Corrias, M., Papa, L., Sokolović, I., Birschitzky, V., Gorfer, A., Setvin, M., Schmid, M., Diebold, U., Reticcioli, M., & Franchini, C. (2023). Automated real-space lattice extraction for atomic force microscopy images. Machine Learning: Science and Technology, 4(1), Article 015015. https://doi.org/10.1088/2632-2153/acb5e0
Analyzing atomically resolved images is a time-consuming process requiring solid experience and substantial human intervention. In addition, the acquired images contain a large amount of information such as crystal structure, presence and distribution of defects, and formation of domains, which need to be resolved to understand a material’s surface structure. Therefore, machine learning techniques have been applied in scanning probe and electron microscopies during the last years, aiming for automatized and efficient image analysis. This work introduces a free and open source tool (AiSurf: Automated Identification of Surface Images) developed to inspect atomically resolved images via scale-invariant feature transform and clustering algorithms. AiSurf extracts primitive lattice vectors, unit cells, and structural distortions from the original image, with no pre-assumption on the lattice and minimal user intervention. The method is applied to various atomically resolved non-contact atomic force microscopy images of selected surfaces with different levels of complexity: anatase TiO₂(101), oxygen deficient rutile TiO₂(110) with and without CO adsorbates, SrTiO₃(001) with Sr vacancies and graphene with C vacancies. The code delivers excellent results and is tested against atom misclassification and artifacts, thereby facilitating the interpretation of scanning probe microscopy images.
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Project title:
Oberflaechenphysik auf gespaltenen kubischen Oxidperowskiten: P32148-N36 (FWF Fonds zur Förderung der wissenschaftlichen Forschung (FWF)) Spezialforschungsbereich “Taming Complexity in Materials Modeling”: F 81 (FWF Fonds zur Förderung der wissenschaftlichen Forschung (FWF))