Machine Learning for Optical Scanning Probe Nanoscopy
ORAL
Abstract
The ability to perform nanometer-scale optical imaging and spectroscopy is key to deciphering the low-energy effects in quantum materials, as well as vibrational fingerprints in planetary and extraterrestrial particles, catalytic substances, and aqueous biological samples. These tasks can be accomplished by scattering-type scanning near-field optical microscopy (s-SNOM) technique that has recently spread to many research fields and enabled notable discoveries. Here, we would like to show that the s-SNOM, together with scanning probe research in general, can benefit in many ways from artificial intelligence (AI) and machine learning (ML) algorithms. Augmented with AI- and ML-enhanced data acquisition and analysis, scanning probe optical nanoscopy is poised to become more efficient, accurate, and intelligent.
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Publication: arXiv:2204.09820
Presenters
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Suheng Xu
Columbia University
Authors
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Suheng Xu
Columbia University
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Xinzhong Chen
Stony Brook University (SUNY)
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Sara Shabani
Columbia University
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Yueqi Zhao
UCSD
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Matthew Fu
Columbia University
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Andrew Millis
Columbia University, Columbia University, Flatiron Institute
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Michael M Fogler
University of California, San Diego
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Abhay N Pasupathy
Brookhaven National Laboratory & Columbia University, Columbia University
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Mengkun Liu
Stony Brook University (SUNY)
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Dmitri N Basov
Columbia University, Department of Physics, Columbia University, New York, NY, USA