Learning Fused Pixel and Feature-Based View Reconstructions for Light Fields

Jinglei Shi, Xiaoran Jiang, C. Guillemot
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引用次数: 40

Abstract

In this paper, we present a learning-based framework for light field view synthesis from a subset of input views. Building upon a light-weight optical flow estimation network to obtain depth maps, our method employs two reconstruction modules in pixel and feature domains respectively. For the pixel-wise reconstruction, occlusions are explicitly handled by a disparity-dependent interpolation filter, whereas inpainting on disoccluded areas is learned by convolutional layers. Due to disparity inconsistencies, the pixel-based reconstruction may lead to blurriness in highly textured areas as well as on object contours. On the contrary, the feature-based reconstruction well performs on high frequencies, making the reconstruction in the two domains complementary. End-to-end learning is finally performed including a fusion module merging pixel and feature-based reconstructions. Experimental results show that our method achieves state-of-the-art performance on both synthetic and real-world datasets, moreover, it is even able to extend light fields' baseline by extrapolating high quality views without additional training.
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学习融合像素和基于特征的光场视图重建
在本文中,我们提出了一个基于学习的框架,用于从输入视图子集中合成光场视图。该方法基于轻量级光流估计网络获取深度图,在像素域和特征域分别使用两个重构模块。对于逐像素重建,遮挡由差异相关的插值滤波器显式处理,而对未遮挡区域的绘制则由卷积层学习。由于视差不一致,基于像素的重建可能导致高度纹理区域以及物体轮廓的模糊。相反,基于特征的重构在高频上表现良好,使两个域的重构互补。最后进行端到端学习,包括融合模块合并像素和基于特征的重建。实验结果表明,我们的方法在合成数据集和真实数据集上都达到了最先进的性能,而且,它甚至可以通过外推高质量的视图来扩展光场的基线,而无需额外的训练。
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