| Literature DB >> 34974515 |
Fei Wang1,2, Chenglong Wang1,2, Mingliang Chen1,2, Wenlin Gong1,2, Yu Zhang1, Shensheng Han1,2,3,4, Guohai Situ5,6,7,8.
Abstract
Ghost imaging (GI) facilitates image acquisition under low-light conditions by single-pixel measurements and thus has great potential in applications in various fields ranging from biomedical imaging to remote sensing. However, GI usually requires a large amount of single-pixel samplings in order to reconstruct a high-resolution image, imposing a practical limit for its applications. Here we propose a far-field super-resolution GI technique that incorporates the physical model for GI image formation into a deep neural network. The resulting hybrid neural network does not need to pre-train on any dataset, and allows the reconstruction of a far-field image with the resolution beyond the diffraction limit. Furthermore, the physical model imposes a constraint to the network output, making it effectively interpretable. We experimentally demonstrate the proposed GI technique by imaging a flying drone, and show that it outperforms some other widespread GI techniques in terms of both spatial resolution and sampling ratio. We believe that this study provides a new framework for GI, and paves a way for its practical applications.Entities:
Year: 2022 PMID: 34974515 PMCID: PMC8720314 DOI: 10.1038/s41377-021-00680-w
Source DB: PubMed Journal: Light Sci Appl ISSN: 2047-7538 Impact factor: 20.257