Issue 9, 2024

Super resolution label-free dark-field microscopy by deep learning

Abstract

Dark-field microscopy (DFM) is a powerful label-free and high-contrast imaging technique due to its ability to reveal features of transparent specimens with inhomogeneities. However, owing to the Abbe's diffraction limit, fine structures at sub-wavelength scale are difficult to resolve. In this work, we report a single image super resolution DFM scheme using a convolutional neural network (CNN). A U-net based CNN is trained with a dataset which is numerically simulated based on the forward physical model of the DFM. The forward physical model described by the parameters of the imaging setup connects the object ground truths and dark field images. With the trained network, we demonstrate super resolution dark field imaging of various test samples with twice resolution improvement. Our technique illustrates a promising deep learning approach to double the resolution of DFM without any hardware modification.

Graphical abstract: Super resolution label-free dark-field microscopy by deep learning

Supplementary files

Article information

Article type
Paper
Submitted
27 Aug 2023
Accepted
10 Jan 2024
First published
23 Jan 2024

Nanoscale, 2024,16, 4703-4709

Super resolution label-free dark-field microscopy by deep learning

M. Lei, J. Zhao, J. Zhou, H. Lee, Q. Wu, Z. Burns, G. Chen and Z. Liu, Nanoscale, 2024, 16, 4703 DOI: 10.1039/D3NR04294D

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