基于深度卷积网络的EPI光场重建

Gaochang Wu, Mandan Zhao, Liangyong Wang, Qionghai Dai, Tianyou Chai, Yebin Liu
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引用次数: 178

摘要

本文利用光场数据中极平面图像(EPI)清晰的纹理结构,将稀疏视图集的光场重建问题建模为基于cnn的EPI角度细节恢复问题。我们指出,稀疏采样光场重建的主要挑战之一是空间域和角域之间的信息不对称,其中角域的细节部分被欠采样破坏。为了平衡空间和角度信息,在输入到网络之前,使用EPI模糊去除EPI的空间高频成分。最后,采用非盲去模糊操作恢复被EPI模糊抑制的空间细节。我们在几个数据集上评估了我们的方法,包括合成场景、真实场景和具有挑战性的显微镜光场数据。与最先进的算法相比,我们证明了所提出框架的高性能和鲁棒性。我们还展示了利用重建光场进行深度增强的进一步应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Light Field Reconstruction Using Deep Convolutional Network on EPI
In this paper, we take advantage of the clear texture structure of the epipolar plane image (EPI) in the light field data and model the problem of light field reconstruction from a sparse set of views as a CNN-based angular detail restoration on EPI. We indicate that one of the main challenges in sparsely sampled light field reconstruction is the information asymmetry between the spatial and angular domain, where the detail portion in the angular domain is damaged by undersampling. To balance the spatial and angular information, the spatial high frequency components of an EPI is removed using EPI blur, before feeding to the network. Finally, a non-blind deblur operation is used to recover the spatial detail suppressed by the EPI blur. We evaluate our approach on several datasets including synthetic scenes, real-world scenes and challenging microscope light field data. We demonstrate the high performance and robustness of the proposed framework compared with the state-of-the-arts algorithms. We also show a further application for depth enhancement by using the reconstructed light field.
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