In response to the issues of slow convergence and the tendency to fall into local optima in traditional iterative closest point (ICP) point cloud registration algorithms, this study presents a fast registration algorithm for laser point clouds based on 3D scale-invariant feature transform (3D-SIFT) feature extraction. First, feature points are preliminarily extracted using a normal vector threshold; then, more high-quality feature points are extracted using the 3D-SIFT algorithm, effectively reducing the number of point cloud registrations. Based on the extracted feature points, a coarse registration of the point cloud is performed using the fast point feature histogram (FPFH) descriptor combined with the sample consensus initial alignment (SAC-IA) algorithm, followed by fine registration using the point-to-plane ICP algorithm with a symmetric target function. The experimental results show that this algorithm significantly improved the registration efficiency. Compared with the traditional SAC-IA+ICP algorithm, the registration accuracy of this algorithm increased by 29.55% in experiments on a public dataset, and the registration time was reduced by 81.01%. In experiments on actual collected data, the registration accuracy increased by 41.72%, and the registration time was reduced by 67.65%. The algorithm presented in this paper maintains a high registration accuracy while greatly reducing the registration speed.
Fast Registration Algorithm for Laser Point Cloud Based on 3D-SIFT Features.
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作者:Yang Lihong, Xu Shunqin, Yang Zhiqiang, He Jia, Gong Lei, Wang Wanjun, Li Yao, Wang Liguo, Chen Zhili
| 期刊: | Sensors | 影响因子: | 3.500 |
| 时间: | 2025 | 起止号: | 2025 Jan 22; 25(3):628 |
| doi: | 10.3390/s25030628 | ||
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