The application of Poisson data inversions is important in both specific and very different domains of applied sciences, such as microscopy, medical imaging and astronomy. The purpose of the book is to provide a comprehensive account of theoretical results, methods and algorithms related to the problem of image reconstruction from Poisson data in the framework of the maximum likelihood approach introduced by Shepp and Vardi. This is achieved by first discussing the application domains where this approach is important and their mathematical modelling, including the statistical properties of the data. The authors introduce the maximum likelihood approach which naturally arises from this modelling. Finally, a suitable variational formulation ...
The paper is concerned with the uniqueness of the Maximum a Posteriori estimate for restoration prob...
In a regularized approach to Poisson data inversion, the problem is reduced to the minimization of a...
Abstract—The observations in many applications consist of counts of discrete events, such as photons...
Inverse Imaging with Poisson Data is an invaluable resource for graduate students, postdocs and rese...
Abstract. In image processing applications, image intensity is often measured via the counting of in...
In many imaging applications the image intensity is measured by counting incident particles and, con...
Inverse problems with Poisson data arise in many photonic imaging modalities in medicine, engineerin...
Abstract—Poisson inverse problems arise in many modern imaging applications, including biomedical an...
Journal PaperThis paper describes a statistical modeling and analysis method for linear inverse prob...
In applications of imaging science, such as emissiontomography, fluorescence microscopy and optical/...
Recently, Poisson noise has become of great interest in many imaging applications. When regularizati...
The noise contained in images collected by a charge coupled device (CCD) camera is predominantly of ...
In this report we solved a regularized Poisson maximum likelihood (ML) image recon-struction problem...
The noise contained in images collected by a charge coupled device (CCD) camera is predominantly of ...
Abstract. Poisson noise models arise in a wide range of linear inverse problems in imaging. In the B...
The paper is concerned with the uniqueness of the Maximum a Posteriori estimate for restoration prob...
In a regularized approach to Poisson data inversion, the problem is reduced to the minimization of a...
Abstract—The observations in many applications consist of counts of discrete events, such as photons...
Inverse Imaging with Poisson Data is an invaluable resource for graduate students, postdocs and rese...
Abstract. In image processing applications, image intensity is often measured via the counting of in...
In many imaging applications the image intensity is measured by counting incident particles and, con...
Inverse problems with Poisson data arise in many photonic imaging modalities in medicine, engineerin...
Abstract—Poisson inverse problems arise in many modern imaging applications, including biomedical an...
Journal PaperThis paper describes a statistical modeling and analysis method for linear inverse prob...
In applications of imaging science, such as emissiontomography, fluorescence microscopy and optical/...
Recently, Poisson noise has become of great interest in many imaging applications. When regularizati...
The noise contained in images collected by a charge coupled device (CCD) camera is predominantly of ...
In this report we solved a regularized Poisson maximum likelihood (ML) image recon-struction problem...
The noise contained in images collected by a charge coupled device (CCD) camera is predominantly of ...
Abstract. Poisson noise models arise in a wide range of linear inverse problems in imaging. In the B...
The paper is concerned with the uniqueness of the Maximum a Posteriori estimate for restoration prob...
In a regularized approach to Poisson data inversion, the problem is reduced to the minimization of a...
Abstract—The observations in many applications consist of counts of discrete events, such as photons...