Sadre Robbie, Ophus Colin, Butko Anastasiia, Weber Gunther H
Computational Research Division, Lawrence Berkeley National Laboratory, 1 Cyclotron Road, Berkeley, CA94720, USA.
NCEM, Molecular Foundry, Lawrence Berkeley National Laboratory, 1 Cyclotron Road, Berkeley, CA94720, USA.
Microsc Microanal. 2021 Aug;27(4):804-814. doi: 10.1017/S1431927621000167.
Phase-contrast transmission electron microscopy (TEM) is a powerful tool for imaging the local atomic structure of materials. TEM has been used heavily in studies of defect structures of two-dimensional materials such as monolayer graphene due to its high dose efficiency. However, phase-contrast imaging can produce complex nonlinear contrast, even for weakly scattering samples. It is, therefore, difficult to develop fully automated analysis routines for phase-contrast TEM studies using conventional image processing tools. For automated analysis of large sample regions of graphene, one of the key problems is segmentation between the structure of interest and unwanted structures such as surface contaminant layers. In this study, we compare the performance of a conventional Bragg filtering method with a deep learning routine based on the U-Net architecture. We show that the deep learning method is more general, simpler to apply in practice, and produces more accurate and robust results than the conventional algorithm. We provide easily adaptable source code for all results in this paper and discuss potential applications for deep learning in fully automated TEM image analysis.
相衬透射电子显微镜(TEM)是一种用于成像材料局部原子结构的强大工具。由于其高剂量效率,TEM在二维材料(如单层石墨烯)的缺陷结构研究中得到了广泛应用。然而,即使对于弱散射样品,相衬成像也会产生复杂的非线性对比度。因此,使用传统图像处理工具为相衬TEM研究开发完全自动化的分析程序是困难的。对于石墨烯大样本区域的自动分析,关键问题之一是感兴趣结构与不需要的结构(如表面污染物层)之间的分割。在本研究中,我们将传统布拉格滤波方法的性能与基于U-Net架构的深度学习程序进行了比较。我们表明,深度学习方法更通用,在实践中应用更简单,并且比传统算法产生更准确、更稳健的结果。我们为本文的所有结果提供了易于适配的源代码,并讨论了深度学习在全自动TEM图像分析中的潜在应用。