Resolution enhancement of wide-field interferometric microscopy by coupled deep autoencoders

Date

2018

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Source Title

Applied Optics

Print ISSN

1559-128X

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OSA - The Optical Society

Volume

57

Issue

10

Pages

2545 - 2552

Language

English

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Abstract

Wide-field interferometric microscopy is a highly sensitive, label-free, and low-cost biosensing imaging technique capable of visualizing individual biological nanoparticles such as viral pathogens and exosomes. However, further resolution enhancement is necessary to increase detection and classification accuracy of subdiffraction-limited nanoparticles. In this study, we propose a deep-learning approach, based on coupled deep autoencoders, to improve resolution of images of L-shaped nanostructures. During training, our method utilizes microscope image patches and their corresponding manual truth image patches in order to learn the transformation between them. Following training, the designed network reconstructs denoised and resolution-enhanced image patches for unseen input.

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