Nature Communications (Oct 2024)

Holographic multiplexing metasurface with twisted diffractive neural network

  • Zhixiang Fan,
  • Chao Qian,
  • Yuetian Jia,
  • Yiming Feng,
  • Haoliang Qian,
  • Er-Ping Li,
  • Romain Fleury,
  • Hongsheng Chen

DOI
https://doi.org/10.1038/s41467-024-53749-6
Journal volume & issue
Vol. 15, no. 1
pp. 1 – 10

Abstract

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Abstract As the cornerstone of AI generated content, data drives human-machine interaction and is essential for developing sophisticated deep learning agents. Nevertheless, the associated data storage poses a formidable challenge from conventional energy-intensive planar storage, high maintenance cost, and the susceptibility to electromagnetic interference. In this work, we introduce the concept of metasurface disk, meta-disk, to expand the capacity limits of optical holographic storage by leveraging uncorrelated structural twist. We develop a physical twisted neural network to describe the optical behavior of the meta-disk and conduct a comprehensive lateral error analysis, where the meta-disk stores large volumes of information through internal structural multiplexing. Two-layer 640 µm x 640 µm meta-disk is sufficient to store over hundreds of high-fidelity images with SSIM of 0.8. By harnessing advanced three-dimensional (3D) printing technology, optical holographic storage is experimentally demonstrated with Pancharatnam-Berry metasurfaces. Our technology provides essential backing for the next generation of optical storage, display, encryption, and multifunctional optical analog computing.