Ptychography, as an essential tool for high-resolution and nondestructive material characterization, presents a challenging large-scale nonlinear and non-convex inverse problem; however, its intrinsic photon statistics create clear opportunities for statistical-based deep learning approaches to tackle these challenges, which has been underexplored. In this work, we explore normalizing flows to obtain a surrogate for the high-dimensional posterior, which also enables the characterization of the uncertainty associated with the reconstruction: an extremely desirable capability when judging the reconstruction quality in the absence of ground truth, spotting spurious artifacts and guiding future experiments using the returned uncertainty patterns. We demonstrate the performance of the proposed method on a synthetic sample with added noise and in various physical experimental settings.
翻译:作为高分辨率和非破坏性材料定性的基本工具,地形学是一个具有挑战性的大规模非线性和非线性反面问题;然而,其固有的光子统计为基于统计的深层学习方法提供了明确的机会,以应对这些挑战,而这些挑战一直没有得到充分探讨。在这项工作中,我们探索使流动正常化,以获得高维子星的替代物,这也使得能够对与重建有关的不确定性进行定性:在没有地面真相的情况下判断重建质量时,一种极为理想的能力,发现虚假的文物,并用返回的不确定性模式指导今后的实验。我们展示了拟议方法在合成样品上的表现,增加了噪音,并在各种物理实验环境中。