Opt Lett. 2023 Apr 1;48(7):1850-1853. doi: 10.1364/OL.479652.
Holographic display is considered as a promising three-dimensional (3D) display technology and has been widely studied. However, to date, the real-time holographic display for real scenes is still far from being incorporated in our life. The speed and quality of information extraction and holographic computing need to be further improved. In this paper, we propose an end-to-end real-time holographic display based on real-time capture of real scenes, where the parallax images are collected from the scene and a convolutional neural network (CNN) builds the mapping from the parallax images to the hologram. Parallax images are acquired in real time by a binocular camera, and contain depth information and amplitude information needed for 3D hologram calculation. The CNN, which can transform parallax images into 3D holograms, is trained by datasets consisting of parallax images and high-quality 3D holograms. The static colorful reconstruction and speckle-free real-time holographic display based on real-time capture of real scenes have been verified by the optical experiments. With simple system composition and affordable hardware requirements, the proposed technique will break the dilemma of the existing real-scene holographic display, and open up a new direction for the application of real-scene holographic 3D display such as holographic live video and solving vergence-accommodation conflict (VAC) problems for head-mounted display devices.
全息显示被认为是一种很有前途的三维(3D)显示技术,已经得到了广泛的研究。然而,迄今为止,用于真实场景的实时全息显示仍然远远没有融入我们的生活。信息提取和全息计算的速度和质量需要进一步提高。在本文中,我们提出了一种基于实时捕获真实场景的端到端实时全息显示,其中从场景中采集视差图像,并使用卷积神经网络(CNN)建立从视差图像到全息图的映射。视差图像由双目相机实时采集,包含用于 3D 全息图计算的深度信息和幅度信息。可以将视差图像转换为 3D 全息图的 CNN 通过包含视差图像和高质量 3D 全息图的数据集进行训练。光学实验验证了基于实时捕获真实场景的静态彩色重建和无斑点实时全息显示。通过简单的系统组成和可承受的硬件要求,该技术将打破现有真实场景全息显示的困境,为真实场景全息 3D 显示的应用开辟新的方向,例如全息现场视频和解决头戴式显示设备的辐辏调节冲突(VAC)问题。