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Optical diffraction neural networks assisted computational ghost imaging through dynamic scattering media

Published: November 28, 2025 | arXiv ID: 2511.22913v1

By: Yue-Gang Li , Ze Zheng , Jun-jie Wang and more

Potential Business Impact:

Lets cameras see through fog and dirt.

Business Areas:
Optical Communication Hardware

Ghost imaging leverages a single-pixel detector with no spatial resolution to acquire object echo intensity signals, which are correlated with illumination patterns to reconstruct an image. This architecture inherently mitigates scattering interference between the object and the detector but sensitive to scattering between the light source and the object. To address this challenge, we propose an optical diffraction neural networks (ODNNs) assisted ghost imaging method for imaging through dynamic scattering media. In our scheme, a set of fixed ODNNs, trained on simulated datasets, is incorporated into the experimental optical path to actively correct random distortions induced by dynamic scattering media. Experimental validation using rotating single-layer and double-layer ground glass confirms the feasibility and effectiveness of our approach. Furthermore, our scheme can also be combined with physics-prior-based reconstruction algorithms, enabling high-quality imaging under undersampled conditions. This work demonstrates a novel strategy for imaging through dynamic scattering media, which can be extended to other imaging systems.

Country of Origin
🇨🇳 China

Page Count
11 pages

Category
Physics:
Optics