High Resolution Light Field Recovery with Fourier Disparity Layer Completion, Demosaicing, and Super-Resolution

Mikael Le Pendu, A. Smolic
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引用次数: 9

Abstract

In this paper, we present a novel approach for recovering high resolution light fields from input data with many types of degradation and challenges typically found in lenslet based plenoptic cameras. Those include the low spatial resolution, but also the irregular spatio-angular sampling and color sampling, the depth-dependent blur, and even axial chromatic aberrations. Our approach, based on the recent Fourier Disparity Layer representation of the light field, allows the construction of high resolution layers directly from the low resolution input views. High resolution light field views are then simply reconstructed by shifting and summing the layers. We show that when the spatial sampling is regular, the layer construction can be decomposed into linear optimization problems formulated in the Fourier domain for small groups of frequency components. We additionally propose a new preconditioning approach ensuring spatial consistency, and a color regularization term to simultaneously perform color demosaicing. For the general case of light field completion from an irregular sampling, we define a simple iterative version of the algorithm. Both approaches are then combined for an efficient super-resolution of the irregularly sampled data of plenoptic cameras. Finally, the Fourier Disparity Layer model naturally extends to take into account a depth-dependent blur and axial chromatic aberrations without requiring an estimation of depth or disparity maps.
高分辨率光场恢复与傅里叶视差层补全,去马赛克,和超分辨率
在本文中,我们提出了一种从输入数据中恢复高分辨率光场的新方法,这些数据具有许多类型的退化和挑战,通常在基于透镜的全光学相机中发现。这些问题包括低空间分辨率,但也有不规则的空间角采样和颜色采样,深度相关的模糊,甚至轴向色差。我们的方法,基于最近的傅里叶视差层表示的光场,允许直接从低分辨率输入视图构建高分辨率层。高分辨率的光场视图,然后简单地通过移动和叠加层重建。我们表明,当空间采样是规则的,层的结构可以分解成线性优化问题,在傅里叶域为小群的频率成分。我们还提出了一种新的预处理方法来确保空间一致性,并提出了一个颜色正则化项来同时执行颜色去马赛克。对于不规则采样的光场补全的一般情况,我们定义了该算法的一个简单迭代版本。然后将这两种方法结合起来,对全光学相机的不规则采样数据进行有效的超分辨率处理。最后,傅里叶视差层模型自然扩展到考虑到深度相关的模糊和轴向色差,而不需要估计深度或视差图。
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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