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Adaptive Prior Patch Size Based Sparse-View CT Reconstruction Algorithm

机译:基于自适应先验补丁大小的稀疏CT重建算法

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Compressed sensing (CS) reconstruction methods employing sparsity regularization and prior constraints are successfully applied in sparse-view computed tomography (CT) reconstruction and yield high-quality images compared with other low-dose imaging methods. In this paper, we proposed an adaptive prior patch size (APPS) strategy in sparse-view CT reconstruction. The method adopts sparse representation (SR) using adaptive patch size instead of a constant one to synthesize prior image of higher quality, because the optimal patch size should vary from each distribution range of local feature. The simulation experiments show that the proposed strategy has the better performance than the method with fixed patch size in terms of artifact reduction and edge preservation.
机译:与其他低剂量成像方法相比,采用稀疏正则化和先验约束的压缩传感(CS)重建方法已成功应用于稀疏视图计算机断层扫描(CT)重建,并产生了高质量的图像。在本文中,我们提出了一种在稀疏视图CT重建中的自适应先验斑块大小(APPS)策略。该方法采用自适应贴片大小的稀疏表示(SR)而不是常数来合成更高质量的先验图像,因为最佳贴片大小应随局部特征的每个分布范围而变化。仿真实验表明,所提出的策略在减少伪像和边缘保留方面比具有固定补丁大小的方法具有更好的性能。

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