Version 2 2024-03-27, 06:47Version 2 2024-03-27, 06:47
Version 1 2024-02-13, 10:03Version 1 2024-02-13, 10:03
preprint
posted on 2024-03-27, 06:47authored byDuksu Kim, You chan No, Jaehong Lee, Han-Ju Yeom, Sung Min Kwon
In holography, the resolution of the hologram significantly impacts both display size and angle-of-view, yet achieving high-resolution holograms presents formidable challenges, whether in capturing real-world holograms or in the computational demands of Computer-Generated Holography.
To overcome this challenge, we introduce HoloSR, an innovative hologram super-resolution network powered by deep learning.
Our encoder-decoder architecture, featuring a novel up-sampling block in the decoder, is adaptable to diverse backbone networks.
Employing two critical loss functions, data fidelity and perceptual loss, we guide HoloSR to attain pixel-wise accuracy and perceptual quality.
Rigorous evaluations, using the MIT-CGH-4K dataset, demonstrate HoloSR's consistent superiority over conventional interpolation methods and a prior GAN-based approach.
Particularly, in conjunction with the SwinIR encoder, HoloSR achieves a remarkable 8.46% PSNR enhancement and a 9.30% SSIM increase compared to the previous GAN-based method.
Also, we found that our HoloSR shows more stable reconstruction quality across varying focal distances.
These results demonstrate the robustness and effectiveness of our HoloSR in the context of hologram super-resolution.
History
Funder Name
Institute for Information and Communications Technology Promotion (2019-0-00001); National Research Foundation of Korea (2021R1I1A3048263,2021RIS-004); Korea University of Technology and Education (Sabbatical Year Research Program in 2024)