Nonconvex L₁/₂- regularized nonlocal self-similarity denoiser for compressive sensing based CT reconstruction

Compressive sensing (CS) based computed tomography (CT) image reconstruction aims at reducing the radiation risk through sparse-view projection data. However, it is challenging to achieve satisfying image quality from incomplete projections. Recent works demonstrate the promising potential of noncon...

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Main Authors: Li, Yunyi, Jiang, Yiqiu, Zhang, Hengmin, Liu, Jianxun, Ding, Xiangling, Gui, Guan
Other Authors: School of Electrical and Electronic Engineering
Format: Article
Language:English
Published: 2023
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Online Access:https://hdl.handle.net/10356/170665
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1706652023-09-25T06:45:19Z Nonconvex L₁/₂- regularized nonlocal self-similarity denoiser for compressive sensing based CT reconstruction Li, Yunyi Jiang, Yiqiu Zhang, Hengmin Liu, Jianxun Ding, Xiangling Gui, Guan School of Electrical and Electronic Engineering Engineering::Electrical and electronic engineering Compressive Sensing Computed Tomography Images Compressive sensing (CS) based computed tomography (CT) image reconstruction aims at reducing the radiation risk through sparse-view projection data. However, it is challenging to achieve satisfying image quality from incomplete projections. Recent works demonstrate the promising potential of nonconvex L1/2-norm in CS problem, while the applications on medical imaging are constrained by its nonconvexity. In this paper, we develop an L1/2-regularized nonlocal self-similarity (NSS) denoiser based CT reconstruction model, which combines with low-rank approximation and group sparse coding (GSC) framework. Concretely, we firstly split the CT reconstruction problem into two subproblems, then improve CT image quality furtherly using our proposed denoiser. Instead of optimizing the nonconvex problem under the perspective of GSC, we particularly reconstruct CT image via low-rank minimization based on two simple yet essential schemes, which build the equivalent relationship between GSC based denoiser and low-rank minimization. Furtherly, the weighted singular value thresholding (WSVT) operator is utilized to optimize the resulting nonconvex L1/2 minimization problem. Following this, our proposed denoiser is integrated with the CT reconstruction problem by alternating direction method of multipliers (ADMM) framework. Extensive experimental results on typical clinical CT images have demonstrated that our approach can further achieve better performance than popular approaches. This work was supported in part by the Educational Commission of Hunan Province of China under grant 21B0466, the National Natural Science Fund for Youth Programs under Grant 61906067, and the China Postdoctoral Science Foundation under Grant 2019M651415 and Grant 2020T130191. 2023-09-25T06:45:19Z 2023-09-25T06:45:19Z 2023 Journal Article Li, Y., Jiang, Y., Zhang, H., Liu, J., Ding, X. & Gui, G. (2023). Nonconvex L₁/₂- regularized nonlocal self-similarity denoiser for compressive sensing based CT reconstruction. Journal of the Franklin Institute, 360(6), 4172-4195. https://dx.doi.org/10.1016/j.jfranklin.2023.01.041 0016-0032 https://hdl.handle.net/10356/170665 10.1016/j.jfranklin.2023.01.041 2-s2.0-85149276001 6 360 4172 4195 en Journal of the Franklin Institute © 2023 The Franklin Institute. Published by Elsevier Inc. All rights reserved.
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Electrical and electronic engineering
Compressive Sensing
Computed Tomography Images
spellingShingle Engineering::Electrical and electronic engineering
Compressive Sensing
Computed Tomography Images
Li, Yunyi
Jiang, Yiqiu
Zhang, Hengmin
Liu, Jianxun
Ding, Xiangling
Gui, Guan
Nonconvex L₁/₂- regularized nonlocal self-similarity denoiser for compressive sensing based CT reconstruction
description Compressive sensing (CS) based computed tomography (CT) image reconstruction aims at reducing the radiation risk through sparse-view projection data. However, it is challenging to achieve satisfying image quality from incomplete projections. Recent works demonstrate the promising potential of nonconvex L1/2-norm in CS problem, while the applications on medical imaging are constrained by its nonconvexity. In this paper, we develop an L1/2-regularized nonlocal self-similarity (NSS) denoiser based CT reconstruction model, which combines with low-rank approximation and group sparse coding (GSC) framework. Concretely, we firstly split the CT reconstruction problem into two subproblems, then improve CT image quality furtherly using our proposed denoiser. Instead of optimizing the nonconvex problem under the perspective of GSC, we particularly reconstruct CT image via low-rank minimization based on two simple yet essential schemes, which build the equivalent relationship between GSC based denoiser and low-rank minimization. Furtherly, the weighted singular value thresholding (WSVT) operator is utilized to optimize the resulting nonconvex L1/2 minimization problem. Following this, our proposed denoiser is integrated with the CT reconstruction problem by alternating direction method of multipliers (ADMM) framework. Extensive experimental results on typical clinical CT images have demonstrated that our approach can further achieve better performance than popular approaches.
author2 School of Electrical and Electronic Engineering
author_facet School of Electrical and Electronic Engineering
Li, Yunyi
Jiang, Yiqiu
Zhang, Hengmin
Liu, Jianxun
Ding, Xiangling
Gui, Guan
format Article
author Li, Yunyi
Jiang, Yiqiu
Zhang, Hengmin
Liu, Jianxun
Ding, Xiangling
Gui, Guan
author_sort Li, Yunyi
title Nonconvex L₁/₂- regularized nonlocal self-similarity denoiser for compressive sensing based CT reconstruction
title_short Nonconvex L₁/₂- regularized nonlocal self-similarity denoiser for compressive sensing based CT reconstruction
title_full Nonconvex L₁/₂- regularized nonlocal self-similarity denoiser for compressive sensing based CT reconstruction
title_fullStr Nonconvex L₁/₂- regularized nonlocal self-similarity denoiser for compressive sensing based CT reconstruction
title_full_unstemmed Nonconvex L₁/₂- regularized nonlocal self-similarity denoiser for compressive sensing based CT reconstruction
title_sort nonconvex l₁/₂- regularized nonlocal self-similarity denoiser for compressive sensing based ct reconstruction
publishDate 2023
url https://hdl.handle.net/10356/170665
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