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Deep learning-based incoherent holographic camera enabling acquisition of real-world holograms for holographic streaming system.

Hyeonseung YuYoungrok KimDaeho YangWontaek SeoYunhee KimJong-Young HongHoon SongGeeyoung SungYounghun SungSung-Wook MinHong-Seok Lee
Published in: Nature communications (2023)
While recent research has shown that holographic displays can represent photorealistic 3D holograms in real time, the difficulty in acquiring high-quality real-world holograms has limited the realization of holographic streaming systems. Incoherent holographic cameras, which record holograms under daylight conditions, are suitable candidates for real-world acquisition, as they prevent the safety issues associated with the use of lasers; however, these cameras are hindered by severe noise due to the optical imperfections of such systems. In this work, we develop a deep learning-based incoherent holographic camera system that can deliver visually enhanced holograms in real time. A neural network filters the noise in the captured holograms, maintaining a complex-valued hologram format throughout the whole process. Enabled by the computational efficiency of the proposed filtering strategy, we demonstrate a holographic streaming system integrating a holographic camera and holographic display, with the aim of developing the ultimate holographic ecosystem of the future.
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