Li Haoang, Zhao Ji, Bazin Jean-Charles, Liu Yun-Hui
IEEE Trans Image Process. 2020 May 11. doi: 10.1109/TIP.2020.2992336.
Estimating the absolute camera pose requires 3D-to-2D correspondences of points and/or lines. However, in practice, these correspondences are inevitably corrupted by outliers, which affects the pose estimation. Existing outlier removal strategies for robust pose estimation have some limitations. They are only applicable to points, rely on prior pose information, or fail to handle high outlier ratios. By contrast, we propose a general and accurate outlier removal strategy. It can be integrated with various existing pose estimation methods originally vulnerable to outliers, and is applicable to points, lines, and the combination of both. Moreover, it does not rely on any prior pose information. Our strategy has a nested structure composed of the outer and inner modules. First, our outer module leverages our intersection constraint, i.e., the projection rays or planes defined by inliers intersect at the camera center. Our outer module alternately computes the inlier probabilities of correspondences and estimates the camera pose. It can run reliably and efficiently under high outlier ratios. Second, our inner module exploits our flow consensus. The 2D displacement vectors or 3D directed arcs generated by inliers exhibit a common directional regularity, i.e., follow a dominant trend of flow. Our inner module refines the inlier probabilities obtained at each iteration of our outer module. This refinement improves the accuracy and facilitates the convergence of our outer module. Experiments on both synthetic data and real-world images have shown that our method outperforms state-of-the-art approaches in terms of accuracy and robustness.
估计绝对相机位姿需要点和/或线的3D到2D对应关系。然而,在实际中,这些对应关系不可避免地会受到异常值的影响,这会影响位姿估计。现有的用于鲁棒位姿估计的异常值去除策略存在一些局限性。它们仅适用于点,依赖于先验位姿信息,或者无法处理高异常值比率。相比之下,我们提出了一种通用且准确的异常值去除策略。它可以与各种原本易受异常值影响的现有位姿估计方法集成,并且适用于点、线以及两者的组合。此外,它不依赖于任何先验位姿信息。我们的策略具有由外部和内部模块组成的嵌套结构。首先,我们的外部模块利用我们的相交约束,即由内点定义的投影光线或平面在相机中心相交。我们的外部模块交替计算对应关系的内点概率并估计相机位姿。它可以在高异常值比率下可靠且高效地运行。其次,我们的内部模块利用我们的流一致性。由内点生成的2D位移向量或3D有向弧表现出共同的方向规律性,即遵循主导的流趋势。我们的内部模块细化在外部模块的每次迭代中获得的内点概率。这种细化提高了准确性并促进了外部模块的收敛。在合成数据和真实世界图像上的实验表明,我们的方法在准确性和鲁棒性方面优于现有方法。