Acta Photonica Sinica, Volume. 44, Issue 5, 517002(2015)
Analysis of Iterative Denoising Method in Sparse Computed Tomography Reconstruction
The iterative denoising models and their solving algorithms in the sparse computed tomoyraphy reconstruction were researched. The theoretical derivations and simulation experiments demonstrate that the Algebraic Reconstruction Technique (ART) have the denoising ability. Two models for the sparse computed tomoyraphy denoise were proposed. One is based on the Euclidean norm inequality constraint, and the other is based on the infinity norm inequality constraint. Inspaired by the iterative method in ART, we use projection onto convex sets method to solve these two denoising models. The algorithm derivation is provided. The results indicate that the Euclidean norm based denoise model is better than the infinity norm based denoise model, and the ART method has the ability of denoising.
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LI Hong-xiao, CHEN Xiao-dong, LI Jun-wei, WANG Yi, YU Dao-yin. Analysis of Iterative Denoising Method in Sparse Computed Tomography Reconstruction[J]. Acta Photonica Sinica, 2015, 44(5): 517002
Received: Dec. 22, 2014
Accepted: --
Published Online: May. 26, 2015
The Author Email: Hong-xiao LI (hxli@tju.edu.cn)