Affiliation:
1. University of California
2. California NanoSystems Institute (CNSI), University of California
Abstract
Deep learning has been revolutionizing information processing in many
fields of science and engineering owing to the massively growing
amounts of data and the advances in deep neural network architectures.
As these neural networks are expanding their capabilities toward
achieving state-of-the-art solutions for demanding statistical
inference tasks in various applications, there appears to be a global
need for low-power, scalable, and fast computing hardware beyond what
existing electronic systems can offer. Optical computing might
potentially address some of these needs with its inherent parallelism,
power efficiency, and high speed. Recent advances in optical
materials, fabrication, and optimization techniques have significantly
enriched the design capabilities in optics and photonics, leading to
various successful demonstrations of guided-wave and free-space
computing hardware for accelerating machine learning tasks using
light. In addition to statistical inference and computing, deep
learning has also fundamentally affected the field of inverse
optical/photonic design. The approximation power of deep neural
networks has been utilized to develop optics/photonics systems with
unique capabilities, all the way from nanoantenna design to end-to-end
optimization of computational imaging and sensing systems. In this
review, we attempt to provide a broad overview of the current state of
this emerging symbiotic relationship between deep learning and
optics/photonics.
Funder
Office of Naval Research
Air Force Office of Scientific
Research
Subject
Atomic and Molecular Physics, and Optics
Cited by
35 articles.
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