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首页> 外文期刊>Inverse problems and imaging >NUMERICAL OPTIMIZATION ALGORITHMS FOR WAVEFRONT PHASE RETRIEVAL FROM MULTIPLE MEASUREMENTS
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NUMERICAL OPTIMIZATION ALGORITHMS FOR WAVEFRONT PHASE RETRIEVAL FROM MULTIPLE MEASUREMENTS

机译:多重测量的波前阶段检索的数值优化算法

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摘要

Wavefront phase retrieval from a set of intensity measurements can be formulated as an optimization problem. Two nonconvex models (MLP and its variant LS) based on maximum likelihood estimation are investigated in this paper. We derive numerical optimization algorithms for real-valued function of complex variables and apply them to solve the wavefront phase retrieval problem efficiently. Numerical simulation is given with application to three test examples. The LS model shows better numerical performance than that of the MLP model. An explanation for this is that the distribution of the eigenvalues of Hessian matrix of the LS model is more clustered than that of the MLP model. We find that the LBFGS method shows more robust performance and takes fewer calculations than other line search methods for this problem.
机译:可以将来自一组强度测量的波前相位检索作为优化问题。 本文研究了基于最大似然估计的两个非透露模型(MLP及其变体LS)。 我们推导了数值优化算法,用于复杂变量的实值函数,并应用它们以有效地解决波前相位检索问题。 使用应用于三个测试示例的数值模拟。 LS模型显示比MLP模型更好的数值性能。 对此的解释是,LS模型的Hessian矩阵的特征值的分布比MLP模型更加集群。 我们发现LBFGS方法显示更强大的性能,而且比其他线路搜索方法更少的计算。

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