posteriori estimate for restoration prob...
Abstract. In image processing applications, image intensity is often measured via the counting of in...
Abstract. Let z = Au+ γ, where γ> 0 is constant, be an ill-posed, linear operator equation. Such ...
International audienceWe study the properties of a regularization method for inverse problems corrup...
This work deals with the solution of image restoration problems by an iterative regularization metho...
The noise contained in images collected by a charge coupled device (CCD) camera is predominantly of ...
Inverse problems with Poisson data arise in many photonic imaging modalities in medicine, engineerin...
The application of Poisson data inversions is important in both specific and very different domains ...
This papers deals with the minimization of seminorms \(\|L\cdot\|\) on \(\mathbb R^n\) under the con...
Variational models are a valid tool for edge-preserving image restoration from data affected by Pois...