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A fast registration algorithm of rock point cloud based on spherical projection and feature extraction

机译:基于球面投影和特征提取的岩点云快速配准算法

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摘要

Point cloud registration is an essential step in the process of 3D reconstruction. In this paper, a fast registration algorithm of rock mass point cloud is proposed based on the improved iterative closest point (ICP) algorithm. In our proposed algorithm, the point cloud data of single station scanner is transformed into digital images by spherical polar coordinates, then image features are extracted and edge points are removed, the features used in this algorithm is scale-invariant feature transform (SIFT). By analyzing the corresponding relationship between digital images and 3D points, the 3D feature points are extracted, from which we can search for the two-way correspondence as candidates. After the false matches are eliminated by the exhaustive search method based on random sampling, the transformation is computed via the Levenberg-Marquardt-Iterative Closest Point (LM-ICP) algorithm. Experiments on real data of rock mass show that the proposed algorithm has the similar accuracy and better registration efficiency compared with the ICP algorithm and other algorithms.
机译:点云配准是3D重建过程中必不可少的步骤。基于改进的迭代最近点(ICP)算法,提出了一种岩体点云快速配准算法。在我们提出的算法中,单站扫描仪的点云数据通过球面极坐标转换为数字图像,然后提取图像特征并去除边缘点,该算法使用的特征是尺度不变特征变换(SIFT)。通过分析数字图像和3D点之间的对应关系,提取3D特征点,然后可以从中搜索双向对应关系作为候选对象。通过基于随机采样的穷举搜索方法消除了错误匹配之后,将通过Levenberg-Marquardt-迭代最近点(LM-ICP)算法计算出转换。对岩体真实数据的实验表明,与ICP算法和其他算法相比,该算法具有相似的精度和更好的配准效率。

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