Login / Signup

Self-supervised dynamic learning for long-term high-fidelity image transmission through unstabilized diffusive media.

Ziwei LiWei ZhouZhanhong ZhouShuqi ZhangJianyang ShiChao ShenJunwen ZhangNan ChiQionghai Dai
Published in: Nature communications (2024)
Multimode fiber (MMF) which supports parallel transmission of spatially distributed information is a promising platform for remote imaging and capacity-enhanced optical communication. However, the variability of the scattering MMF channel poses a challenge for achieving long-term accurate transmission over long distances, of which static optical propagation modeling with calibrated transmission matrix or data-driven learning will inevitably degenerate. In this paper, we present a self-supervised dynamic learning approach that achieves long-term, high-fidelity transmission of arbitrary optical fields through unstabilized MMFs. Multiple networks carrying both long- and short-term memory of the propagation model variations are adaptively updated and ensembled to achieve robust image recovery. We demonstrate >99.9% accuracy in the transmission of 1024 spatial degree-of-freedom over 1 km length MMFs lasting over 1000 seconds. The long-term high-fidelity capability enables compressive encoded transfer of high-resolution video with orders of throughput enhancement, offering insights for artificial intelligence promoted diffusive spatial transmission in practical applications.
Keyphrases
  • high resolution
  • artificial intelligence
  • machine learning
  • deep learning
  • mass spectrometry
  • big data
  • tandem mass spectrometry
  • single cell
  • photodynamic therapy
  • liquid chromatography