Computerized Tomography with Total Variation and with Shearlets

08/23/2016
by   Edgar Garduño, et al.
0

To reduce the x-ray dose in computerized tomography (CT), many constrained optimization approaches have been proposed aiming at minimizing a regularizing function that measures lack of consistency with some prior knowledge about the object that is being imaged, subject to a (predetermined) level of consistency with the detected attenuation of x-rays. Proponents of the shearlet transform in the regularizing function claim that the reconstructions so obtained are better than those produced using TV for texture preservation (but may be worse for noise reduction). In this paper we report results related to this claim. In our reported experiments using simulated CT data collection of the head, reconstructions whose shearlet transform has a small ℓ_1-norm are not more efficacious than reconstructions that have a small TV value. Our experiments for making such comparisons use the recently-developed superiorization methodology for both regularizing functions. Superiorization is an automated procedure for turning an iterative algorithm for producing images that satisfy a primary criterion (such as consistency with the observed measurements) into its superiorized version that will produce results that, according to the primary criterion are as good as those produced by the original algorithm, but in addition are superior to them according to a secondary (regularizing) criterion. The method presented for superiorization involving the ℓ_1-norm of the shearlet transform is novel and is quite general: It can be used for any regularizing function that is defined as the ℓ_1-norm of a transform specified by the application of a matrix. Because in the previous literature the split Bregman algorithm is used for similar purposes, a section is included comparing the results of the superiorization algorithm with the split Bregman algorithm.

READ FULL TEXT

page 10

page 11

page 12

page 13

page 22

research
04/26/2014

Sinogram constrained TV-minimization for metal artifact reduction in CT

A new method for reducing metal artifacts in X-ray computed tomography (...
research
03/10/2022

Multi-Channel Convolutional Analysis Operator Learning for Dual-Energy CT Reconstruction

Objective. Dual-energy computed tomography (DECT) has the potential to i...
research
09/20/2016

Proposal of fault-tolerant tomographic image reconstruction

This paper deals with tomographic image reconstruction under the situati...
research
09/29/2021

An inversion algorithm for P-functions with applications to Multi-energy CT

Multi-energy computed tomography (ME-CT) is an x-ray transmission imagin...
research
01/09/2014

Image reconstruction from few views by L0-norm optimization

The L1-norm of the gradient-magnitude images (GMI), which is the well-kn...
research
03/03/2018

An Improved Method of Total Variation Superiorization Applied to Reconstruction in Proton Computed Tomography

Previous work showed that total variation superiorization (TVS) improves...
research
12/17/2020

CT Film Recovery via Disentangling Geometric Deformation and Illumination Variation: Simulated Datasets and Deep Models

While medical images such as computed tomography (CT) are stored in DICO...

Please sign up or login with your details

Forgot password? Click here to reset