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引用次数: 0
摘要
光场以捕捉定向光线而闻名,由于身临其境媒体对视图合成的需求日益增长,以及深度学习技术的最新进展,光场合成技术受到了广泛关注。然而,现有的光场合成方法侧重于生成基线有限的视图,即子孔图像(SAI)之间的距离。在本文中,我们提出了一种新方法,利用单目视频中的连续帧来合成具有扩展基线的光场。我们创建了一个具有宽基线的合成光场数据集,该数据集来自一款视频游戏,并采用了逼真渲染技术。该数据集由连续光场帧和中央子孔径图像的深度图组成。拟议的网络由两个关键步骤组成,一个是利用 RGBD 图像生成可见 SAI 的预处理步骤,另一个是利用 RGBD 监督构建神经辐射场的合成步骤。
Light Field Synthesis from a Monocular Video Using Neural Radiance Fields
Light field, known for capturing directional light rays, has garnered substantial interest owing to the growing demand for view synthesis in immersive media and recent advancements in deep learning techniques. However, existing light field synthesis methods focus on generating views with a limited baseline, which is the distance between sub-aperture images (SAIs). In this paper, we propose a novel method to compose a light field with an expanded baseline using successive frames from a monocular video. We create a synthetic light field dataset with a wide baseline derived from a video game, employing photorealistic rendering. This dataset consists of continuous light field frames and depth maps of the central sub-aperture images. The proposed network consists of two key steps, a preprocessing step that generates visible SAIs using RGBD images and a synthesis step that constructs a Neural Radiance Field with RGBD supervision.