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Multi-Depth Hologram Generation with Deep Neural Network Using Focal Stacks

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Abstract

A deep neural network that yields 3D multi-focal hologram is presented. The network takes three focal stacks as inputs and yields corresponding real and imaginary parts of a complex hologram.

© 2021 The Author(s)

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