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Comparison Between Deep Learning and Iterative Bayesian Statistics Deconvolution Methods in Energy Electron Loss Spectroscopy

Published online by Cambridge University Press:  22 July 2022

S. Shayan Mousavi M.
Affiliation:
McMaster University, Department of Materials Science and Engineering, Hamilton, ON, Canada
Alexandre Pofelski
Affiliation:
McMaster University, Department of Materials Science and Engineering, Hamilton, ON, Canada
Gianluigi A. Botton*
Affiliation:
McMaster University, Department of Materials Science and Engineering, Hamilton, ON, Canada Canadian Light Source, Saskatoon, SK, Canada
*
*Corresponding author: [email protected]

Abstract

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Type
On Demand - Artificial Intelligence, Instrument Automation, and High-Dimensional Data Analytics for Microscopy and Microanalysis
Copyright
Copyright © Microscopy Society of America 2022

References

Pofelski, Alexandre, and Botton, Gianluigi. "EELSpecNet: Deep Convolutional Neural Network Solution for Electron Energy Loss Spectroscopy Deconvolution." Microscopy and Microanalysis 27.S1 (2021): 1626-1627.Google Scholar
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We are grateful to the Natural Sciences and Engineering Research Council for supporting this work.Google Scholar