Quantitative phase imaging (QPI) through random diffusers using a diffractive optical network
Yuhang Li, Yi Luo, Deniz Mengu, Bijie Bai, Aydogan Ozcan

TL;DR
This paper introduces a diffractive optical network that performs all-optical quantitative phase imaging through random diffusers, enabling high-speed, low-power, and compact phase retrieval without digital processing.
Contribution
It presents a novel all-optical diffractive network capable of phase recovery through random diffusers, eliminating the need for iterative digital algorithms.
Findings
Operates at the speed of light propagation.
Can be integrated onto standard image sensors.
Provides a low-power, high frame rate imaging solution.
Abstract
Quantitative phase imaging (QPI) is a label-free computational imaging technique used in various fields, including biology and medical research. Modern QPI systems typically rely on digital processing using iterative algorithms for phase retrieval and image reconstruction. Here, we report a diffractive optical network trained to convert the phase information of input objects positioned behind random diffusers into intensity variations at the output plane, all-optically performing phase recovery and quantitative imaging of phase objects completely hidden by unknown, random phase diffusers. This QPI diffractive network is composed of successive diffractive layers, axially spanning in total ~70 wavelengths; unlike existing digital image reconstruction and phase retrieval methods, it forms an all-optical processor that does not require external power beyond the illumination beam to complete…
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Taxonomy
TopicsDigital Holography and Microscopy · Advanced X-ray Imaging Techniques · Optical measurement and interference techniques
