Minimal Solvers for 3D Scan Alignment With Pairs of Intersecting Lines

André Mateus, S. Ramalingam, Pedro Miraldo
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引用次数: 8

Abstract

We explore the possibility of using line intersection constraints for 3D scan registration. Typical 3D registration algorithms exploit point and plane correspondences, while line intersection constraints have not been used in the context of 3D scan registration before. Constraints from a match of pairs of intersecting lines in two 3D scans can be seen as two 3D line intersections, a plane correspondence, and a point correspondence. In this paper, we present minimal solvers that combine these different type of constraints: 1) three line intersections and one point match; 2) one line intersection and two point matches; 3) three line intersections and one plane match; 4) one line intersection and two plane matches; and 5) one line intersection, one point match, and one plane match. To use all the available solvers, we present a hybrid RANSAC loop. We propose a non-linear refinement technique using all the inliers obtained from the RANSAC. Vast experiments with simulated data and two real-data data-sets show that the use of these features and the combined solvers improve the accuracy. The code is available.
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具有对相交线的三维扫描对齐的最小解
我们探索了使用线相交约束进行三维扫描配准的可能性。典型的三维配准算法利用点与平面的对应关系,而在三维扫描配准中尚未使用直线相交约束。在两个三维扫描中,对相交线的匹配约束可以被看作是两个三维线相交,一个平面对应,一个点对应。在本文中,我们提出了结合这些不同类型约束的最小解:1)三条线相交和一点匹配;2)一条直线相交,两点匹配;3)三条直线相交,一条平面匹配;4)一条直线相交,两个平面匹配;5)一条直线相交,一个点匹配,一个平面匹配。为了使用所有可用的求解器,我们提出了一个混合RANSAC循环。我们提出了一种利用从RANSAC获得的所有内层的非线性改进技术。大量模拟数据和两个实际数据集的实验表明,使用这些特征和组合求解器提高了精度。代码是可用的。
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