Wang Zheng, Fang Xintong, Jiang Yandan, Ji Haifeng, Wang Baoliang, Huang Zhiyao
State Key Laboratory of Industrial Control Technology, College of Control Science and Engineering, Zhejiang University, Hangzhou 310027, China.
Sensors (Basel). 2024 Sep 1;24(17):5693. doi: 10.3390/s24175693.
This work focuses on the improvement of the density peaks clustering (DPC) algorithm and its application to point cloud segmentation in LiDAR. The improvement of DPC focuses on avoiding the manual determination of the cut-off distance and the manual selection of cluster centers. And the clustering process of the improved DPC is automatic without manual intervention. The cut-off distance is avoided by forming a voxel structure and using the number of points in the voxel as the local density of the voxel. The automatic selection of cluster centers is realized by selecting the voxels whose gamma values are greater than the gamma value of the inflection point of the fitted γ curve as cluster centers. Finally, a new merging strategy is introduced to overcome the over-segmentation problem and obtain the final clustering result. To verify the effectiveness of the improved DPC, experiments on point cloud segmentation of LiDAR under different scenes were conducted. The basic DPC, K-means, and DBSCAN were introduced for comparison. The experimental results showed that the improved DPC is effective and its application to point cloud segmentation of LiDAR is successful. Compared with the basic DPC, K-means, the improved DPC has better clustering accuracy. And, compared with DBSCAN, the improved DPC has comparable or slightly better clustering accuracy without nontrivial parameters.
这项工作聚焦于密度峰值聚类(DPC)算法的改进及其在激光雷达点云分割中的应用。DPC的改进重点在于避免手动确定截止距离和手动选择聚类中心。并且改进后的DPC聚类过程是自动的,无需人工干预。通过形成体素结构并将体素中的点数用作体素的局部密度来避免截止距离。通过选择γ值大于拟合γ曲线拐点γ值的体素作为聚类中心来实现聚类中心的自动选择。最后,引入了一种新的合并策略来克服过分割问题并获得最终的聚类结果。为验证改进后DPC的有效性,对不同场景下激光雷达的点云分割进行了实验。引入了基本DPC、K均值和DBSCAN进行比较。实验结果表明,改进后的DPC是有效的,并且其在激光雷达点云分割中的应用是成功的。与基本DPC、K均值相比,改进后的DPC具有更好的聚类精度。而且,与DBSCAN相比,改进后的DPC在没有复杂参数的情况下具有相当或略好的聚类精度。