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Deep neural network and its training strategy for converting computer-generated hologram between different display systems

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Abstract

We propose a deep learning method to convert the given hologram for a display system to a new one for another system. The proposed method can be applied to adapt holograms to any component changes of different systems. In this paper, we set different wavelength of the light source for the original and target display system. Convolutional neural network is designed, and artificial hologram dataset is used for training. Numerically reconstructed images of the converted holograms are shown.

© 2022 The Author(s)

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