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An Iterative Reconstruction Method for CT Metal Artifact Reduction Using L1 Norm Data Fidelity and Nonlocal TV Regularization

机译:使用L1规范数据保真度和非局部电视正常化CT金属伪影减少的迭代重构方法

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This paper deals with the so-called Metal Artifact Reduction (MAR) in CT. This problem aims at reconstructing a CT image with reduced metal induced artifact when the object contains metallic parts inside. We propose a new iterative reconstruction method to the MAR problem, which uses the L_1 norm for data fidelity term and Nonlocal TV regularization. In ordinary iterative reconstruction for CT, the least-squares error ‖ Ax - b ‖_2~2 is used as data fidelity term for image reconstruction. However, it is well-known that the least-squares criterion is sensitive to the existence of abnormal (inconsistent) data in the measurement b, such as projection data passing through the metallic parts in this work. A simple reasonable method to identify the location of metallic parts in the sinogram and exclude the corresponding projection data from the data fitting is to use the L_1 norm error ‖ Ax - b ‖_1~1. Furthermore, the power of proposed method to reduce the metal artifact can be significantly improved by adding Nonlocal Total Variation (NLTV) regularization term into the cost function. Compared to existing approaches to the MAR problem, the proposed method possesses the following attractive feature. Almost every approach to MAR consists of two-step computations. The first step detects the metallic parts in the sinogram and the second step performs image reconstruction after interpolating or excluding the projection data corresponding to the identified metallic parts. On the other hand, the proposed method consists of only a single computational step, i.e. single iterative minimization of a convex cost function, leading to smartly unifying the two steps into a single step.
机译:本文涉及CT中所谓的金属伪影(MAR)。当物体含有内部的金属部件时,该问题旨在重建具有减少金属诱导的工件的CT图像。我们向MAR问题提出了一种新的迭代重建方法,它利用L_1标准进行数据保真术语和非识别电视正常化。在CT的普通迭代重建中,最小二乘误差‖AX-B‖_2〜2用作图像重建的数据保真术语。然而,众所周知,最小二乘标准对测量B中的异常(不一致)数据的存在敏感,例如通过该工作中的金属部件的投影数据。一种简单的合理方法,用于识别铭顶中金属部件的位置,并从数据配件中排除相应的投影数据是使用L_1常态误差‖AX-B‖_1〜1。此外,通过在成本函数中添加非识别量总变化(NLTV)正则化术语,可以显着改善所提出的减少金属伪像的方法。与现有的MAR问题的方法相比,所提出的方法具有以下有吸引力的特征。几乎每种方法都包括两步计算。第一步检测据识别或排除对应于所识别的金属部件的投影数据之后的第二步骤中的第一步骤,第二步骤在模谱中执行图像重建。另一方面,所提出的方法仅包括单个计算步骤,即凸起成本函数的单次迭代最小化,导致将这两个步骤巧妙地统一到单个步骤中。

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