Machine Learning and Knowledge Extraction (Jul 2024)

Deep Learning-Powered Optical Microscopy for Steel Research

  • Šárka Mikmeková,
  • Martin Zouhar,
  • Jan Čermák,
  • Ondřej Ambrož,
  • Patrik Jozefovič,
  • Ivo Konvalina,
  • Eliška Materna Mikmeková,
  • Jiří Materna

DOI
https://doi.org/10.3390/make6030076
Journal volume & issue
Vol. 6, no. 3
pp. 1579 – 1596

Abstract

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The success of machine learning (ML) models in object or pattern recognition naturally leads to ML being employed in the classification of the microstructure of steel surfaces. Light optical microscopy (LOM) is the traditional imaging process in this field. However, the increasing use of ML to extract or relate more aspects of the aforementioned materials and the limitations of LOM motivated us to provide an improvement to the established image acquisition process. In essence, we perform style transfer from LOM to scanning electron microscopy (SEM) combined with “intelligent” upscaling. This is achieved by employing an ML model trained on a multimodal dataset to generate an SEM-like image from the corresponding LOM image. This transformation, in our opinion, which is corroborated by a detailed analysis of the source, target and prediction, successfully pushes the limits of LOM in the case of steel surfaces. The expected consequence is the improvement of the precise characterization of advanced multiphase steels’ structure based on these transformed LOM images.

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