Fast conjugate gradient algorithm extension for analyzer-based imaging reconstruction

Oriol Caudevilla, J. Brankov
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Abstract

This paper presents an extension of the classic Conjugate Gradient Algorithm. Motivated by the Analyzer-Based Imaging inverse problem, the novel method maximizes the Poisson regularized log-likelihood with a non-linear transformation of parameter faster than other solutions. The new approach takes advantage of the special properties of the Poisson log-likelihood to conjugate each ascend direction with respect all the previous directions taken by the algorithm. Our solution is compared with the general solution for non-quadratic unconstrained problems: the Polak- Ribiere formula. Both methods are applied to the ABI reconstruction problem.
基于分析仪成像重建的快速共轭梯度算法扩展
本文提出了经典共轭梯度算法的推广。该方法以基于分析仪的成像反问题为动力,通过参数的非线性变换实现泊松正则化对数似然的最大化,比其他方法更快。该方法利用泊松对数似然的特殊性质,将每个上升方向与之前算法所取的所有方向进行共轭。我们的解与非二次型无约束问题的一般解Polak- Ribiere公式进行了比较。这两种方法都应用于ABI重构问题。
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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