Zhao Yifang, Koike Suguru, Nakama Rikuto, Ihara Shiro, Mitsuhara Masatoshi, Murayama Mitsuhiro, Hata Satoshi, Saito Hikaru
Department of Applied Science for Electronics and Materials, Kyushu University, Fukuoka, 816-8580, Japan.
Department of Energy Science and Engineering, Kyushu University, Fukuoka, 819-0395, Japan.
Sci Rep. 2021 Oct 26;11(1):20720. doi: 10.1038/s41598-021-99914-5.
Scanning transmission electron microscopy (STEM) is suitable for visualizing the inside of a relatively thick specimen than the conventional transmission electron microscopy, whose resolution is limited by the chromatic aberration of image forming lenses, and thus, the STEM mode has been employed frequently for computed electron tomography based three-dimensional (3D) structural characterization and combined with analytical methods such as annular dark field imaging or spectroscopies. However, the image quality of STEM is severely suffered by noise or artifacts especially when rapid imaging, in the order of millisecond per frame or faster, is pursued. Here we demonstrate a deep-learning-assisted rapid STEM tomography, which visualizes 3D dislocation arrangement only within five-second acquisition of all the tilt-series images even in a 300 nm thick steel specimen. The developed method offers a new platform for various in situ or operando 3D microanalyses in which dealing with relatively thick specimens or covering media like liquid cells are required.
扫描透射电子显微镜(STEM)比传统透射电子显微镜更适合观察相对较厚样品的内部,传统透射电子显微镜的分辨率受成像透镜色差的限制,因此,STEM模式经常用于基于电子计算机断层扫描的三维(3D)结构表征,并与诸如环形暗场成像或光谱学等分析方法相结合。然而,STEM的图像质量会受到噪声或伪像的严重影响,特别是在追求每秒毫秒级或更快的快速成像时。在此,我们展示了一种深度学习辅助的快速STEM断层扫描技术,即使在300纳米厚的钢样品中,也能在仅五秒内采集所有倾斜系列图像的情况下可视化3D位错排列。所开发的方法为各种原位或操作中的3D微分析提供了一个新平台,其中需要处理相对较厚的样品或覆盖诸如液体池等介质。