具有代数离群值拒绝的PnP问题的快速解

Luis Ferraz, Xavier Binefa, F. Moreno-Noguer
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引用次数: 158

摘要

我们提出了一种实时的、对异常值的鲁棒性和精确的视角-n-点(PnP)问题的解决方案。我们的解决方案的主要优点有两个:首先,它在姿态估计管道中集成了异常值抑制,计算开销可以忽略不计;其次,它的可扩展性可以用于任意数量的对应。给定一组三维到二维匹配,我们将姿态估计问题表述为一个解位于其一维零空间的低秩齐次系统。离群对应是那些干扰零空间的线性系统的行,通过将它们投影到零空间的迭代估计解上来逐步检测。由于我们的异常值去除过程是基于代数准则,不需要在每一步计算全姿态并重新投影图像平面上的所有3D点,因此我们实现了超过100倍的速度增益;与RANSAC策略相比。广泛的实验评估将表明,我们的解决方案在高达50%的异常值的情况下产生准确的结果,并且可以在不到5ms的时间内处理超过1000个对应。
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Very Fast Solution to the PnP Problem with Algebraic Outlier Rejection
We propose a real-time, robust to outliers and accurate solution to the Perspective-n-Point (PnP) problem. The main advantages of our solution are twofold: first, it in- tegrates the outlier rejection within the pose estimation pipeline with a negligible computational overhead, and sec- ond, its scalability to arbitrarily large number of correspon- dences. Given a set of 3D-to-2D matches, we formulate pose estimation problem as a low-rank homogeneous sys- tem where the solution lies on its 1D null space. Outlier correspondences are those rows of the linear system which perturb the null space and are progressively detected by projecting them on an iteratively estimated solution of the null space. Since our outlier removal process is based on an algebraic criterion which does not require computing the full-pose and reprojecting back all 3D points on the image plane at each step, we achieve speed gains of more than 100× compared to RANSAC strategies. An extensive exper- imental evaluation will show that our solution yields accu- rate results in situations with up to 50% of outliers, and can process more than 1000 correspondences in less than 5ms.
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