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Fast X-Ray CT Image Reconstruction Using a Linearized Augmented Lagrangian Method With Ordered Subsets

机译:快速线性X射线CT图像重建,使用有序子集的线性增强拉格朗日方法

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摘要

Augmented Lagrangian (AL) methods for solving convex optimization problems with linear constraints are attractive for imaging applications with composite cost functions due to the empirical fast convergence rate under weak conditions. However, for problems such as X-ray computed tomography (CT) image reconstruction, where the inner least-squares problem is challenging and requires iterations, AL methods can be slow. This paper focuses on solving regularized (weighted) least-squares problems using a linearized variant of AL methods that replaces the quadratic AL penalty term in the scaled augmented Lagrangian with its separable quadratic surrogate function, leading to a simpler ordered-subsets (OS) accelerable splitting-based algorithm, OS-LALM. To further accelerate the proposed algorithm, we use a second-order recursive system analysis to design a deterministic downward continuation approach that avoids tedious parameter tuning and provides fast convergence. Experimental results show that the proposed algorithm significantly accelerates the convergence of X-ray CT image reconstruction with negligible overhead and can reduce OS artifacts when using many subsets.
机译:由于在弱条件下的经验快速收敛速度,用于解决具有线性约束的凸优化问题的增强拉格朗日(AL)方法对于具有复合成本函数的成像应用很有吸引力。但是,对于诸如X射线计算机断层扫描(CT)图像重建之类的问题,内最小二乘问题极具挑战性,并且需要迭代,因此AL方法可能会很慢。本文着重于使用AL方法的线性化变体来解决正则化(加权)最小二乘问题,该方法以其可扩展的二次替代函数替换了缩放后的拉格朗日式中的二次AL惩罚项,从而简化了可加速的有序子集基于拆分的算法,OS-LALM。为了进一步加速所提出的算法,我们使用了二阶递归系统分析来设计确定性的向下连续方法,该方法避免了繁琐的参数调整并提供了快速收敛性。实验结果表明,该算法大大提高了X射线CT图像重建的收敛速度,且开销很小,并且在使用多个子集时可以减少OS伪像。

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