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Learning Sheared EPI Structure for Light Field Reconstruction

机译:学习剪切EPI结构以进行光场重建

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摘要

Research in light field reconstruction focuses on synthesizing novel views with the assistance of depth information. In this paper, we present a learning-based light field reconstruction approach by fusing a set of sheared epipolar plane images (EPIs). We start by showing that a patch in a sheared EPI will exhibit a clear structure when the sheared value equals the depth of that patch. By taking advantage of this pattern, a convolutional neural network (CNN) is then trained to evaluate the sheared EPIs, and output a reference score for fusing the sheared EPIs. The proposed CNN is elaborately designed to learn the similarity degree between the input sheared EN and the ground truth EPI. Therefore, no depth information is required int. network training and reasoning. We demonstrate the high performance of the proposed method through evaluations on synthetic scenes, real-world scenes, and challenging microscope light fields. We also show a further application of our proposed network for depth inference.
机译:光场重建的研究着重于借助深度信息来合成新颖的视图。在本文中,我们通过融合一组剪切对极平面图像(EPI)提出了一种基于学习的光场重建方法。我们首先显示,当剪切值等于该补丁的深度时,剪切的EPI中的补丁将显示出清晰的结构。通过利用这种模式,然后训练卷积神经网络(CNN)来评估剪切的EPI,并输出参考值以融合剪切的EPI。精心设计了拟议的CNN,以了解输入剪切EN和地面真实EPI之间的相似度。因此,int不需要深度信息。网络培训和推理。我们通过对合成场景,真实场景和具有挑战性的显微镜光场进行评估,证明了该方法的高性能。我们还展示了我们提出的深度推理网络的进一步应用。

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