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Deep empirical neural network for optical phase retrieval over a scattering medium

Author

Listed:
  • Huaisheng Tu

    (Guangdong University of Technology
    Guangdong University of Technology
    Guangdong University of Technology
    Guangdong University of Technology)

  • Haotian Liu

    (Guangdong University of Technology
    Guangdong University of Technology
    Guangdong University of Technology
    Guangdong University of Technology)

  • Tuqiang Pan

    (Guangdong University of Technology
    Guangdong University of Technology
    Guangdong University of Technology
    Guangdong University of Technology)

  • Wuping Xie

    (Guangdong University of Technology
    Guangdong University of Technology
    Guangdong University of Technology
    Guangdong University of Technology)

  • Zihao Ma

    (Guangdong University of Technology
    Guangdong University of Technology
    Guangdong University of Technology
    Guangdong University of Technology)

  • Fan Zhang

    (Guangdong University of Technology
    Guangdong University of Technology
    Guangdong University of Technology
    Guangdong University of Technology)

  • Pengbai Xu

    (Guangdong University of Technology
    Guangdong University of Technology
    Guangdong University of Technology
    Guangdong University of Technology)

  • Leiming Wu

    (Guangdong University of Technology
    Guangdong University of Technology
    Guangdong University of Technology
    Guangdong University of Technology)

  • Ou Xu

    (Guangdong University of Technology
    Guangdong University of Technology
    Guangdong University of Technology
    Guangdong University of Technology)

  • Yi Xu

    (Guangdong University of Technology
    Guangdong University of Technology
    Guangdong University of Technology
    Guangdong University of Technology)

  • Yuwen Qin

    (Guangdong University of Technology
    Guangdong University of Technology
    Guangdong University of Technology
    Guangdong University of Technology)

Abstract

Supervised learning, a popular tool in modern science and technology, thrives on huge amounts of labeled data. Physics-enhanced deep neural networks offer an effective solution to alleviate the data burden by incorporating an analytical model that interprets the underlying physical processes. However, it completely fails in tackling systems without analytical solution, where wave scattering systems with multiple input multiple output are typical examples. Herein, we propose a concept of deep empirical neural network (DENN) that is a hybridization of a deep neural network and an empirical model, which enables seeing through an opaque scattering medium in an untrained manner. The DENN does not rely on labeled data, all while delivering as high as 58% improvement in fidelity compared with the supervised learning using 30000 data pairs for achieving the same goal of optical phase retrieval. The DENN might shed new light on the applications of deep learning in physics, information science, biology, chemistry and beyond.

Suggested Citation

  • Huaisheng Tu & Haotian Liu & Tuqiang Pan & Wuping Xie & Zihao Ma & Fan Zhang & Pengbai Xu & Leiming Wu & Ou Xu & Yi Xu & Yuwen Qin, 2025. "Deep empirical neural network for optical phase retrieval over a scattering medium," Nature Communications, Nature, vol. 16(1), pages 1-9, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-56522-5
    DOI: 10.1038/s41467-025-56522-5
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    References listed on IDEAS

    as
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