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DeepCGH: 3D computer-generated holography using deep learning
Author(s) -
M. Hossein Eybposh,
Nicholas W. Caira,
Mathew Atisa,
Praneeth Chakravarthula,
Nicolas C. Pégard
Publication year - 2020
Publication title -
optics express
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.394
H-Index - 271
ISSN - 1094-4087
DOI - 10.1364/oe.399624
Subject(s) - holography , computer science , optics , photostimulation , holographic display , computation , wavefront , spatial frequency , diffraction efficiency , artificial intelligence , artificial neural network , convolutional neural network , algorithm , physics , neuroscience , biology
The goal of computer-generated holography (CGH) is to synthesize custom illumination patterns by modulating a coherent light beam. CGH algorithms typically rely on iterative optimization with a built-in trade-off between computation speed and hologram accuracy that limits performance in advanced applications such as optogenetic photostimulation. We introduce a non-iterative algorithm, DeepCGH, that relies on a convolutional neural network with unsupervised learning to compute accurate holograms with fixed computational complexity. Simulations show that our method generates holograms orders of magnitude faster and with up to 41% greater accuracy than alternate CGH techniques. Experiments in a holographic multiphoton microscope show that DeepCGH substantially enhances two-photon absorption and improves performance in photostimulation tasks without requiring additional laser power.

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