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Fast approximate STEM image simulations from a machine learning model
Combs, Aidan H.; Maldonis, Jason J.; Feng, Jie; u. a. (2019): Fast approximate STEM image simulations from a machine learning model, in: Advanced Structural and Chemical Imaging, Cham: Springer Science and Business Media LLC, Jg. 5, Nr. 1, 2, S. 1–10, doi: 10.1186/s40679-019-0064-2.
Faculty/Chair:
Author: ;  ;  ;  ;  ; 
Title of the Journal:
Advanced Structural and Chemical Imaging
ISSN:
2198-0926
Publisher Information:
Year of publication:
2019
Volume:
5
Issue:
1, 2
Pages:
Language:
English
Abstract:
Accurate quantum mechanical scanning transmission electron microscopy image simulation methods such as the multislice method require computation times that are too large to use in applications in high-resolution materials imaging that require very large numbers of simulated images. However, higher-speed simulation methods based on linear imaging models, such as the convolution method, are often not accurate enough for use in these applications. We present a method that generates an image from the convolution of an object function and the probe intensity, and then uses a multivariate polynomial fit to a dataset of corresponding multislice and convolution images to correct it. We develop and validate this method using simulated images of Pt and Pt–Mo nanoparticles and find that for these systems, once the polynomial is fit, the method runs about six orders of magnitude faster than parallelized CPU implementations of the multislice method while achieving a 1 − R2 error of 0.010–0.015 and root-mean-square error/standard deviation of dataset being predicted of about 0.1 when compared to full multislice simulations.
GND Keywords: ;  ;  ; 
Raster-Transmissions-Elektronenmikroskopie
Faltung <Mathematik>
MSCT
Lineare Regression
Keywords: ;  ;  ;  ; 
Scanning transmission electron microscopy
Convolution
Frozen phonon multislice simulation
High-throughput
Linear regression
DDC Classification:
RVK Classification:
Peer Reviewed:
Yes:
International Distribution:
Yes:
Open Access Journal:
Yes:
Type:
Article
Activation date:
August 13, 2024
Versioning
Question on publication
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https://fis.uni-bamberg.de/handle/uniba/97250