Deep Learning of Atomically Resolved Scanning Transmission Electron Microscopy Images: Chemical Identification and Tracking Local Transformations
Тип публикации: Journal Article
Дата публикации: 2017-12-14
Связанные публикации
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SCImago Q1
Tоп 10% SCImago
WOS Q1
БС1
SJR: 4.102
CiteScore: 24.2
Impact factor: 16
ISSN: 19360851, 1936086X
PubMed ID:
29215876
General Physics and Astronomy
General Materials Science
General Engineering
Краткое описание
Recent advances in scanning transmission electron and scanning probe microscopies have opened exciting opportunities in probing the materials structural parameters and various functional properties in real space with angstrom-level precision. This progress has been accompanied by an exponential increase in the size and quality of datasets produced by microscopic and spectroscopic experimental techniques. These developments necessitate adequate methods for extracting relevant physical and chemical information from the large datasets, for which a priori information on the structures of various atomic configurations and lattice defects is limited or absent. Here we demonstrate an application of deep neural networks to extract information from atomically resolved images including location of the atomic species and type of defects. We develop a 'weakly-supervised' approach that uses information on the coordinates of all atomic species in the image, extracted via a deep neural network, to identify a rich variety of defects that are not part of an initial training set. We further apply our approach to interpret complex atomic and defect transformation, including switching between different coordination of silicon dopants in graphene as a function of time, formation of peculiar silicon dimer with mixed 3-fold and 4-fold coordination, and the motion of molecular 'rotor'. This deep learning based approach resembles logic of a human operator, but can be scaled leading to significant shift in the way of extracting and analyzing information from raw experimental data.
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Ziatdinov M. et al. Deep Learning of Atomically Resolved Scanning Transmission Electron Microscopy Images: Chemical Identification and Tracking Local Transformations // ACS Nano. 2017. Vol. 11. No. 12. pp. 12742-12752.
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Maksov A. Deep Learning of Atomically Resolved Scanning Transmission Electron Microscopy Images: Chemical Identification and Tracking Local Transformations // ACS Nano. 2017. Vol. 11. No. 12. pp. 12742-12752.
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TY - JOUR
DO - 10.1021/acsnano.7b07504
UR - https://doi.org/10.1021/acsnano.7b07504
TI - Deep Learning of Atomically Resolved Scanning Transmission Electron Microscopy Images: Chemical Identification and Tracking Local Transformations
T2 - ACS Nano
AU - Maksov, A
PY - 2017
DA - 2017/12/14
PB - American Chemical Society (ACS)
SP - 12742-12752
IS - 12
VL - 11
PMID - 29215876
SN - 1936-0851
SN - 1936-086X
ER -
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BibTex (до 50 авторов)
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@article{2017_Ziatdinov,
author = {A Maksov},
title = {Deep Learning of Atomically Resolved Scanning Transmission Electron Microscopy Images: Chemical Identification and Tracking Local Transformations},
journal = {ACS Nano},
year = {2017},
volume = {11},
publisher = {American Chemical Society (ACS)},
month = {dec},
url = {https://doi.org/10.1021/acsnano.7b07504},
number = {12},
pages = {12742--12752},
doi = {10.1021/acsnano.7b07504}
}
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MLA
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Ziatdinov, Maxim, et al. “Deep Learning of Atomically Resolved Scanning Transmission Electron Microscopy Images: Chemical Identification and Tracking Local Transformations.” ACS Nano, vol. 11, no. 12, Dec. 2017, pp. 12742-12752. https://doi.org/10.1021/acsnano.7b07504.
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