Publication Details

Correction of AFM data artifacts using a convolutional neural network trained with synthetically generated data

KOCUR Viktor, HEGROVÁ Veronika, PATOČKA Marek, NEUMAN Jan and HEROUT Adam. Correction of AFM data artifacts using a convolutional neural network trained with synthetically generated data. Ultramicroscopy, vol. 246, no. 1, 2023, pp. 113666-113666. ISSN 0304-3991. Available from: https://www.sciencedirect.com/science/article/pii/S0304399122001851?via%3Dihub
Czech title
Korekce artefaktů v AFM datech pomocí CNN naučených na syntetických datech
Type
journal article
Language
english
Authors
Kocur Viktor, Ing., Ph.D. (DCGM FIT BUT)
Hegrová Veronika, Ing. (NenoVision)
Patočka Marek, Bc. (NenoVision)
Neuman Jan, Ing., Ph.D. (NenoVision)
Herout Adam, prof. Ing., Ph.D. (DCGM FIT BUT)
URL
Keywords

Atomic force microscopy, Reconstruction by CNN, Machine learning for atomic force microscopy, Automatic image correction, Synthetic training data generation

Abstract

AFM microscopy from its nature produces outputs with certain distortions, inaccuracies and errors given by its physical principle. These distortions are more or less well studied and documented. Based on the nature of the individual distortions, different reconstruction and compensation filters have been developed to post-process the scanned images. This article presents an approach based on machine learning - the involved convolutional neural network learns from pairs of distorted images and the ground truth image and then it is able to process pairs of images of interest and produce a filtered image with the artifacts removed or at least suppressed. What is important in our approach is that the neural network is trained purely on synthetic data generated by a simulator of the inputs, based on an analytical description of the physical phenomena causing the distortions. The generator produces training samples involving various combinations of the distortions. The resulting trained network seems to be able to autonomously recognize the distortions present in the testing image (no knowledge of the distortions or any other human knowledge is provided at the test time) and apply the appropriate corrections. The experimental results show that not only is the new approach better or at least on par with conventional post-processing methods, but more importantly, it does not require any operator's input and works completely autonomously. The source codes of the training set generator and of the convolutional neural net model are made public, as well as an evaluation dataset of real captured AFM images.

Published
2023
Pages
113666-113666
Journal
Ultramicroscopy, vol. 246, no. 1, ISSN 0304-3991
DOI
UT WoS
000917791400001
EID Scopus
BibTeX
@ARTICLE{FITPUB12911,
   author = "Viktor Kocur and Veronika Hegrov\'{a} and Marek Pato\v{c}ka and Jan Neuman and Adam Herout",
   title = "Correction of AFM data artifacts using a convolutional neural network trained with synthetically generated data",
   pages = "113666--113666",
   journal = "Ultramicroscopy",
   volume = 246,
   number = 1,
   year = 2023,
   ISSN = "0304-3991",
   doi = "10.1016/j.ultramic.2022.113666",
   language = "english",
   url = "https://www.fit.vut.cz/research/publication/12911"
}
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