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Deep-learning-assisted Hologram Calculation via Low-Sampling Holograms

机译:通过低采样全息图进行深度学习辅助全息图计算

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Digital holograms can be calculated by simulating light wave propagation on a computer. Hologram calculations are used for three-dimensional displays. However, the calculations take a long time, and the data size of the calculated holograms becomes large. This study presents a deep-learning-assisted hologram calculation using low-sampling holograms. We calculate holograms with low-sampling rates, resulting in the acceleration of the hologram calculation and the decrease of the hologram size. However, the low-sampling holograms decrease the quality of the reconstructed images and will occur the aliasing errors when not satisfying the Nyquist rate. The proposed method uses a deep neural network to retrieve the full-sampling holograms from the low-sampling holograms. We show elementary results of the proposed method in numerical simulation.
机译:可以通过在计算机上模拟光波传播来计算数字全息图。全息图计算用于三维显示。但是,计算需要很长时间,并且所计算的全息图的数据大小变大。这项研究提出了一种使用低采样全息图的深度学习辅助全息图计算方法。我们以低采样率计算全息图,从而导致全息图计算的加速和全息图尺寸的减小。然而,低采样全息图降低了重建图像的质量,并且当不满足奈奎斯特速率时将发生混叠误差。所提出的方法使用深度神经网络从低采样全息图检索全采样全息图。我们在数值模拟中显示了该方法的基本结果。

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