Application of optical flow algorithm for drift correction in electron microscopy images

Author:

Yao JiaHao1,Guo Hongxuan1ORCID,Yin Ziqing1,Liu Chang1,Da Bo2ORCID,Liu Zheng3ORCID,Chu Yajie45ORCID,Zhong Li1ORCID,Sun Litao1ORCID

Affiliation:

1. SEU-FEI Nano-Pico Center, Key Laboratory of MEMS of Ministry of Education, School of Electronic Science and Engineering, Southeast University 1 , Nanjing 210096, People’s Republic of China

2. Research and Services Division of Materials Data and Integrated System, National Institute for Materials Science 2 , Ibaraki 305-0044, Japan

3. National Graphene Products Quality Inspection and Testing Center (Jiangsu) 3 , Wuxi 214174, People’s Republic of China

4. School of Materials Science and Engineering, Nanjing Institute of Technology 4 , Nanjing 211167, People’s Republic of China

5. Jiangsu Key Laboratory of Advanced Structure Materials and Application Technology 5 , Nanjing 211167, People’s Republic of China

Abstract

Transmission electron microscopy (TEM) image drift correction has been effectively addressed using diverse approaches, including the cross correlation algorithm (CC) and other strategies. However, most of the strategies fall short of achieving sufficient accuracy or cannot strike a balance between time consumption and accuracy. The present study proposes a TEM image drift correction strategy that enhances accuracy without any additional time consumption. Unlike the CC algorithm that matches pixels one by one, our approach involves the extraction of multiple feature points from the first TEM image and then uses the Lucas–Kanade (LK) optical flow algorithm to calculate the optical field of these feature points in the subsequent TEM images. The LK algorithm is used to calculate the instantaneous velocity of these feature points, which can help track the movement of the TEM image series. In addition, a high-precision sub-pixel level correction strategy by the utilization of linear interpolation during the correction process is developed in this work. Experimental results confirm that this strategy offers superior accuracy in comparison with the CC algorithm and also is insensitive to the size of the image. Furthermore, we offer a semantic segmentation neural network for electron microscope image pre-processing, thereby expanding the applicability of our methodology.

Funder

National Natural Science Foundation of China

Publisher

AIP Publishing

Subject

Instrumentation

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