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Dense Light Field Reconstruction from Sparse Sampling Using Residual Network

机译:使用残差网络从稀疏采样的密集光场重建

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A light field records numerous light rays from a real-world scene. However, capturing a dense light field by existing devices is a time-consuming process. Besides, reconstructing a large amount of light rays equivalent to multiple light fields using sparse sampling arises a severe challenge for existing methods. In this paper, we present a learning-based method to reconstruct multiple novel light fields between two mutually independent light fields. We indicate that light rays distributed in different light fields have the same consistent constraints under a certain condition. The most significant constraint is a depth related correlation between angular and spatial dimensions. Our method avoids working out the error-sensitive constraint by employing a deep neural network. We predict residual values of pixels on epipolar plane image (EPI) to reconstruct novel light fields. Our method is able to reconstruct 2 to 4 novel light fields between two mutually independent input light fields. We also compare our results with those yielded by a number of alternatives elsewhere in the literature, which shows our reconstructed light fields have better structure similarity and occlusion.
机译:一场灯场从真实世界的场景记录了许多光线。然而,现有设备捕获密集光场是耗时的过程。此外,使用稀疏采样重建与使用稀疏抽样的多个光场相当的大量光线引起了现有方法的严重挑战。在本文中,我们介绍了一种基于学习的方法来重建两个相互独立的光场之间的多个新颖的光场。指示在不同光场中分布的光线在一定条件下具有相同的一致约束。最重要的约束是角度和空间尺寸之间的深度相关相关性。我们的方法避免通过使用深神经网络来锻炼错误敏感的约束。我们预测对末面平面图像(EPI)的像素的残余值重建新颖的光场。我们的方法能够在两个相互独立的输入光场之间重建2到4个新颖的光场。我们还将结果与文学中其他地方其他地方的替代品产生的结果进行了比较,这表明我们的重建光场具有更好的结构相似性和遮挡。

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