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An improved statistical iterative algorithm for sparse-view and limited-angle CT image reconstruction

机译:一种改进的统计迭代算法用于稀疏视图和有限角度CT图像重建

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摘要

Because radiation is harmful to patients, it is important to reduce X-ray exposure in the clinic. For CT, reconstructions from sparse views or limited angle tomography are being used more frequently for low dose imaging. However, insufficient sampling data causes severe streak artifacts in images reconstructed using conventional methods. To solve this issue, various methods have recently been developed. In this paper, we improve a statistical iterative algorithm based on the minimization of the image total variation (TV) for sparse or limited projection views during CT image reconstruction. Considering the statistical nature of the projection data, the TV is performed under a penalized weighted least-squares (PWLS-TV) criterion. During implementation of the proposed method, the image reconstructed using the filtered back-projection (FBP) method is used as the initial value of the first iteration. Next, the feature refinement (FR) step is performed after each PWLS-TV iteration to extract the fine features lost in the TV minimization, which we refer to as ‘PWLS-TV-FR’.
机译:由于辐射对患者有害,因此减少诊所中的X射线暴露非常重要。对于CT,从稀疏视图或有限角度断层扫描中进行的重建越来越多地用于低剂量成像。但是,采样数据不足会导致在使用常规方法重建的图像中出现严重的条纹伪影。为了解决这个问题,最近已经开发了各种方法。在本文中,我们基于CT图像重建过程中稀疏或有限投影视图的图像总变化(TV)的最小化,改进了统计迭代算法。考虑到投影数据的统计性质,在惩罚加权最小二乘(PWLS-TV)准则下执行电视。在提出的方法的实施过程中,使用滤波反投影(FBP)方法重建的图像用作第一次迭代的初始值。接下来,在每次PWLS-TV迭代之后执行特征优化(FR)步骤,以提取在电视最小化中丢失的精细特征,我们将其称为“ PWLS-TV-FR”。

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