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Edge Orientation Driven Depth Super-Resolution for View Synthesis

机译:边缘方向驱动深度超分辨率,用于查看合成

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The limited resolution of depth images is a constraint for most of practical computer vision applications. To solve this problem, in this paper, we present a novel depth super-resolution method based on machine learning. The proposed super-resolution method incorporates an edge-orientation based depth patch clustering method, which classifies the patches into several categories based on gradient strength and directions. A linear mapping between the low resolution (LR) and high resolution (HR) patch pairs is learned for each patch category by minimizing the synthesis view distortion. Since depth maps are not viewed directly, they are used to generate the virtual views, our method takes synthesis view distortion as the optimization strategy. Experimental results show that our proposed depth super-resolution approach performs well on depth super-resolution performance and the view synthesis compared to other depth super-resolution approaches.
机译:深度图像的有限分辨率是大多数实用计算机视觉应用的约束。为了解决这个问题,在本文中,我们提出了一种基于机器学习的新型深度超分辨率方法。所提出的超分辨率方法包括基于边缘取向的深度补丁聚类方法,其基于梯度强度和方向将斑块分为几个类别。通过最小化合成视图失真,为每个补丁类别学习低分辨率(LR)和高分辨率(HR)贴片对之间的线性映射。由于未直接查看深度映射,因此它们用于生成虚拟视图,我们的方法采用综合视图失真作为优化策略。实验结果表明,与其他深度超分辨率接近相比,我们所提出的深度超分辨率方法对深度超分辨率性能和视图合成进行了良好。

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