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

Learning-based adaptive under-sampling for Fourier single-pixel imaging

Not Accessible

Your library or personal account may give you access

Abstract

In this Letter, we present a learning-based method for efficient Fourier single-pixel imaging (FSI). Based on the auto-encoder, the proposed adaptive under-sampling technique (AuSamNet) manages to optimize a sampling mask and a deep neural network at the same time to achieve both under-sampling of the object image’s Fourier spectrum and high-quality reconstruction from the under-sampled measurements. It is thus helpful in determining the best encoding and decoding scheme for FSI. Simulation and experiments demonstrate that AuSamNet can reconstruct high-quality natural color images even when the sampling ratio is as low as 7.5%. The proposed adaptive under-sampling strategy can be used for other computational imaging modalities, such as tomography and ptychography. We have released our source code.

© 2023 Optica Publishing Group

Full Article  |  PDF Article
More Like This
Deringing and denoising in extremely under-sampled Fourier single pixel imaging

Saad Rizvi, Jie Cao, Kaiyu Zhang, and Qun Hao
Opt. Express 28(5) 7360-7374 (2020)

Spatial temporal Fourier single-pixel imaging

Zixin Tang, Tianhang Tang, Jie Chen, Shun Lv, and Yiguang Liu
Opt. Lett. 48(8) 2066-2069 (2023)

Fourier single pixel imaging reconstruction method based on the U-net and attention mechanism at a low sampling rate

Pengfei Jiang, Jianlong Liu, Long Wu, Lu Xu, Jiemin Hu, Jianlong Zhang, Yong Zhang, and Xu Yang
Opt. Express 30(11) 18638-18654 (2022)

Supplementary Material (2)

NameDescription
Supplement 1       Supplemental 1
Visualization 1       Visualization 1

Data availability

Data underlying the results presented in this paper are not publicly available at this time but may be obtained from the authors upon reasonable request. The source code to implement AuSamNet is available in Ref. [29].

29. W. Huang, F. Wang, X. Zhang, Y. Jin, and G. Situ, “AuSamNet,” GitHub (2023) https://github.com/SituLab/AuSamNet.

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 (3)

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

Tables (2)

You do not have subscription access to this journal. Article tables 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 (8)

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.