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A Robust Linear Feature-Based Procedure for Automated Registration of Point Clouds

机译:基于鲁棒线性特征的点云自动注册过程

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摘要

With the variety of measurement techniques available on the market today, fusing multi-source complementary information into one dataset is a matter of great interest. Target-based, point-based and feature-based methods are some of the approaches used to place data in a common reference frame by estimating its corresponding transformation parameters. This paper proposes a new linear feature-based method to perform accurate registration of point clouds, either in 2D or 3D. A two-step fast algorithm called Robust Line Matching and Registration (RLMR), which combines coarse and fine registration, was developed. The initial estimate is found from a triplet of conjugate line pairs, selected by a RANSAC algorithm. Then, this transformation is refined using an iterative optimization algorithm. Conjugates of linear features are identified with respect to a similarity metric representing a line-to-line distance. The efficiency and robustness to noise of the proposed method are evaluated and discussed. The algorithm is valid and ensures valuable results when pre-aligned point clouds with the same scale are used. The studies show that the matching accuracy is at least 99.5%. The transformation parameters are also estimated correctly. The error in rotation is better than 2.8% full scale, while the translation error is less than 12.7%.
机译:随着当今市场上各种测量技术的出现,将多源互补信息融合到一个数据集中引起了人们的极大兴趣。基于目标,基于点和基于特征的方法是通过估计数据的相应转换参数将数据放置在公共参考框架中的一些方法。本文提出了一种新的基于线性特征的方法来执行2D或3D的点云精确配准。开发了一种两步快速算法,称为鲁棒线匹配和配准(RLMR),它将粗略和精细配准相结合。初始估计值是根据由RANSAC算法选择的共轭线对的三元组找到的。然后,使用迭代优化算法完善此转换。相对于表示线到线距离的相似性度量来识别线性特征的共轭。评估和讨论了所提方法的效率和鲁棒性。当使用相同比例的预对准点云时,该算法是有效的并确保有价值的结果。研究表明,匹配精度至少为99.5%。转换参数也可以正确估计。旋转误差优于满量程的2.8%,而平移误差小于12.7%。

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