A common problem in imaging science is to estimate some underlying true image given noisy measurements of image intensity. When image intensity is measured by the counting of incident photons emitted by the object of interest, the data-noise is accurately modeled by a Poisson distribution, which motivates the use of Poisson maximum likelihood estimation. When the underlying model equation is ill-posed, regularization must be employed. I will present a computational framework for solving such problems, including statistically motivated methods for choosing the regularization parameter. Numerical examples will be included
International audienceDeblurring noisy Poisson images has recently been subject of an increasingly a...
Abstract. The noise contained in data measured by imaging instruments is often primarily of Poisson ...
Abstract—Poisson inverse problems arise in many modern imaging applications, including biomedical an...
Abstract. In image processing applications, image intensity is often measured via the counting of in...
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 many imaging applications the image intensity is measured by counting incident particles and, con...
The noise contained in images collected by a charge coupled device (CCD) camera is predominantly of ...
Abstract. Let z = Au+ γ, where γ> 0 is constant, be an ill-posed, linear operator equation. Such ...
In applications of imaging science, such as emission tomography, fluorescence microscopy and optical...
International audienceDeblurring images corrupted by Poisson noise is a challenging process which ha...
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 noise contained in images collected by a charge coupled device (CCD) camera is predominantly of ...
In this paper we address the problem of automatically selecting the regularization parameter in vari...
International audienceDeblurring noisy Poisson images has recently been subject of an increasingly a...
Abstract. The noise contained in data measured by imaging instruments is often primarily of Poisson ...
Abstract—Poisson inverse problems arise in many modern imaging applications, including biomedical an...
Abstract. In image processing applications, image intensity is often measured via the counting of in...
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 many imaging applications the image intensity is measured by counting incident particles and, con...
The noise contained in images collected by a charge coupled device (CCD) camera is predominantly of ...
Abstract. Let z = Au+ γ, where γ> 0 is constant, be an ill-posed, linear operator equation. Such ...
In applications of imaging science, such as emission tomography, fluorescence microscopy and optical...
International audienceDeblurring images corrupted by Poisson noise is a challenging process which ha...
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 noise contained in images collected by a charge coupled device (CCD) camera is predominantly of ...
In this paper we address the problem of automatically selecting the regularization parameter in vari...
International audienceDeblurring noisy Poisson images has recently been subject of an increasingly a...
Abstract. The noise contained in data measured by imaging instruments is often primarily of Poisson ...
Abstract—Poisson inverse problems arise in many modern imaging applications, including biomedical an...