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Keypoint-based 4-Points Congruent Sets - Automated marker-less registration of laser scans

机译:基于关键点的4点一致集-激光扫描的自动无标记配准

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We propose a method to automatically register two point clouds acquired with a terrestrial laser scanner without placing any markers in the scene. What makes this task challenging are the strongly varying point densities caused by the line-of-sight measurement principle, and the huge amount of data. The first property leads to low point densities in potential overlap areas with scans taken from different viewpoints while the latter calls for highly efficient methods in terms of runtime and memory requirements. A crucial yet largely unsolved step is the initial coarse alignment of two scans without any simplifying assumptions, that is, point clouds are given in arbitrary local coordinates and no knowledge about their relative orientation is available. Once coarse alignment has been solved, scans can easily be fine-registered with standard methods like least-squares surface or Iterative Closest Point matching. In order to drastically thin out the original point clouds while retaining characteristic features, we resort to extracting 3D keypoints. Such clouds of keypoints, which can be viewed as a sparse but nevertheless discriminative representation of the original scans, are then used as input to a very efficient matching method originally developed in computer graphics, called 4-Points Congruent Sets (4PCS) algorithm. We adapt the 4PCS matching approach to better suit the characteristics of laser scans. The resulting Keypoint-based 4-Points Congruent Sets (K-4PCS) method is extensively evaluated on challenging indoor and outdoor scans. Beyond the evaluation on real terrestrial laser scans, we also perform experiments with simulated indoor scenes, paying particular attention to the sensitivity of the approach with respect to highly symmetric scenes.
机译:我们提出了一种方法,用于自动注册用地面激光扫描仪采集的两个点云,而无需在场景中放置任何标记。使该任务具有挑战性的是视线测量原理所导致的极大变化的点密度以及大量数据。第一个属性导致从不同角度进行扫描的潜在重叠区域的低点密度,而后者则需要在运行时和内存要求方面的高效方法。一个至关重要但尚未解决的步骤是在没有任何简化假设的情况下两次扫描的初始粗对准,即,点云以任意局部坐标给出,并且不了解它们的相对方向。解决粗略对齐问题后,可以使用最小二乘曲面或迭代最近点匹配等标准方法轻松地对扫描进行精细配准。为了在保留特征特征的同时大幅稀释原始点云,我们求助于提取3D关键点。这样的关键点云(可以看作是原始扫描的稀疏但具有区别性的表示形式)随后被用作最初在计算机图形学中开发的一种非常有效的匹配方法(称为4点一致性集(4PCS)算法)的输入。我们采用4PCS匹配方法,以更好地适应激光扫描的特性。由此产生的基于关键点的4点一致集(K-4PCS)方法在具有挑战性的室内和室外扫描中得到了广泛的评估。除了对真实地面激光扫描的评估之外,我们还对模拟的室内场景进行了实验,特别注意了该方法对高度对称场景的敏感性。

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