Provably convergent coordinate descent in statistical tomographic reconstruction

S. S. Saquib, Jun Zheng, C. Bouman, K. Sauer
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引用次数: 13

Abstract

Statistical tomographic reconstruction algorithms generally require the efficient optimization of a functional. An algorithm known as iterative coordinate descent with Newton-Raphson updates (ICD/NR) has been shown to be much more computationally efficient than indirect optimization approaches based on the EM algorithm. However, while the ICD/NR algorithm has experimentally been shown to converge stably, no theoretical proof of convergence is known. We prove that a modified algorithm, which we call ICD functional substitution (ICD/FS), has guaranteed global convergence in addition to the computational efficiency of the ICD/NR. The ICD/FS method works by approximating the log likelihood at each pixel by an alternative quadratic functional. Experimental results show that the convergence speed of the globally convergent algorithm is nearly identical to that of ICD/NR.
统计层析重建中可证明的收敛坐标下降
统计层析重建算法通常需要对函数进行有效的优化。与基于EM算法的间接优化方法相比,Newton-Raphson更新迭代坐标下降(ICD/NR)算法的计算效率更高。然而,虽然ICD/NR算法已被实验证明是稳定收敛的,但没有已知的收敛理论证明。我们证明了一种改进的算法,我们称之为ICD功能替代(ICD/FS),除了保证ICD/NR的计算效率外,还保证了全局收敛。ICD/FS方法的工作原理是通过一个可选的二次泛函近似每个像素的对数似然。实验结果表明,全局收敛算法的收敛速度与ICD/NR算法几乎相同。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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