Implicit Epipolar Geometric Function based Light Field Continuous Angular Representation

Lin Zhong, Bangcheng Zong, Qiming Wang, Junle Yu, Wenhui Zhou
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Abstract

Light field plays an important role in many different applications such as virtual reality, microscopy and computational photography. However, low angular resolution limits the further application of light field. The existing state of the art light field angular super-resolution reconstruction methods can only achieve limited fixed-scale angular super-resolution. This paper focuses on a continuous arbitrary-scale light field angular super-resolution via introducing the implicit neural representation into the light field two-plane parametrization. Specifically, we first formulate a 4D implicit epipolar geometric function for light field continuous angular representation. Considering it is difficult and inefficient to directly learn this 4D implicit function, a divide-and-conquer learning strategy and a spatial information embedded encoder are then proposed to convert the 4D implicit function learning into a joint learning of 2D local implicit functions. Furthermore, we design a special epipolar geometric convolution block (EPIBlock) to encode the light field epipolar constraint information. Experiments on both synthetic and real-world light field datasets demonstrate that our method exhibits not only significant superiority in fixed-scale angular super-resolution, but also achieves arbitrary high magnification light field super-resolution while still maintaining the clear light field epipolar geometric structure.
基于隐式极极几何函数的光场连续角表示
光场在虚拟现实、显微术、计算摄影等领域中发挥着重要的作用。然而,低角分辨率限制了光场的进一步应用。现有的光场角超分辨重建方法只能实现有限的定尺度角超分辨。本文将隐式神经网络表示引入到光场双平面参数化中,研究了连续任意尺度光场角超分辨率问题。具体来说,我们首先建立了一个四维隐式极几何函数,用于光场连续角表示。考虑到直接学习四维隐函数的难度和效率,提出了分而治之的学习策略和空间信息嵌入式编码器,将四维隐函数的学习转化为二维局部隐函数的联合学习。此外,我们设计了一个特殊的极面几何卷积块(EPIBlock)来编码光场极面约束信息。在合成光场和实际光场数据集上的实验表明,该方法不仅在固定尺度角超分辨率方面具有显著优势,而且在保持清晰光场极外几何结构的情况下,可以实现任意高倍率光场超分辨率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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