Deringing and denoising in extremely under-sampled Fourier single pixel imaging
Author(s) -
Saad Rizvi,
Jie Cao,
Kaiyu Zhang,
Qun Hao
Publication year - 2020
Publication title -
optics express
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.394
H-Index - 271
ISSN - 1094-4087
DOI - 10.1364/oe.385233
Subject(s) - undersampling , ringing , computer science , artificial intelligence , image quality , ringing artifacts , computer vision , noise reduction , noise (video) , gibbs phenomenon , pixel , iterative reconstruction , autoencoder , context (archaeology) , optics , fourier transform , deep learning , image (mathematics) , physics , filter (signal processing) , paleontology , quantum mechanics , biology
Undersampling in Fourier single pixel imaging (FSI) is often employed to reduce imaging time for real-time applications. However, the undersampled reconstruction contains ringing artifacts (Gibbs phenomenon) that occur because the high-frequency target information is not recorded. Furthermore, by employing 3-step FSI strategy (reduced measurements with low noise suppression) with a low-grade sensor (i.e., photodiode), this ringing is coupled with noise to produce unwanted artifacts, lowering image quality. To improve the imaging quality of real-time FSI, a fast image reconstruction framework based on deep convolutional autoencoder network (DCAN) is proposed. The network through context learning over FSI artifacts is capable of deringing, denoising, and recovering details in 256 × 256 images. The promising experimental results show that the proposed deep-learning-based FSI outperforms conventional FSI in terms of image quality even at very low sampling rates (1-4%).
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