Gregor Jens, Fessler Jeffrey A
Dept. of Electrical Engr. & Computer Science, Univ. of Tennessee, Knoxville, TN 37996.
Dept. of Electrical Engr. & Computer Science, Univ. of Michigan, Ann Arbor, MI 48109.
IEEE Trans Comput Imaging. 2015 Mar;1(1):44-55. doi: 10.1109/TCI.2015.2442511. Epub 2015 Jun 5.
Tomographic image reconstruction is often formulated as a regularized weighted least squares (RWLS) problem optimized by iterative algorithms that are either inherently algebraic or derived from a statistical point of view. This paper compares a modified version of SIRT (Simultaneous Iterative Reconstruction Technique), which is of the former type, with a version of SQS (Separable Quadratic Surrogates), which is of the latter type. We show that the two algorithms minimize the same criterion function using similar forms of preconditioned gradient descent. We present near-optimal relaxation for both based on eigenvalue bounds and include a heuristic extension for use with ordered subsets. We provide empirical evidence that SIRT and SQS converge at the same rate for all intents and purposes. For context, we compare their performance with an implementation of preconditioned conjugate gradient. The illustrative application is X-ray CT of luggage for aviation security.
断层图像重建通常被表述为一个正则化加权最小二乘(RWLS)问题,通过本质上是代数的或从统计角度推导出来的迭代算法进行优化。本文将前一种类型的改进版SIRT(同时迭代重建技术)与后一种类型的SQS(可分离二次替代)版本进行比较。我们表明,这两种算法使用类似形式的预处理梯度下降来最小化相同的准则函数。我们基于特征值界给出了两者的近似最优松弛,并包括一种用于有序子集的启发式扩展。我们提供了经验证据,表明SIRT和SQS在所有实际目的下收敛速度相同。作为背景,我们将它们的性能与预处理共轭梯度的实现进行比较。示例应用是用于航空安全的行李X射线CT。