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Integrated photonic encoder for low power and high-speed image processing.

Xiao WangBrandon ReddingNicholas KarlChristopher LongZheyuan ZhuJames SkowronekShuo PangDavid BradyRaktim Sarma
Published in: Nature communications (2024)
Modern lens designs are capable of resolving greater than 10 gigapixels, while advances in camera frame-rate and hyperspectral imaging have made data acquisition rates of Terapixel/second a real possibility. The main bottlenecks preventing such high data-rate systems are power consumption and data storage. In this work, we show that analog photonic encoders could address this challenge, enabling high-speed image compression using orders-of-magnitude lower power than digital electronics. Our approach relies on a silicon-photonics front-end to compress raw image data, foregoing energy-intensive image conditioning and reducing data storage requirements. The compression scheme uses a passive disordered photonic structure to perform kernel-type random projections of the raw image data with minimal power consumption and low latency. A back-end neural network can then reconstruct the original images with structural similarity exceeding 90%. This scheme has the potential to process data streams exceeding Terapixel/second using less than 100 fJ/pixel, providing a path to ultra-high-resolution data and image acquisition systems.
Keyphrases
  • high speed
  • high resolution
  • electronic health record
  • deep learning
  • big data
  • machine learning
  • convolutional neural network
  • photodynamic therapy
  • visible light