Markerless Point Cloud Matching Algorithm Based on 3D Feature Extraction

Zhang Li Jun
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Abstract

Since 3D scanners can only scan in a limited range and the scanning process is prone to occlusion and other problems, a complete 3D model cannot be obtained from a point cloud scanning result. Therefore, point cloud matching is necessary for most 3D scanning projects. We propose a point cloud registration algorithm based on a comprehensive approach, and the research contents include a new curvature-based point cloud feature extraction method, a three-dimensional spatial structure classifier of feature points, and an unmarked point cloud-matching algorithm based on three-dimensional feature extraction. The experiments are based on the simulation data and real data to verify the algorithm and evaluate the accuracy. The experimental results show that the matching accuracy reaches the millimetre level, and the fully automated and high-precision label-free point cloud matching based on 3D features is realized, which can provide innovative and breakthrough help for 3D reconstruction.
基于三维特征提取的无标记点云匹配算法
由于三维扫描仪只能在有限的范围内进行扫描,并且扫描过程中容易出现遮挡等问题,因此不能从点云扫描结果中获得完整的三维模型。因此,点云匹配在大多数3D扫描项目中都是必要的。提出了一种基于综合方法的点云配准算法,研究内容包括一种新的基于曲率的点云特征提取方法、一种特征点的三维空间结构分类器以及一种基于三维特征提取的未标记点云匹配算法。通过仿真数据和实际数据对算法进行了验证,并对算法的准确性进行了评价。实验结果表明,匹配精度达到毫米级,实现了基于三维特征的全自动高精度无标签点云匹配,为三维重建提供了创新性和突破性的帮助。
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