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DNS-Diff:用于低剂量CT图像重建的定向噪声抑制扩散模型

段惠中 强彦 李青 安洋 张智轩 翟彦珺 王景轩

计算机与现代化Issue(3):102-108,7.
计算机与现代化Issue(3):102-108,7.DOI:10.3969/j.issn.1006-2475.2026.03.014

DNS-Diff:用于低剂量CT图像重建的定向噪声抑制扩散模型

DNS-Diff:Directional Noise Suppression Diffusion Model for Low-dose CT Image Reconstruction

段惠中 1强彦 1李青 1安洋 1张智轩 1翟彦珺 2王景轩3

作者信息

  • 1. 中北大学软件学院,山西 太原 030024
  • 2. 山西医科大学汾阳学院,山西 汾阳 032200
  • 3. 天津国际旅行卫生保健中心(天津海关口岸门诊部),天津 300456
  • 折叠

摘要

Abstract

Low dose CT images are prone to increased noise and artifacts due to insufficient photons and electronic noise.Re-cently,some studies have attempted to use diffusion models to address the issues of excessive smoothing and unstable training en-countered in previous deep learning-based denoising models.However,diffusion models need to cover complex noise distribu-tions and learn fine-grained reconstruction,thus requiring a large number of training epochs.This article proposes a diffusion model based on feature extraction for directed noise suppression in Low-Dose CT(LDCT)denoising,called DNS-Diff.Firstly,DNS-Diff utilizes LDCT images to extract features such as background,details,and edges,and employs gating method to sup-press noise and content related to the original image features,significantly reducing the number of training rounds.This is due to the rich information of LDCT images used as the starting point of the sampling process.At the same time,in order to reduce the artifacts introduced during the denoising process,obtain good visualization results,and use computing resources as little as pos-sible,this paper designs a post-processing module based on traditional methods,such as bilateral filtering and Gaussian filter-ing,etc.,which can adjust the background,optimize details,and remove artifacts to distinguish core differences faster and better.

关键词

低剂量CT/图像后处理/去噪/定向噪声抑制/扩散模型

Key words

low-dose CT/image post-processing/denoising/directional noise suppression/diffusion model

分类

信息技术与安全科学

引用本文复制引用

段惠中,强彦,李青,安洋,张智轩,翟彦珺,王景轩..DNS-Diff:用于低剂量CT图像重建的定向噪声抑制扩散模型[J].计算机与现代化,2026,(3):102-108,7.

基金项目

国家自然科学基金面上项目(62376183) (62376183)

国家资助博士后研究人员计划项目(GZC20241586) (GZC20241586)

中国博士后科学基金面上项目(2025M772904) (2025M772904)

山西省基础研究计划项目(202403021212184,202203021212114) (202403021212184,202203021212114)

山西省高等学校科技创新项目(2024L181) (2024L181)

计算机与现代化

1006-2475

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