曼哈顿世界的准全局最优有效消失点估计

Haoang Li, Ji Zhao, J. Bazin, Wen Chen, Zhe Liu, Yunhui Liu
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引用次数: 25

摘要

由平行的3D直线投影的图像线相交于一个称为消失点(VP)的公共点。曼哈顿世界里有三个正交的副总裁。在曼哈顿的世界里,给定一张校准过的图像中的几条线,我们的目标是通过三个未知但寻求的副总裁来对它们进行聚类。VP估计可以重新表述为计算曼哈顿帧和相机帧之间的旋转。为了计算这个旋转,目前的方法要么是基于数据采样,要么是基于参数搜索,它们无法同时保证准确性和效率。相反,我们建议将这两种策略混合起来。首先通过两条采样图像线计算上述旋转的两个自由度,然后基于分支定界算法搜索最优的第三自由度。我们的采样通过减少搜索空间和简化边界计算来加快搜索速度。我们的搜索对噪声不敏感,并且在最大化内层数方面实现了准全局最优性。在合成图像和真实世界图像上的实验表明,我们的方法在准确性和/或效率方面优于最先进的方法。
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Quasi-Globally Optimal and Efficient Vanishing Point Estimation in Manhattan World
The image lines projected from parallel 3D lines intersect at a common point called the vanishing point (VP). Manhattan world holds for the scenes with three orthogonal VPs. In Manhattan world, given several lines in a calibrated image, we aim at clustering them by three unknown-but-sought VPs. The VP estimation can be reformulated as computing the rotation between the Manhattan frame and the camera frame. To compute this rotation, state-of-the-art methods are based on either data sampling or parameter search, and they fail to guarantee the accuracy and efficiency simultaneously. In contrast, we propose to hybridize these two strategies. We first compute two degrees of freedom (DOF) of the above rotation by two sampled image lines, and then search for the optimal third DOF based on the branch-and-bound. Our sampling accelerates our search by reducing the search space and simplifying the bound computation. Our search is not sensitive to noise and achieves quasi-global optimality in terms of maximizing the number of inliers. Experiments on synthetic and real-world images showed that our method outperforms state-of-the-art approaches in terms of accuracy and/or efficiency.
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