Schloz Marcel, Pekin Thomas Christopher, Chen Zhen, Van den Broek Wouter, Muller David Anthony, Koch Christoph Tobias
Opt Express. 2020 Sep 14;28(19):28306-28323. doi: 10.1364/OE.396925.
The overdetermination of the mathematical problem underlying ptychography is reduced by a host of experimentally more desirable settings. Furthermore, reconstruction of the sample-induced phase shift is typically limited by uncertainty in the experimental parameters and finite sample thicknesses. Presented is a conjugate gradient descent algorithm, regularized optimization for ptychography (ROP), that recovers the partially known experimental parameters along with the phase shift, improves resolution by incorporating the multislice formalism to treat finite sample thicknesses, and includes regularization in the optimization process, thus achieving reliable results from noisy data with severely reduced and underdetermined information.
通过一系列在实验上更理想的设置,减少了叠层成像术所基于的数学问题的过度确定性。此外,样品诱导相移的重建通常受实验参数的不确定性和有限的样品厚度限制。本文提出了一种共轭梯度下降算法,即叠层成像术的正则化优化(ROP),该算法可恢复部分已知的实验参数以及相移,通过纳入多层形式来处理有限的样品厚度来提高分辨率,并在优化过程中包含正则化,从而从具有大量减少和欠定信息的噪声数据中获得可靠结果。