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An autoencoder neural network is proposed for real-time phase-only CGH generation. As an unsupervised learning method, the input and output of the autoencoder are both the original images, which dispenses with calculating corresponding holograms. It could automatically learn the encoding of phase-only holograms during the training period. Once the training is completed, the phase-only hologram of any two-dimensional image can be quickly generated. The calculation time is 1-2 orders of magnitude faster than the traditional iterative algorithms and the reconstructed image quality is improved.
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