Communications Engineering (Sep 2024)

Multi-view neural 3D reconstruction of micro- and nanostructures with atomic force microscopy

  • Shuo Chen,
  • Mao Peng,
  • Yijin Li,
  • Bing-Feng Ju,
  • Hujun Bao,
  • Yuan-Liu Chen,
  • Guofeng Zhang

DOI
https://doi.org/10.1038/s44172-024-00270-9
Journal volume & issue
Vol. 3, no. 1
pp. 1 – 12

Abstract

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Abstract Atomic Force Microscopy (AFM) is a widely employed tool for micro- and nanoscale topographic imaging. However, conventional AFM scanning struggles to reconstruct complex 3D micro- and nanostructures precisely due to limitations such as incomplete sample topography capturing and tip-sample convolution artifacts. Here, we propose a multi-view neural-network-based framework with AFM, named MVN-AFM, which accurately reconstructs surface models of intricate micro- and nanostructures. Unlike previous 3D-AFM approaches, MVN-AFM does not depend on any specially shaped probes or costly modifications to the AFM system. To achieve this, MVN-AFM employs an iterative method to align multi-view data and eliminate AFM artifacts simultaneously. Furthermore, we apply the neural implicit surface reconstruction technique in nanotechnology and achieve improved results. Additional extensive experiments show that MVN-AFM effectively eliminates artifacts present in raw AFM images and reconstructs various micro- and nanostructures, including complex geometrical microstructures printed via two-photon lithography and nanoparticles such as poly(methyl methacrylate) (PMMA) nanospheres and zeolitic imidazolate framework-67 (ZIF-67) nanocrystals. This work presents a cost-effective tool for micro- and nanoscale 3D analysis.