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Advanced filters: Author: Eirini Kakkava Clear advanced filters
  • Machine learning has become popular in solving complex optical problems such as recovering the input phase and amplitude for a specific pattern or image measured through a scattering medium. In a more challenging application, Rahmani et al. consider the problem of also producing desired outputs for such a nonlinear system when only some intensity-only measurements of example outputs are available. They develop a neural network approach that can ensure the transmission of images through a highly nonlinear system—a multimode fibre—with a 90% fidelity.

    • Babak Rahmani
    • Damien Loterie
    • Christophe Moser
    Research
    Nature Machine Intelligence
    Volume: 2, P: 403-410