Journal PaperThis paper describes a statistical modeling and analysis method for linear inverse problems involving Poisson data based on a novel multiscale framework. The framework itself is founded upon a multiscale analysis associated with recursive partitioning of the underlying intensity, a corresponding multiscale factorization of the likelihood (induced by this analysis), and a choice of prior probability distribution made to match this factorization by modeling the "splits" in the underlying partition. The class of priors used here has the interesting feature that the "non-informative" member yields the traditional maximum likelihood solution; other choices are made to re prior belief as to the smoothness of the unknown intensity. A...
AbstractThe application of multiscale and stochastic techniques to the solution of linear inverse pr...
International audienceIn this paper, we propose two algorithms for solving linear inverse problems w...
International audienceIn this paper, we propose two algorithms for solving linear inverse problems w...
The application of Poisson data inversions is important in both specific and very different domains ...
Inverse Imaging with Poisson Data is an invaluable resource for graduate students, postdocs and rese...
Abstract—The observations in many applications consist of counts of discrete events, such as photons...
The need to blend observational data and mathematical models arises in many applications and leads n...
Abstract—We present an improved statistical model for an-alyzing Poisson processes, with application...
The paper introduces a framework for non-linear multiscale decompositions of Poisson data that have ...
Inverse problems with Poisson data arise in many photonic imaging modalities in medicine, engineerin...
Elec 599 Project ReportGiven observations of a one-dimensional piecewise linear, length-M Poisson in...
Abstract. Poisson noise models arise in a wide range of linear inverse problems in imaging. In the B...
We present an improved statistical model of Poisson processes, with applications in photon-limited i...
In this talk we discuss a Bayesian approach for inverse problems involving elliptic differential equ...
Abstract. In image processing applications, image intensity is often measured via the counting of in...
AbstractThe application of multiscale and stochastic techniques to the solution of linear inverse pr...
International audienceIn this paper, we propose two algorithms for solving linear inverse problems w...
International audienceIn this paper, we propose two algorithms for solving linear inverse problems w...
The application of Poisson data inversions is important in both specific and very different domains ...
Inverse Imaging with Poisson Data is an invaluable resource for graduate students, postdocs and rese...
Abstract—The observations in many applications consist of counts of discrete events, such as photons...
The need to blend observational data and mathematical models arises in many applications and leads n...
Abstract—We present an improved statistical model for an-alyzing Poisson processes, with application...
The paper introduces a framework for non-linear multiscale decompositions of Poisson data that have ...
Inverse problems with Poisson data arise in many photonic imaging modalities in medicine, engineerin...
Elec 599 Project ReportGiven observations of a one-dimensional piecewise linear, length-M Poisson in...
Abstract. Poisson noise models arise in a wide range of linear inverse problems in imaging. In the B...
We present an improved statistical model of Poisson processes, with applications in photon-limited i...
In this talk we discuss a Bayesian approach for inverse problems involving elliptic differential equ...
Abstract. In image processing applications, image intensity is often measured via the counting of in...
AbstractThe application of multiscale and stochastic techniques to the solution of linear inverse pr...
International audienceIn this paper, we propose two algorithms for solving linear inverse problems w...
International audienceIn this paper, we propose two algorithms for solving linear inverse problems w...