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Fast alternating projection methods for constrained tomographic reconstruction

机译:用于约束层析成像重建的快速交替投影方法

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摘要

The alternating projection algorithms are easy to implement and effective for large-scale complex optimization problems, such as constrained reconstruction of X-ray computed tomography (CT). A typical method is to use projection onto convex sets (POCS) for data fidelity, nonnegative constraints combined with total variation (TV) minimization (so called TV-POCS) for sparse-view CT reconstruction. However, this type of method relies on empirically selected parameters for satisfactory reconstruction and is generally slow and lack of convergence analysis. In this work, we use a convex feasibility set approach to address the problems associated with TV-POCS and propose a framework using full sequential alternating projections or POCS (FS-POCS) to find the solution in the intersection of convex constraints of bounded TV function, bounded data fidelity error and non-negativity. The rationale behind FS-POCS is that the mathematically optimal solution of the constrained objective function may not be the physically optimal solution. The breakdown of constrained reconstruction into an intersection of several feasible sets can lead to faster convergence and better quantification of reconstruction parameters in a physical meaningful way than that in an empirical way of trial-and-error. In addition, for large-scale optimization problems, first order methods are usually used. Not only is the condition for convergence of gradient-based methods derived, but also a primal-dual hybrid gradient (PDHG) method is used for fast convergence of bounded TV. The newly proposed FS-POCS is evaluated and compared with TV-POCS and another convex feasibility projection method (CPTV) using both digital phantom and pseudo-real CT data to show its superior performance on reconstruction speed, image quality and quantification.
机译:交替投影算法易于实现,并且对于大规模复杂的优化问题(例如X射线计算机断层扫描(CT)的约束重建)有效。一种典型的方法是将凸集投影(POCS)用于数据保真度,将非负约束与总变化量(TV)最小化(所谓的TV-POCS)结合使用,以进行稀疏CT重建。但是,这种方法依靠经验选择的参数来获得令人满意的重建效果,并且通常速度较慢且缺乏收敛性分析。在这项工作中,我们使用凸可行性集方法来解决与TV-POCS相关的问题,并提出一个使用全顺序交替投影或POCS(FS-POCS)的框架以在有界电视功能的凸约束的交集中找到解决方案,边界数据保真度误差和非负性。 FS-POCS的基本原理是受约束目标函数的数学最优解可能不是物理最优解。将约束重建分解为几个可行集的交集,可以以物理上有意义的方式比以经验的试错法更快地收敛并更好地量化重建参数。另外,对于大规模优化问题,通常使用一阶方法。不仅导出了基于梯度的方法收敛的条件,而且原始-双重混合梯度(PDHG)方法用于有界电视的快速收敛。对新提出的FS-POCS进行了评估,并与TV-POCS和另一种使用数字幻象和伪实CT数据的凸可行投影方法(CPTV)进行了比较,以显示其在重建速度,图像质量和量化方面的卓越性能。

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