IADR-Net:一种结合迭代优化与细节注意力增强的稀疏角CT重建网络
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中北大学信息与通信工程学院 太原 030051

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TP391;TP381;TN91

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自然科学研究面上项目(202303021211148)、山西省自然科学基金青年项目(202203021222038)、国家自然科学基金(62401517)项目资助


IADR-Net: A sparse-view CT reconstruction network with iterative optimization and dual-path attention enhancement
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School of Information and Communication Engineering, North University of China,Taiyuan 030051, China

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    摘要:

    稀疏角CT是临床CT成像中减少X射线辐射剂量的有效方法。然而,由于稀疏采样造成的投影不完备,图像重建中含有明显的条纹伪影。为解决这一问题,本文提出一种基于迭代优化展开的稀疏角CT图像重建网络IADR-Net,该网络采用独特的双路并行架构设计,包含迭代重建子网络和局部-全局注意力网络(GLONA)细节恢复子网络两个核心组件。其中,迭代重建子网络基于快速迭代软阈值算法框架,通过可学习非线性变换和自适应阈值实现投影到图像重建;GLONA子网络则采用局部与全局特征并行的双分支结构,并通过自调节融合模块有效保持图像细节。两个子网络协同工作,分别专注于基于迭代展开的伪影消除和基于注意力机制的细节增强,最终通过特征融合输出高质量CT图像。在Mayo数据集的实验结果表明,该方法在伪影抑制和结构保持方面相较若干代表算法展现出更有性能,为临床稀疏角CT成像提供了有效的解决方案。

    Abstract:

    Sparse angle CT is an effective method to reduce X-ray radiation dose in clinical CT imaging. However, due to the incomplete projection caused by sparse sampling, the image reconstruction contains obvious fringe artifacts. In order to solve this problem, this paper proposes a sparse angle CT image reconstruction network based on iterative optimization deployment, IADR-Net, which adopts a unique dual-channel parallel architecture design, and includes two core components: Iterative reconstruction sub-network and global-local attention network (GLONA) detail recovery sub-network. Among them, the iterative reconstruction sub-network is based on the framework of fast iterative soft threshold algorithm, and realizes projection-to-image reconstruction through learnable nonlinear transformation and adaptive thresholding. The GLONA sub-network adopts a double-branch structure with parallel local and global features, and effectively maintains the image details through the self-adjusting fusion module. The two sub-networks work together to focus on artifact removal based on iterative expansion and detail enhancement based on attention mechanism, respectively, and finally output high-quality CT images through feature fusion. Experimental results on the Mayo dataset show that the proposed method has better performance than several representative algorithms in terms of artifact suppression and structure preservation, and provides an effective solution for clinical sparse angle CT imaging.

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杨林鹏,刘祎,梁旭东,桂志国. IADR-Net:一种结合迭代优化与细节注意力增强的稀疏角CT重建网络[J].电子测量技术,2026,49(4):190-203

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  • 在线发布日期: 2026-04-16
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