从密集的多视角全景图高效密集深度估计

Yin Li, Chi-Keung Tang, H. Shum
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引用次数: 30

摘要

本文研究了如何从多视角全景图中计算具有全景视场(如360度)的密集深度图。利用大量的数据冗余,使用密集的多视角全景序列来提高精度并减少歧义。为了加快重建速度,我们导出了与平面扫描相机设置相关联的近似极平面图像,并使用一维窗口进行有效匹配。为了解决一维窗口匹配带来的孔径问题,我们从匹配分数中保留了一组可能的候选深度。然后将这些候选对象传递给一种新的双通道张量投票方案来选择最佳深度。通过在投票过程中非迭代地传播连续性和唯一性约束,我们的方法即使在存在严重遮挡的情况下也能产生高质量的重建结果。具有挑战性的合成场景和真实场景实验验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient dense depth estimation from dense multiperspective panoramas
In this paper we study how to compute a dense depth map with panoramic field of view (e.g., 360 degrees) from multi-perspective panoramas. A dense sequence of multiperspective panoramas is used for better accuracy and reduced ambiguity by taking advantage of significant data redundancy. To speed up the reconstruction, we derive an approximate epipolar plane image that is associated with the planar sweeping camera setup, and use one-dimensional window for efficient matching. To address the aperture problem introduced by one-dimensional window matching, we keep a set of possible depth candidates from matching scores. These candidates are then passed to a novel two-pass tensor voting scheme to select the optimal depth. By propagating the continuity and uniqueness constraints non-iteratively in the voting process, our method produces high-quality reconstruction results even when significant occlusion is present. Experiments on challenging synthetic and real scenes demonstrate the effectiveness and efficacy of our method.
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