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Deep-Learning-Aided Extraction of Optical Constants in Scanning Near-Field Optical Microscopy

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posted on 2023-01-12, 15:01 authored by Yueqi Zhao, Xinzhong Chen, Ziheng Yao, Mengkun Liu, Michael M. Fogler
Scanning near-field optical microscopy is one of the most effective techniques for spectroscopy of nanoscale systems. However, inferring optical constants from the measured near-field signal can be challenging because of a complicated and highly nonlinear interaction between the scanned probe and the sample. Conventional fitting methods applied to this problem often suffer from the lack of convergence or require human intervention. Here we develop an alternative approach where the optical parameter extraction is automated by a deep learning network. Compared to its traditional counterparts, our method demonstrates superior accuracy, stability against noise, and computational speed when applied to simulated near-field spectra.

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