Ptychography is a well-studied phase imaging method that makes non-invasive imaging possible at a nanometer scale. It has developed into a mainstream technique with various applications across a range of areas such as material science or the defense industry. One major drawback of ptychography is the long data acquisition time due to the high overlap requirement between adjacent illumination areas to achieve a reasonable reconstruction. Traditional approaches with reduced overlap between scanning areas result in reconstructions with artifacts. In this paper, we propose complementing sparsely acquired or undersampled data with data sampled from a deep generative network to satisfy the oversampling requirement in ptychography. Because the deep generative network is pre-trained and its output can be computed as we collect data, the experimental data and the time to acquire the data can be reduced. We validate the method by presenting the reconstruction quality compared to the previously proposed and traditional approaches and comment on the strengths and drawbacks of the proposed approach.
翻译:地形学是一种研究周全的阶段成像方法,它使纳米规模的非侵入成像成为可能;它已经发展成为主流技术,在材料科学或国防工业等一系列领域应用了各种应用; 地形学的一个主要缺点是,相邻的照明区需要大量重叠才能实现合理的重建,因此数据采集时间很长; 扫描区重叠减少的传统方法导致与文物的重建; 本文建议用从深层基因化网络取样的数据来补充很少获得或未得到充分采样的数据,以满足地形学中的过度采样要求。 因为深基因化网络是预先训练的,其产出可以随着我们收集数据、实验数据和获取数据的时间可以减少而计算。 我们通过介绍与先前提出的传统方法相比的重建质量,并评论拟议方法的长处和短处,从而验证这一方法。