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Main Authors: Wang, Lianfang, Chen, Zhangling, Liu, Zhifang, Li, Yutong, Zhao, Yunsong, Li, Hongwei, Chang, Huibin
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2402.01175
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author Wang, Lianfang
Chen, Zhangling
Liu, Zhifang
Li, Yutong
Zhao, Yunsong
Li, Hongwei
Chang, Huibin
author_facet Wang, Lianfang
Chen, Zhangling
Liu, Zhifang
Li, Yutong
Zhao, Yunsong
Li, Hongwei
Chang, Huibin
contents Direct reconstruction through filtered back projection engenders metal artifacts in polychromatic computed tomography images, attributed to highly attenuating implants, which further poses great challenges for subsequent image analysis. Inpainting the metal trace directly in the Radon domain for the extant variational method leads to strong edge diffusion and potential inherent artifacts. With normalization based on pre-segmentation, the inpainted outcome can be notably ameliorated. However, its reconstructive fidelity is heavily contingent on the precision of the presegmentation, and highly accurate segmentation of images with metal artifacts is non-trivial in actuality. In this paper, we propose a nonconvex weighted variational approach for metal artifact reduction. Specifically, in lieu of employing a binary function with zeros in the metal trace, an adaptive weight function is designed in the Radon domain, with zeros in the overlapping regions of multiple disjoint metals as well as areas of highly attenuated projections, and the inverse square root of the measured projection in other regions. A nonconvex L1-alpha L2 regularization term is incorporated to further enhance edge contrast, alongside a box-constraint in the image domain. Efficient first-order primal-dual algorithms, proven to be globally convergent and of low computational cost owing to the closed-form solution of all subproblems, are devised to resolve such a constrained nonconvex model. Both simulated and real experiments are conducted with comparisons to other variational algorithms, validating the superiority of the presented method. Especially in comparison to Reweighted JSR, our proposed algorithm can curtail the total computational cost to at most one-third, and for the case of inaccurate pre-segmentation, the recovery outcomes by the proposed algorithms are notably enhanced.
format Preprint
id arxiv_https___arxiv_org_abs_2402_01175
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Nonconvex weighted variational metal artifacts removal via convergent primal-dual algorithms
Wang, Lianfang
Chen, Zhangling
Liu, Zhifang
Li, Yutong
Zhao, Yunsong
Li, Hongwei
Chang, Huibin
Optimization and Control
Direct reconstruction through filtered back projection engenders metal artifacts in polychromatic computed tomography images, attributed to highly attenuating implants, which further poses great challenges for subsequent image analysis. Inpainting the metal trace directly in the Radon domain for the extant variational method leads to strong edge diffusion and potential inherent artifacts. With normalization based on pre-segmentation, the inpainted outcome can be notably ameliorated. However, its reconstructive fidelity is heavily contingent on the precision of the presegmentation, and highly accurate segmentation of images with metal artifacts is non-trivial in actuality. In this paper, we propose a nonconvex weighted variational approach for metal artifact reduction. Specifically, in lieu of employing a binary function with zeros in the metal trace, an adaptive weight function is designed in the Radon domain, with zeros in the overlapping regions of multiple disjoint metals as well as areas of highly attenuated projections, and the inverse square root of the measured projection in other regions. A nonconvex L1-alpha L2 regularization term is incorporated to further enhance edge contrast, alongside a box-constraint in the image domain. Efficient first-order primal-dual algorithms, proven to be globally convergent and of low computational cost owing to the closed-form solution of all subproblems, are devised to resolve such a constrained nonconvex model. Both simulated and real experiments are conducted with comparisons to other variational algorithms, validating the superiority of the presented method. Especially in comparison to Reweighted JSR, our proposed algorithm can curtail the total computational cost to at most one-third, and for the case of inaccurate pre-segmentation, the recovery outcomes by the proposed algorithms are notably enhanced.
title Nonconvex weighted variational metal artifacts removal via convergent primal-dual algorithms
topic Optimization and Control
url https://arxiv.org/abs/2402.01175