Nature Communications (Oct 2023)

Learning diffractive optical communication around arbitrary opaque occlusions

  • Md Sadman Sakib Rahman,
  • Tianyi Gan,
  • Emir Arda Deger,
  • Çağatay Işıl,
  • Mona Jarrahi,
  • Aydogan Ozcan

DOI
https://doi.org/10.1038/s41467-023-42556-0
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 17

Abstract

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Abstract Free-space optical communication becomes challenging when an occlusion blocks the light path. Here, we demonstrate a direct communication scheme, passing optical information around a fully opaque, arbitrarily shaped occlusion that partially or entirely occludes the transmitter’s field-of-view. In this scheme, an electronic neural network encoder and a passive, all-optical diffractive network-based decoder are jointly trained using deep learning to transfer the optical information of interest around the opaque occlusion of an arbitrary shape. Following its training, the encoder-decoder pair can communicate any arbitrary optical information around opaque occlusions, where the information decoding occurs at the speed of light propagation through passive light-matter interactions, with resilience against various unknown changes in the occlusion shape and size. We also validate this framework experimentally in the terahertz spectrum using a 3D-printed diffractive decoder. Scalable for operation in any wavelength regime, this scheme could be particularly useful in emerging high data-rate free-space communication systems.