3D- holonet:快速,无过滤,3D全息图生成与相机校准的网络学习。

IF 3.3 2区 物理与天体物理 Q2 OPTICS Optics letters Pub Date : 2025-02-15 DOI:10.1364/OL.544816
Wenbin Zhou, Feifan Qu, Xiangyu Meng, Zhenyang Li, Yifan Peng
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引用次数: 0

摘要

计算全息显示通常依赖于耗时的迭代计算机生成全息(CGH)算法和笨重的物理滤波器来获得高质量的重建图像。在实现3D全息图像时,这种在推理速度和图像质量之间的权衡变得更加明显。这项工作提出了3D- holonet,一种深度神经网络支持的CGH算法,用于实时生成以RGB-D图像表示的3D场景的纯相位全息图(poh)。该方案将一个学习的、相机校准的波传播模型和相位正则化先验纳入其优化中。这种独特的组合允许容纳实际的,未经过滤的全息显示设置,可能被各种硬件缺陷损坏。在无滤光全息显示器上的测试结果表明,所提出的3D-HoloNet可以在使用消费者级GPU的一个彩色通道下实现30 fps的全高清,同时在多个聚焦距离上保持与迭代方法相当的图像质量。
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3D-HoloNet: fast, unfiltered, 3D hologram generation with camera-calibrated network learning.

Computational holographic displays typically rely on time-consuming iterative computer-generated holographic (CGH) algorithms and bulky physical filters to attain high-quality reconstruction images. This trade-off between inference speed and image quality becomes more pronounced when aiming to realize 3D holographic imagery. This work presents 3D-HoloNet, a deep neural network-empowered CGH algorithm for generating phase-only holograms (POHs) of 3D scenes, represented as RGB-D images, in real time. The proposed scheme incorporates a learned, camera-calibrated wave propagation model and a phase regularization prior into its optimization. This unique combination allows for accommodating practical, unfiltered holographic display setups that may be corrupted by various hardware imperfections. Results tested on an unfiltered holographic display reveal that the proposed 3D-HoloNet can achieve 30 fps at full HD for one color channel using a consumer-level GPU while maintaining image quality comparable to iterative methods across multiple focused distances.

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来源期刊
Optics letters
Optics letters 物理-光学
CiteScore
6.60
自引率
8.30%
发文量
2275
审稿时长
1.7 months
期刊介绍: The Optical Society (OSA) publishes high-quality, peer-reviewed articles in its portfolio of journals, which serve the full breadth of the optics and photonics community. Optics Letters offers rapid dissemination of new results in all areas of optics with short, original, peer-reviewed communications. Optics Letters covers the latest research in optical science, including optical measurements, optical components and devices, atmospheric optics, biomedical optics, Fourier optics, integrated optics, optical processing, optoelectronics, lasers, nonlinear optics, optical storage and holography, optical coherence, polarization, quantum electronics, ultrafast optical phenomena, photonic crystals, and fiber optics. Criteria used in determining acceptability of contributions include newsworthiness to a substantial part of the optics community and the effect of rapid publication on the research of others. This journal, published twice each month, is where readers look for the latest discoveries in optics.
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