计算机科学
对偶(语法数字)
迭代重建
领域(数学分析)
人工智能
算法
数学
文学类
数学分析
艺术
作者
Chun Yang,Dian Sheng,Bo Yang,Wenfeng Zheng,Chao Liu
出处
期刊:IEEE Signal Processing Letters
[Institute of Electrical and Electronics Engineers]
日期:2024-01-01
卷期号:31: 1279-1283
被引量:51
标识
DOI:10.1109/lsp.2024.3392690
摘要
To reduce the radiation dose, sparse-view computed tomography (CT) reconstruction has been proposed, aiming to recover high-quality CT images from sparsely sampled sinogram. To eliminate the artifacts present in sparse-view CT images, a new dual-domain diffusion model (DDDM) is proposed, which is composed of a sinogram upgrading module (SUM) and an image refining module (IRM) connected in series. In the sinogram domain, a novel degrading and upgrading framework is defined, in which SUM is trained to upgrade sparse-view sinograms step by step to reverse the degradation process of CT images caused by successive down-sampling of scanning views. In the image domain, IRM adopts an improved denoising diffusion framework to further reduce remaining artifacts and restore image details, where a skip connection from the original sparseview sinogram is introduced to constrain the generation of details. Our DDDM shows significant improvement over deep-learning baseline models in both classical similarity metrics and perceptual loss, and has good generalization to untrained organs. We release our code at https://github.com/YC-Markus/code-for-DDDM.
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