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Dual Regularization Based Depth Map Super-Resolution with Graph Laplacian Prior

机译:基于双程化的深度图超分辨率与图拉普拉斯先驱

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The edge information plays key role in the restoration of depth map. Most conventional methods assume that the RGB-D pairs are consistent in edge areas. In this paper, firstly, we point out that in most cases the consistency between normal map and depth map(N-D pairs) are much higher than that be-tween RGB-D pairs. Then we propose a dual regularization term to guide the restoration of depth map, which constrains the consistency between N-D pairs back and forth. Moreover, a reweighted graph Laplacian prior is incorporated into a unified optimization framework to effectively protect piece-wise smoothness(PWS) characteristics of depth map. By treating depth maps as graph signals, the weight between two nodes is adapted according to its content. Extensive experimental results demonstrate the superior performance of our method compared with other state-of-the-art works in terms of objective and subjective quality evaluations.
机译:边缘信息在恢复深度图中播放关键作用。 大多数传统方法假设RGB-D对在边缘区域一致。 在本文中,首先,我们指出,在大多数情况下,正常地图和深度图(N-D对)之间的一致性远高于RGB-D对的高得多。 然后,我们提出了一种双正则化术语来指导深度图的恢复,这使得来回限制N-D对之间的一致性。 此外,重新重量的图拉普拉斯之拉普利亚语被结合到统一的优化框架中,以有效保护深度图的分型平滑度(PWS)特征。 通过将深度映射视为曲线图信号,两个节点之间的权重根据其内容而调整。 广泛的实验结果表明,与客观和主观质量评估方面的其他最先进的工作相比,我们方法的优越性。

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