Computer Science & Technology

An Atomic Structure Segmentation Method for High-Noise STEM Image Based on Materials Structural Priors

  • GUO Lihua ,
  • LIN Yanyu ,
  • CHEN Ke
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  • 1.School of Electronics and Information Engineering,South China University of Technology,Guangzhou 510640,Guangdong,China
    2.Guangdong Branch,China Telecom Co. ,Ltd. ,Guangzhou 510440,Guangdong,China
    3.Pengcheng Laboratory,Shenzhen 518055,Guangdong,China
郭礼华(1978—),男,博士,副教授,主要从事机器学习与图像理解研究。E-mail:guolihua@scut.edu.cn

Received date: 2025-01-23

  Online published: 2025-05-06

Supported by

the Natural Science Foundation of Guangdong Province(2023A1515011014)

Abstract

Scanning transmission electron microscopy (STEM) can perform electron imaging of material properties at the atomic picometer level and interpret the atomic structure using the obtained images. However, obtaining high-quality atomic-scale STEM images requires advanced STEM equipment and skilled operators. Various environmental factors can introduce unpredictable non-uniform noise during the STEM imaging process, thereby significantly affecting image quality and consequently influencing the results of atomic structure analysis. The prediction model based on deep neural networks can reduce the impact of noise through denoising or data fitting, but there exists a problem of overfitting. This paper introduces materials structure conditions as priors in the deep neural network model and designs a method for atomic structure segmentation of high-noise STEM images based on materials structural priors. In this method, the materials structural priors are modelled as the attention (including self-attention and cross-attention) of the segmentation network and are calculated, which not only enables the segmentation network to adaptively focus on the key regions of the image but also to adaptively focus on the control information from the structural coordinate vector modalities. In the simulation test set, as compared with AtomAI Segmentor method, the proposed method improves the chamfer distance, Jaccard and F1 metrics by 175%, 49.7% and 42.7%, respectively; as compared with the early multi-scale method proposed by the research group, it improves the chamfer distance, Jaccard and F1 metrics by 167%, 28% and 23.9%, respectively. In the laboratory sample test set, as compared with AtomAI Segmentor method, the proposed method improves the chamfer distance, Jaccard and F1 metrics by 63%, 9.3% and 7.4%, respectively; as compared with the early multi-scale method proposed by the research group, it improves the chamfer distance by 12.8%, and the Jaccard and F1 metrics remain largely unchanged. The introduction of materials structural priors enables the segmentation network model to more accurately segment the atomic structure in high-noise STEM images and predict the secondary structure information that is affected by noise or top-level occlusion.

Cite this article

GUO Lihua , LIN Yanyu , CHEN Ke . An Atomic Structure Segmentation Method for High-Noise STEM Image Based on Materials Structural Priors[J]. Journal of South China University of Technology(Natural Science), 2025 , 53(11) : 27 -36 . DOI: 10.12141/j.issn.1000-565X.250032

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