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Deep Learning Analysis of Polaritonic Wave Images

Authors :
Dmitri Basov
Zhicai Wang
Sara Shabani
Zhiyuan Sun
Xinzhong Chen
Bjarke Sørensen Jessen
Cory Dean
James Hone
Ziheng Yao
Alexander McLeod
Daniel J. Rizzo
Andrew J. Millis
Suheng Xu
Mengkun Liu
Abhay Pasupathy
Source :
ACS Nano. 15:18182-18191
Publication Year :
2021
Publisher :
American Chemical Society (ACS), 2021.

Abstract

Deep learning (DL) is an emerging analysis tool across the sciences and engineering. Encouraged by the successes of DL in revealing quantitative trends in massive imaging data, we applied this approach to nanoscale deeply subdiffractional images of propagating polaritonic waves in complex materials. Utilizing the convolutional neural network (CNN), we developed a practical protocol for the rapid regression of images that quantifies the wavelength and the quality factor of polaritonic waves. Using simulated near-field images as training data, the CNN can be made to simultaneously extract polaritonic characteristics and material parameters in a time scale that is at least 3 orders of magnitude faster than common fitting/processing procedures. The CNN-based analysis was validated by examining the experimental near-field images of charge-transfer plasmon polaritons at graphene/α-RuCl

Details

ISSN :
1936086X and 19360851
Volume :
15
Database :
OpenAIRE
Journal :
ACS Nano
Accession number :
edsair.doi.dedup.....00dc68c7ba6582ea40b9d0c5e94a9bc0