Ma Shujun, Liu Qi, Yu Yantao, Luo Yu, Wang Shiliang
Opt Express. 2021 Aug 2;29(16):24928-24946. doi: 10.1364/OE.430524.
Based on the hologram inpainting via a two-stage Generative Adversarial Network (GAN), we present a precise phase aberration compensation method in digital holographic microscopy (DHM). In the proposed methodology, the interference fringes of the sample area in the hologram are firstly removed by the background segmentation via edge detection and morphological image processing. The vacancy area is then inpainted with the fringes generated by a deep learning algorithm. The image inpainting finally results in a sample-free reference hologram containing the total aberration of the system. The phase aberrations could be deleted by subtracting the unwrapped phase of the sample-free hologram from our inpainting network results, in no need of any complex spectrum centering procedure, prior knowledge of the system, or manual intervention. With a full and proper training of the two-stage GAN, our approach can robustly realize a distinct phase mapping, which overcomes the drawbacks of multiple iterations, noise interference or limited field of view in the recent methods using self-extension, Zernike polynomials fitting (ZPF) or geometrical transformations. The validity of the proposed procedure is confirmed by measuring the surface of preprocessed silicon wafer with a Michelson interferometer digital holographic inspection platform. The results of our experiment indicate the viability and accuracy of the presented method. Additionally, this work can pave the way for the evaluation of new applications of GAN in DHM.
基于通过两阶段生成对抗网络(GAN)进行的全息图修复,我们提出了一种数字全息显微镜(DHM)中的精确相位像差补偿方法。在所提出的方法中,首先通过边缘检测和形态图像处理进行背景分割,去除全息图中样品区域的干涉条纹。然后用深度学习算法生成的条纹对空缺区域进行修复。图像修复最终得到一个包含系统总像差的无样品参考全息图。通过从我们的修复网络结果中减去无样品全息图的展开相位,可以消除相位像差,无需任何复杂的频谱居中程序、系统的先验知识或人工干预。通过对两阶段GAN进行充分且适当的训练,我们的方法能够稳健地实现清晰的相位映射,克服了最近使用自扩展、泽尼克多项式拟合(ZPF)或几何变换的方法中多次迭代、噪声干扰或视野有限的缺点。使用迈克尔逊干涉仪数字全息检测平台测量预处理后的硅片表面,证实了所提出程序的有效性。我们的实验结果表明了所提出方法的可行性和准确性。此外,这项工作可为评估GAN在DHM中的新应用铺平道路。