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review article

The role of convolutional neural networks in scanning probe microscopy: a review

Azuri, Ido
•
Rosenhek-Goldian, Irit
•
Regev-Rudzki, Neta
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August 13, 2021
Beilstein Journal Of Nanotechnology

Progress in computing capabilities has enhanced science in many ways. In recent years, various branches of machine learning have been the key facilitators in forging new paths, ranging from categorizing big data to instrumental control, from materials design through image analysis. Deep learning has the ability to identify abstract characteristics embedded within a data set, subsequently using that association to categorize, identify, and isolate subsets of the data. Scanning probe microscopy measures multimodal surface properties, combining morphology with electronic, mechanical, and other characteristics. In this review, we focus on a subset of deep learning algorithms, that is, convolutional neural networks, and how it is transforming the acquisition and analysis of scanning probe data.

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Type
review article
DOI
10.3762/bjnano.12.66
Web of Science ID

WOS:000686194200001

Author(s)
Azuri, Ido
Rosenhek-Goldian, Irit
Regev-Rudzki, Neta
Fantner, Georg  
Cohen, Sidney R.
Date Issued

2021-08-13

Publisher

BEILSTEIN-INSTITUT

Published in
Beilstein Journal Of Nanotechnology
Volume

12

Start page

878

End page

901

Subjects

Nanoscience & Nanotechnology

•

Materials Science, Multidisciplinary

•

Physics, Applied

•

Science & Technology - Other Topics

•

Materials Science

•

Physics

•

atomic force microscopy (afm)

•

deep learning

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machine learning

•

neural networks

•

scanning probe microscopy (spm)

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image segmentation

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deep

•

big

•

classification

•

prediction

•

support

•

model

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
LBNI  
Available on Infoscience
September 11, 2021
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/181263
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