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Article type: Research Article
Authors: Yang, Tiejuna | Tang, Lub; * | Tang, Qib | Li, Leia
Affiliations: [a] School of Artificial Intelligence and Big Data, Henan University of Technology, Zhengzhou, Henan, China | [b] School of Information Engineering, Zhengzhou Institute of Finance and Economics, Zhengzhou, Henan, China
Correspondence: [*] Corresponding author: Lu Tang, School of Information Engineering, Zhengzhou Institute of Finance and Economics, Zhengzhou, Henan 450044, China. Tel.: +86 13253371426; E-mail: [email protected].
Abstract: OBJECTIVE:In order to solve the blurred structural details and over-smoothing effects in sparse representation dictionary learning reconstruction algorithm, this study aims to test sparse angle CT reconstruction with weighted dictionary learning algorithm based on adaptive Group-Sparsity Regularization (AGSR-SART). METHODS:First, a new similarity measure is defined in which Covariance is introduced into Euclidean distance, Non-local image patches are adaptively divided into groups of different sizes as the basic unit of sparse representation. Second, the weight factor of the regular constraint terms is designed through the residuals represented by the dictionary, so that the algorithm takes different smoothing effects on different regions of the image during the iterative process. The sparse reconstructed image is modified according to the difference between the estimated value and the intermediate image. Last, The SBI (Split Bregman Iteration) iterative algorithm is used to solve the objective function. An abdominal image, a pelvic image and a thoracic image are employed to evaluate performance of the proposed method. RESULTS:In terms of quantitative evaluations, experimental results show that new algorithm yields PSNR of 48.20, the maximum SSIM of 99.06% and the minimum MAE of 0.0028. CONCLUSIONS:This study demonstrates that new algorithm can better preserve structural details in reconstructed CT images. It eliminates the effect of excessive smoothing in sparse angle reconstruction, enhances the sparseness and non-local self-similarity of the image, and thus it is superior to several existing reconstruction algorithms.
Keywords: Adaptive group-sparsity regularization, dictionary learning, spares angle, CT reconstruction
DOI: 10.3233/XST-210839
Journal: Journal of X-Ray Science and Technology, vol. 29, no. 3, pp. 435-452, 2021
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