4K-DMDNet: diffraction model-driven network for 4K computer-generated holography

IF 15.3 1区 物理与天体物理 Q1 OPTICS Opto-Electronic Advances Pub Date : 2023-01-01 DOI:10.29026/oea.2023.220135
Kexuan Liu, Jiachen Wu, Zehao He, Liang Cao
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引用次数: 15

Abstract

Deep learning offers a novel opportunity to achieve both high-quality and high-speed computer-generated holography (CGH). Current data-driven deep learning algorithms face the challenge that the labeled training datasets limit the training performance and generalization. The model-driven deep learning introduces the diffraction model into the neural network. It eliminates the need for the labeled training dataset and has been extensively applied to hologram generation. However, the existing model-driven deep learning algorithms face the problem of insufficient constraints. In this study, we propose a model-driven neural network capable of high-fidelity 4K computer-generated hologram generation, called 4K Diffraction Model-driven Network (4K-DMDNet). The constraint of the reconstructed images in the frequency domain is strengthened. And a network structure that combines the residual method and sub-pixel convolution method is built, which effectively enhances the fitting ability of the network for inverse problems. The generalization of the 4K-DMDNet is demonstrated with binary, grayscale and 3D images. High-quality full-color optical reconstructions of the 4K holograms have been achieved at the wavelengths of 450 nm, 520 nm, and 638 nm.
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4K- dmdnet:用于4K计算机生成全息的衍射模型驱动网络
深度学习为实现高质量和高速计算机生成全息(CGH)提供了一个新的机会。当前的数据驱动深度学习算法面临着标记化训练数据集限制训练性能和泛化的挑战。模型驱动深度学习将衍射模型引入神经网络。它消除了对标记训练数据集的需要,并已广泛应用于全息图生成。然而,现有的模型驱动深度学习算法面临约束不足的问题。在这项研究中,我们提出了一种能够高保真4K计算机生成全息图的模型驱动神经网络,称为4K衍射模型驱动网络(4K- dmdnet)。增强了重构图像在频域的约束。建立了残差法和亚像素卷积法相结合的网络结构,有效提高了网络对反问题的拟合能力。通过二值图像、灰度图像和三维图像验证了4K-DMDNet的泛化效果。在450nm、520nm和638nm波长下实现了4K全息图的高质量全彩光学重建。
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来源期刊
CiteScore
19.30
自引率
7.10%
发文量
128
期刊介绍: Opto-Electronic Advances (OEA) is a distinguished scientific journal that has made significant strides since its inception in March 2018. Here's a collated summary of its key features and accomplishments: Impact Factor and Ranking: OEA boasts an impressive Impact Factor of 14.1, which positions it within the Q1 quartiles of the Optics category. This high ranking indicates that the journal is among the top 25% of its field in terms of citation impact. Open Access and Peer Review: As an open access journal, OEA ensures that research findings are freely available to the global scientific community, promoting wider dissemination and collaboration. It upholds rigorous academic standards through a peer review process, ensuring the quality and integrity of the published research. Database Indexing: OEA's content is indexed in several prestigious databases, including the Science Citation Index (SCI), Engineering Index (EI), Scopus, Chemical Abstracts (CA), and the Index to Chinese Periodical Articles (ICI). This broad indexing facilitates easy access to the journal's articles by researchers worldwide. Scope and Purpose: OEA is committed to serving as a platform for the exchange of knowledge through the publication of high-quality empirical and theoretical research papers. It covers a wide range of topics within the broad area of optics, photonics, and optoelectronics, catering to researchers, academicians, professionals, practitioners, and students alike.
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