Expand this Topic clickable element to expand a topic
Skip to content
Optica Publishing Group

Untrained neural network enabling fast and universal structured-illumination microscopy

Not Accessible

Your library or personal account may give you access

Abstract

Structured-illumination microscopy (SIM) offers a twofold resolution enhancement beyond the optical diffraction limit. At present, SIM requires several raw structured-illumination (SI) frames to reconstruct a super-resolution (SR) image, especially the time-consuming reconstruction of speckle SIM, which requires hundreds of SI frames. Considering this, we herein propose an untrained structured-illumination reconstruction neural network (USRNN) with known illumination patterns to reduce the amount of raw data that is required for speckle SIM reconstruction by 20 times and thus improve its temporal resolution. Benefiting from the unsupervised optimizing strategy and CNNs’ structure priors, the high-frequency information is obtained from the network without the requirement of datasets; as a result, a high-fidelity SR image with approximately twofold resolution enhancement can be reconstructed using five frames or less. Experiments on reconstructing non-biological and biological samples demonstrate the high-speed and high-universality capabilities of our method.

© 2024 Optica Publishing Group

Full Article  |  PDF Article
More Like This
Surpassing the resolution limitation of structured illumination microscopy by an untrained neural network

Yu He, Yunhua Yao, Yilin He, Zhengqi Huang, Fan Luo, Chonglei Zhang, Dalong Qi, Tianqing Jia, Zhiyong Wang, Zhenrong Sun, Xiaocong Yuan, and Shian Zhang
Biomed. Opt. Express 14(1) 106-117 (2023)

Untrained, physics-informed neural networks for structured illumination microscopy

Zachary Burns and Zhaowei Liu
Opt. Express 31(5) 8714-8724 (2023)

Snapshot compressive structured illumination microscopy

Runqiu Luo, Miao Cao, Xing Liu, and Xin Yuan
Opt. Lett. 49(2) 186-189 (2024)

Supplementary Material (1)

NameDescription
Supplement 1       supplement 1. Supplementary material for USRNN, including training details and comparison with other algorithms

Data availability

Codes and data underlying the results presented in this paper are available in Ref. [16].

16. Z. Ye, X. Li, Y. Sun, et al., “USRNN,” GitHub (2023) [accessed 13 April 2024], https://github.com/ZJUOPTKuangLab/USRNN.

Cited By

You do not have subscription access to this journal. Cited by links are available to subscribers only. You may subscribe either as an Optica member, or as an authorized user of your institution.

Contact your librarian or system administrator
or
Login to access Optica Member Subscription

Figures (4)

You do not have subscription access to this journal. Figure files are available to subscribers only. You may subscribe either as an Optica member, or as an authorized user of your institution.

Contact your librarian or system administrator
or
Login to access Optica Member Subscription

Equations (2)

You do not have subscription access to this journal. Equations are available to subscribers only. You may subscribe either as an Optica member, or as an authorized user of your institution.

Contact your librarian or system administrator
or
Login to access Optica Member Subscription

Select as filters


Select Topics Cancel
© Copyright 2024 | Optica Publishing Group. All rights reserved, including rights for text and data mining and training of artificial technologies or similar technologies.