Lee Juhyun, Jeong Jinsoo, Cho Jaebum, Yoo Dongheon, Lee Byounghyo, Lee Byoungho
Opt Express. 2020 Aug 31;28(18):27137-27154. doi: 10.1364/OE.402317.
We present a deep neural network for generating a multi-depth hologram and its training strategy. The proposed network takes multiple images of different depths as inputs and calculates the complex hologram as an output, which reconstructs each input image at the corresponding depth. We design a structure of the proposed network and develop the dataset compositing method to train the network effectively. The dataset consists of multiple input intensity profiles and their propagated holograms. Rather than simply training random speckle images and their propagated holograms, we generate the training dataset by adjusting the density of the random dots or combining basic shapes to the dataset such as a circle. The proposed dataset composition method improves the quality of reconstructed images by the holograms generated by the network, called deep learning holograms (DLHs). To verify the proposed method, we numerically and optically reconstruct the DLHs. The results confirmed that the DLHs can reconstruct clear images at multiple depths similar to conventional multi-depth computer-generated holograms. To evaluate the performance of the DLH quantitatively, we compute the peak signal-to-noise ratio of the reconstructed images and analyze the reconstructed intensity patterns with various methods.
我们提出了一种用于生成多深度全息图的深度神经网络及其训练策略。所提出的网络将不同深度的多幅图像作为输入,并计算出复全息图作为输出,该复全息图可在相应深度重建每幅输入图像。我们设计了所提出网络的结构,并开发了数据集合成方法以有效地训练该网络。该数据集由多个输入强度分布及其传播全息图组成。我们不是简单地训练随机散斑图像及其传播全息图,而是通过调整随机点的密度或向数据集中组合基本形状(如圆形)来生成训练数据集。所提出的数据集合成方法提高了由网络生成的全息图(称为深度学习全息图,DLHs)重建图像的质量。为了验证所提出的方法,我们对DLHs进行了数值和光学重建。结果证实,DLHs能够在多个深度重建清晰的图像,类似于传统的多深度计算机生成全息图。为了定量评估DLH的性能,我们计算了重建图像的峰值信噪比,并使用各种方法分析重建强度模式。