Back to Search Start Over

Feature-enhanced X-ray imaging using fused neural network strategy with designable metasurface

Authors :
Shi Hao
Sun Yuanhe
Liang Zhaofeng
Cao Shuqi
Zhang Lei
Zhu Daming
Wu Yanqing
Yao Zeying
Chen Wenqing
Li Zhenjiang
Yang Shumin
Zhao Jun
Wang Chunpeng
Tai Renzhong
Source :
Nanophotonics, Vol 12, Iss 19, Pp 3793-3805 (2023)
Publication Year :
2023
Publisher :
De Gruyter, 2023.

Abstract

Scintillation-based X-ray imaging can provide convenient visual observation of absorption contrast by standard digital cameras, which is critical in a variety of science and engineering disciplines. More efficient scintillators and electronic postprocessing derived from neural networks are usually used to improve the quality of obtained images from the perspective of optical imaging and machine vision, respectively. Here, we propose to overcome the intrinsic separation of optical transmission process and electronic calculation process, integrating the imaging and postprocessing into one fused optical–electronic convolutional autoencoder network by affixing a designable optical convolutional metasurface to the scintillator. In this way, the convolutional autoencoder was directly connected to down-conversion process, and the optical information loss and training cost can be decreased simultaneously. We demonstrate that feature-specific enhancement of incoherent images is realized, which can apply to multi-class samples without additional data precollection. Hard X-ray experimental validations reveal the enhancement of textural features and regional features achieved by adjusting the optical metasurface, indicating a signal-to-noise ratio improvement of up to 11.2 dB. We anticipate that our framework will advance the fundamental understanding of X-ray imaging and prove to be useful for number recognition and bioimaging applications.

Details

Language :
English
ISSN :
21928614
Volume :
12
Issue :
19
Database :
Directory of Open Access Journals
Journal :
Nanophotonics
Publication Type :
Academic Journal
Accession number :
edsdoj.9385d5a747142159b825a87b84d2b14
Document Type :
article
Full Text :
https://doi.org/10.1515/nanoph-2023-0402