Lee Woojin, Nam Hyeong Soo, Kim Young Gon, Kim Yong Ju, Lee Jun Hee, Yoo Hongki
Department of Mechanical Engineering, KAIST, Daejeon, 34141, Republic of Korea.
COXEM Co. Ltd., Daejeon, 34025, Republic of Korea.
Sci Rep. 2021 Oct 22;11(1):20933. doi: 10.1038/s41598-021-00412-5.
Scanning electron microscopy (SEM) is a high-resolution imaging technique with subnanometer spatial resolution that is widely used in materials science, basic science, and nanofabrication. However, conducting SEM is rather complex due to the nature of using an electron beam and the many parameters that must be adjusted to acquire high-quality images. Only trained operators can use SEM equipment properly, meaning that the use of SEM is restricted. To broaden the usability of SEM, we propose an autofocus method for a SEM system based on a dual deep learning network, which consists of an autofocusing-evaluation network (AENet) and an autofocusing-control network (ACNet). The AENet was designed to evaluate the quality of given images, with scores ranging from 0 to 9 regardless of the magnification. The ACNet can delicately control the focus of SEM online based on the AENet's outputs for any lateral sample position and magnification. The results of these dual networks showed successful autofocus performance on three trained samples. Moreover, the robustness of the proposed method was demonstrated by autofocusing on unseen samples. We expect that our autofocusing system will not only contribute to expanding the versatility of SEM but will also be applicable to various microscopes.
扫描电子显微镜(SEM)是一种具有亚纳米空间分辨率的高分辨率成像技术,广泛应用于材料科学、基础科学和纳米制造领域。然而,由于使用电子束的特性以及获取高质量图像必须调整的众多参数,进行扫描电子显微镜操作相当复杂。只有经过培训的操作人员才能正确使用扫描电子显微镜设备,这意味着扫描电子显微镜的使用受到限制。为了拓宽扫描电子显微镜的可用性,我们提出了一种基于双深度学习网络的扫描电子显微镜系统自动对焦方法,该网络由自动对焦评估网络(AENet)和自动对焦控制网络(ACNet)组成。AENet旨在评估给定图像的质量,无论放大倍数如何,分数范围为0到9。ACNet可以根据AENet的输出,针对任何横向样品位置和放大倍数在线精确控制扫描电子显微镜的焦点。这两个网络的结果表明,在三个经过训练的样品上实现了成功的自动对焦性能。此外,通过对未见过的样品进行自动对焦,证明了所提出方法的鲁棒性。我们期望我们的自动对焦系统不仅有助于扩展扫描电子显微镜的通用性,还将适用于各种显微镜。