DH-GAN: A Physics-driven Untrained Generative Adversarial Network for 3D
Microscopic Imaging using Digital Holography
- URL: http://arxiv.org/abs/2205.12920v1
- Date: Wed, 25 May 2022 17:13:45 GMT
- Title: DH-GAN: A Physics-driven Untrained Generative Adversarial Network for 3D
Microscopic Imaging using Digital Holography
- Authors: Xiwen Chen, Hao Wang, Abofazl Razi, Michael Kozicki, Christopher Mann
- Abstract summary: Digital holography is a 3D imaging technique by emitting a laser beam with a plane wavefront to an object and measuring the intensity of the diffracted waveform, called holograms.
Recently, deep learning (DL) methods have been used for more accurate holographic processing.
We propose a new DL architecture based on generative adversarial networks that uses a discriminative network for realizing a semantic measure for reconstruction quality.
- Score: 3.4635026053111484
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Digital holography is a 3D imaging technique by emitting a laser beam with a
plane wavefront to an object and measuring the intensity of the diffracted
waveform, called holograms. The object's 3D shape can be obtained by numerical
analysis of the captured holograms and recovering the incurred phase. Recently,
deep learning (DL) methods have been used for more accurate holographic
processing. However, most supervised methods require large datasets to train
the model, which is rarely available in most DH applications due to the
scarcity of samples or privacy concerns. A few one-shot DL-based recovery
methods exist with no reliance on large datasets of paired images. Still, most
of these methods often neglect the underlying physics law that governs wave
propagation. These methods offer a black-box operation, which is not
explainable, generalizable, and transferrable to other samples and
applications. In this work, we propose a new DL architecture based on
generative adversarial networks that uses a discriminative network for
realizing a semantic measure for reconstruction quality while using a
generative network as a function approximator to model the inverse of hologram
formation. We impose smoothness on the background part of the recovered image
using a progressive masking module powered by simulated annealing to enhance
the reconstruction quality. The proposed method is one of its kind that
exhibits high transferability to similar samples, which facilitates its fast
deployment in time-sensitive applications without the need for retraining the
network. The results show a considerable improvement to competitor methods in
reconstruction quality (about 5 dB PSNR gain) and robustness to noise (about
50% reduction in PSNR vs noise increase rate).
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