Dou Zhipeng, Qian Jianqiang, Li Yingzi, Lin Rui, Wang Jianhai, Cheng Peng, Xu Zeyu
School of Physics, Beihang University, Beijing 100083, China.
Beilstein J Nanotechnol. 2021 Jul 29;12:775-785. doi: 10.3762/bjnano.12.61. eCollection 2021.
Atomic force microscopy (AFM) has been an important tool for nanoscale imaging and characterization with atomic and subatomic resolution. Theoretical investigations are getting highly important for the interpretation of AFM images. Researchers have used molecular simulation to examine the AFM imaging mechanism. With a recent flurry of researches applying machine learning to AFM, AFM images obtained from molecular simulation have also been used as training data. However, the simulation is incredibly time consuming. In this paper, we apply super-resolution methods, including compressed sensing and deep learning methods, to reconstruct simulated images and to reduce simulation time. Several molecular simulation energy maps under different conditions are presented to demonstrate the performance of reconstruction algorithms. Through the analysis of reconstructed results, we find that both presented algorithms could complete the reconstruction with good quality and greatly reduce simulation time. Moreover, the super-resolution methods can be used to speed up the generation of training data and vary simulation resolution for AFM machine learning.
原子力显微镜(AFM)一直是用于纳米级成像和具有原子及亚原子分辨率表征的重要工具。理论研究对于解释AFM图像变得极为重要。研究人员已使用分子模拟来研究AFM成像机制。随着近期大量将机器学习应用于AFM的研究,从分子模拟获得的AFM图像也被用作训练数据。然而,模拟极其耗时。在本文中,我们应用超分辨率方法,包括压缩感知和深度学习方法,来重建模拟图像并减少模拟时间。展示了不同条件下的几个分子模拟能量图以证明重建算法的性能。通过对重建结果的分析,我们发现所提出的两种算法都能以良好质量完成重建并大幅减少模拟时间。此外,超分辨率方法可用于加速训练数据的生成,并为AFM机器学习改变模拟分辨率。