Joint Camera Clustering and Surface Segmentation for Large-Scale Multi-view Stereo

Runze Zhang, Shiwei Li, Tian Fang, Siyu Zhu, Long Quan
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引用次数: 24

Abstract

In this paper, we propose an optimal decomposition approach to large-scale multi-view stereo from an initial sparse reconstruction. The success of the approach depends on the introduction of surface-segmentation-based camera clustering rather than sparse-point-based camera clustering, which suffers from the problems of non-uniform reconstruction coverage ratio and high redundancy. In details, we introduce three criteria for camera clustering and surface segmentation for reconstruction, and then we formulate these criteria into an energy minimization problem under constraints. To solve this problem, we propose a joint optimization in a hierarchical framework to obtain the final surface segments and corresponding optimal camera clusters. On each level of the hierarchical framework, the camera clustering problem is formulated as a parameter estimation problem of a probability model solved by a General Expectation-Maximization algorithm and the surface segmentation problem is formulated as a Markov Random Field model based on the probability estimated by the previous camera clustering process. The experiments on several Internet datasets and aerial photo datasets demonstrate that the proposed approach method generates more uniform and complete dense reconstruction with less redundancy, resulting in more efficient multi-view stereo algorithm.
大尺度多视点立体联合相机聚类与曲面分割
本文提出了一种基于初始稀疏重建的大规模多视点立体图像的最优分解方法。该方法的成功取决于引入基于表面分割的相机聚类,而不是基于稀疏点的相机聚类,后者存在重建覆盖率不均匀和冗余度高的问题。详细介绍了用于重建的相机聚类和曲面分割的三个准则,并将这些准则转化为约束条件下的能量最小化问题。为了解决这一问题,我们提出了一种分层框架下的联合优化方法,以获得最终的曲面段和相应的最优相机簇。在每一层次框架中,将摄像机聚类问题表述为一个概率模型的参数估计问题,该概率模型由一般期望最大化算法求解;将曲面分割问题表述为一个基于前一摄像机聚类过程估计的概率的马尔可夫随机场模型。在多个互联网数据集和航空照片数据集上的实验表明,该方法产生的密集重构更均匀、更完整,冗余更少,从而提高了多视点立体图像算法的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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