Most penalized maximum likelihood methods for tomographic image reconstruction based on Bayes’ law include a freely adjustable hyperparameter to balance the data fidelity term and the prior/penalty term for a specific noise–resolution tradeoff. The hyperparameter is determined empirically via a trial-and-error fashion in many applications, which then selects the optimal result from multiple iterative reconstructions. These penalized methods are not only time-consuming by their iterative nature, but also require manual adjustment. This study aims to investigate a theory-based strategy for Bayesian image reconstruction without a freely adjustable hyperparameter, to substantially save time and computational resources. The Bayesian image recons...
The resolution and quantitative accuracy PET are significantly influenced by the reconstruction meth...
Purpose: Q.Clear is a block sequential regularized expectation maximization (BSREM) penalized-likeli...
International audienceIterative reconstruction methods in Computed Tomography (CT) are known to prov...
It is well documented that a Bayesian model with a pairwise difference prior can give far more satis...
The development and tests of an iterative reconstruction algorithm for emission tomography based on ...
International audienceTomographic reconstruction from noisy projections do not yield adequate result...
Detecting cancerous lesion is an important task in positron emission tomography (PET). Bayesian meth...
We address the problem of Bayesian image reconstruction with a prior that captures the notion of a c...
In this paper we formulate a new approach to medical image reconstruction from projections in emissi...
Region of interest (ROI) quantitation is an important task in emission tomography (e.g., positron em...
Region of interest (ROI) quantitation is an important task in emission tomography (e.g., positron e...
International audience3D X-ray Computed Tomography (CT) is used in medicine and non-destructive test...
Maximum likelihood (ML) is a well established method for general parameter estimation. However in it...
International audienceThe piecewise constant or homogeneous image reconstruction in the context of X...
This study examines the effects of reduced radioactive dosage data collection on positron emission t...
The resolution and quantitative accuracy PET are significantly influenced by the reconstruction meth...
Purpose: Q.Clear is a block sequential regularized expectation maximization (BSREM) penalized-likeli...
International audienceIterative reconstruction methods in Computed Tomography (CT) are known to prov...
It is well documented that a Bayesian model with a pairwise difference prior can give far more satis...
The development and tests of an iterative reconstruction algorithm for emission tomography based on ...
International audienceTomographic reconstruction from noisy projections do not yield adequate result...
Detecting cancerous lesion is an important task in positron emission tomography (PET). Bayesian meth...
We address the problem of Bayesian image reconstruction with a prior that captures the notion of a c...
In this paper we formulate a new approach to medical image reconstruction from projections in emissi...
Region of interest (ROI) quantitation is an important task in emission tomography (e.g., positron em...
Region of interest (ROI) quantitation is an important task in emission tomography (e.g., positron e...
International audience3D X-ray Computed Tomography (CT) is used in medicine and non-destructive test...
Maximum likelihood (ML) is a well established method for general parameter estimation. However in it...
International audienceThe piecewise constant or homogeneous image reconstruction in the context of X...
This study examines the effects of reduced radioactive dosage data collection on positron emission t...
The resolution and quantitative accuracy PET are significantly influenced by the reconstruction meth...
Purpose: Q.Clear is a block sequential regularized expectation maximization (BSREM) penalized-likeli...
International audienceIterative reconstruction methods in Computed Tomography (CT) are known to prov...