Sart-Type Half-Threshold Filtering Approach for CT Reconstruction

The &#x2113;<sub>1</sub> regularization problem has been widely used to solve the sparsity constrained problems. To enhance the sparsity constraint for better imaging performance, a promising direction is to use the &#x2113;<sub>p</sub> norm (0 &lt;; p &lt;; 1...

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Main Authors: HENGYONG YU, GE WANG
Format: Article
Language:English
Published: IEEE 2014-01-01
Series:IEEE Access
Online Access:https://ieeexplore.ieee.org/document/6819396/
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spelling doaj-3141533c0c7f420ab2dd153f9d7430332021-03-29T19:29:56ZengIEEEIEEE Access2169-35362014-01-01260261310.1109/ACCESS.2014.23261656819396Sart-Type Half-Threshold Filtering Approach for CT ReconstructionHENGYONG YU0GE WANG1Department of Biomedical Engineering, Wake Forest University Health Sciences, Winston-Salem, NC, USADepartment of Biomedical EngineeringBiomedical Imaging Cluster, Rensselaer Polytechnic Institute, Troy, NY, USAThe &#x2113;<sub>1</sub> regularization problem has been widely used to solve the sparsity constrained problems. To enhance the sparsity constraint for better imaging performance, a promising direction is to use the &#x2113;<sub>p</sub> norm (0 &lt;; p &lt;; 1) and solve the &#x2113;<sub>p</sub> minimization problem. Very recently, Xu et al. developed an analytic solution for the &#x2113;<sub>1/2</sub> regularization via an iterative thresholding operation, which is also referred to as half-threshold filtering. In this paper, we design a simultaneous algebraic reconstruction technique (SART)-type half-threshold filtering framework to solve the computed tomography (CT) reconstruction problem. In the medical imaging filed, the discrete gradient transform (DGT) is widely used to define the sparsity. However, the DGT is noninvertible and it cannot be applied to half-threshold filtering for CT reconstruction. To demonstrate the utility of the proposed SART-type half-threshold filtering framework, an emphasis of this paper is to construct a pseudoinverse transforms for DGT. The proposed algorithms are evaluated with numerical and physical phantom data sets. Our results show that the SART-type half-threshold filtering algorithms have great potential to improve the reconstructed image quality from few and noisy projections. They are complementary to the counterparts of the state-of-the-art soft-threshold filtering and hard-threshold filtering.https://ieeexplore.ieee.org/document/6819396/
collection DOAJ
language English
format Article
sources DOAJ
author HENGYONG YU
GE WANG
spellingShingle HENGYONG YU
GE WANG
Sart-Type Half-Threshold Filtering Approach for CT Reconstruction
IEEE Access
author_facet HENGYONG YU
GE WANG
author_sort HENGYONG YU
title Sart-Type Half-Threshold Filtering Approach for CT Reconstruction
title_short Sart-Type Half-Threshold Filtering Approach for CT Reconstruction
title_full Sart-Type Half-Threshold Filtering Approach for CT Reconstruction
title_fullStr Sart-Type Half-Threshold Filtering Approach for CT Reconstruction
title_full_unstemmed Sart-Type Half-Threshold Filtering Approach for CT Reconstruction
title_sort sart-type half-threshold filtering approach for ct reconstruction
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2014-01-01
description The &#x2113;<sub>1</sub> regularization problem has been widely used to solve the sparsity constrained problems. To enhance the sparsity constraint for better imaging performance, a promising direction is to use the &#x2113;<sub>p</sub> norm (0 &lt;; p &lt;; 1) and solve the &#x2113;<sub>p</sub> minimization problem. Very recently, Xu et al. developed an analytic solution for the &#x2113;<sub>1/2</sub> regularization via an iterative thresholding operation, which is also referred to as half-threshold filtering. In this paper, we design a simultaneous algebraic reconstruction technique (SART)-type half-threshold filtering framework to solve the computed tomography (CT) reconstruction problem. In the medical imaging filed, the discrete gradient transform (DGT) is widely used to define the sparsity. However, the DGT is noninvertible and it cannot be applied to half-threshold filtering for CT reconstruction. To demonstrate the utility of the proposed SART-type half-threshold filtering framework, an emphasis of this paper is to construct a pseudoinverse transforms for DGT. The proposed algorithms are evaluated with numerical and physical phantom data sets. Our results show that the SART-type half-threshold filtering algorithms have great potential to improve the reconstructed image quality from few and noisy projections. They are complementary to the counterparts of the state-of-the-art soft-threshold filtering and hard-threshold filtering.
url https://ieeexplore.ieee.org/document/6819396/
work_keys_str_mv AT hengyongyu sarttypehalfthresholdfilteringapproachforctreconstruction
AT gewang sarttypehalfthresholdfilteringapproachforctreconstruction
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