Guaranteed Outlier Removal for Rotation Search

Álvaro Parra, Tat-Jun Chin
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引用次数: 29

Abstract

Rotation search has become a core routine for solving many computer vision problems. The aim is to rotationally align two input point sets with correspondences. Recently, there is significant interest in developing globally optimal rotation search algorithms. A notable weakness of global algorithms, however, is their relatively high computational cost, especially on large problem sizes and data with a high proportion of outliers. In this paper, we propose a novel outlier removal technique for rotation search. Our method guarantees that any correspondence it discards as an outlier does not exist in the inlier set of the globally optimal rotation for the original data. Based on simple geometric operations, our algorithm is deterministic and fast. Used as a preprocessor to prune a large portion of the outliers from the input data, our method enables substantial speed-up of rotation search algorithms without compromising global optimality. We demonstrate the efficacy of our method in various synthetic and real data experiments.
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保证离群值去除旋转搜索
旋转搜索已经成为解决许多计算机视觉问题的核心程序。目的是旋转对齐两个输入点集对应。最近,人们对开发全局最优旋转搜索算法非常感兴趣。然而,全局算法的一个显著缺点是其相对较高的计算成本,特别是在大问题规模和具有高比例异常值的数据时。本文提出了一种新的旋转搜索异常值去除技术。我们的方法保证它作为离群值丢弃的任何对应都不存在于原始数据的全局最优旋转的内嵌集中。该算法基于简单的几何运算,具有确定性和快速的特点。我们的方法用作预处理器,从输入数据中剔除大部分异常值,从而大大加快了旋转搜索算法的速度,同时又不影响全局最优性。在各种合成实验和实际数据实验中证明了该方法的有效性。
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