A hybrid Gibbs sampler for edge-preserving tomographic reconstruction with uncertain view angles
Felipe Uribe, Johnathan M. Bardsley, Yiqiu Dong, Per, Christian Hansen, Nicolai A. B. Riis

TL;DR
This paper introduces a hybrid Gibbs sampling framework for joint estimation of object attenuation images and uncertain view angles in computed tomography, improving reconstruction accuracy and uncertainty quantification.
Contribution
It proposes a novel Bayesian approach with a hybrid Gibbs sampler that jointly estimates images and view angles, incorporating a Laplace approximation for efficiency.
Findings
Successfully reconstructs images with uncertain view angles
Provides uncertainty estimates for both image and angles
Demonstrates effectiveness on 2D fan beam CT data
Abstract
In computed tomography, data consist of measurements of the attenuation of X-rays passing through an object. The goal is to reconstruct the linear attenuation coefficient of the object's interior. For each position of the X-ray source, characterized by its angle with respect to a fixed coordinate system, one measures a set of data referred to as a view. A common assumption is that these view angles are known, but in some applications they are known with imprecision. We propose a framework to solve a Bayesian inverse problem that jointly estimates the view angles and an image of the object's attenuation coefficient. We also include a few hyperparameters that characterize the likelihood and the priors. Our approach is based on a Gibbs sampler where the associated conditional densities are simulated using different sampling schemes - hence the term hybrid. In particular, the conditional…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Advanced X-ray and CT Imaging · Radiation Dose and Imaging
