Passive superresolution imaging of incoherent objects
- URL: http://arxiv.org/abs/2304.09773v1
- Date: Wed, 19 Apr 2023 15:53:09 GMT
- Title: Passive superresolution imaging of incoherent objects
- Authors: Jernej Frank, Alexander Duplinskiy, Kaden Bearne, A. I. Lvovsky
- Abstract summary: Method consists of measuring the field's spatial mode components in the image plane in the overcomplete basis of Hermite-Gaussian modes and their superpositions.
Deep neural network is used to reconstruct the object from these measurements.
- Score: 63.942632088208505
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We investigate Hermite Gaussian Imaging (HGI) -- a novel passive
super-resolution technique -- for complex 2D incoherent objects in the
sub-Rayleigh regime. The method consists of measuring the field's spatial mode
components in the image plane in the overcomplete basis of Hermite-Gaussian
modes and their superpositions and subsequently using a deep neural network to
reconstruct the object from these measurements. We show a three-fold resolution
improvement over direct imaging. Our HGI reconstruction retains its superiority
even if the same neural network is applied to improve the resolution of direct
imaging. This superiority is also preserved in the presence of shot noise. Our
findings are the first step towards passive super-resolution imaging protocols
in fluorescent microscopy and astronomy.
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