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Calibration-free quantitative phase imaging in multi-core fiber endoscopes using end-to-end deep learning

Authors :
Sun, Jiawei
Zhao, Bin
Wang, Dong
Wang, Zhigang
Zhang, Jie
Koukourakis, Nektarios
Czarske, Juergen W.
Li, Xuelong
Sun, Jiawei
Zhao, Bin
Wang, Dong
Wang, Zhigang
Zhang, Jie
Koukourakis, Nektarios
Czarske, Juergen W.
Li, Xuelong
Publication Year :
2023

Abstract

Quantitative phase imaging (QPI) through multi-core fibers (MCFs) has been an emerging in vivo label-free endoscopic imaging modality with minimal invasiveness. However, the computational demands of conventional iterative phase retrieval algorithms have limited their real-time imaging potential. We demonstrate a learning-based MCF phase imaging method, that significantly reduced the phase reconstruction time to 5.5 ms, enabling video-rate imaging at 181 fps. Moreover, we introduce an innovative optical system that automatically generated the first open-source dataset tailored for MCF phase imaging, comprising 50,176 paired speckle and phase images. Our trained deep neural network (DNN) demonstrates robust phase reconstruction performance in experiments with a mean fidelity of up to 99.8\%. Such an efficient fiber phase imaging approach can broaden the applications of QPI in hard-to-reach areas.<br />Comment: 5 pages. 5 figures

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1438507178
Document Type :
Electronic Resource