Hierarchical point cloud denoising algorithm

被引:0
作者
Zhao F.-Q. [1 ]
Zhou M.-Q. [2 ]
机构
[1] Shool of Information, Xi'an University of Finance and Economics, Xi'an
[2] Shool of Information Science and Technology, Northwest University, Xi'an
来源
Guangxue Jingmi Gongcheng/Optics and Precision Engineering | 2020年 / 28卷 / 07期
关键词
Anisotropic filtering; Curvature; Entropy; Point cloud denoising; Tensor voting;
D O I
10.37188/OPE.20202807.1618
中图分类号
学科分类号
摘要
The initial point cloud model acquired by 3D laser scanning equipment contains more noise points that is not good for the later point cloud processing. Therefore, the noise needs to be deleted. A hierarchical point cloud coarse-to-fine denoising algorithm was proposed for effective retention of the sharp geometric features of the point cloud. The tensor voting matrix of the points and their neighbors was constructed. In addition, the diffusion tensor was constructed by calculating the eigenvalues and eigenvectors of the matrix. The diffusion tensor-based anisotropic diffusion equation was applied for cyclic filtering, to realize the initial coarse denoising of the point cloud. Further, the curvature feature of the point cloud was calculated post-filtering. To achieve fine denoising, the noise points in the point cloud were further deleted according to the curvature value. Finally, the point cloud entropy was calculated for quantitative evaluation of the denoising algorithm. The experimental results demonstrate that the proposed point cloud denoising algorithm exhibited a smaller denoising error, higher entropy value, and high execution efficiency. The proposed hierarchical point cloud denoising algorithm can quickly and accurately delete noise points, while retaining sharper geometric features of the point cloud. Therefore, it is an effective point cloud denoising algorithm. © 2020, Science Press. All right reserved.
引用
收藏
页码:1618 / 1625
页数:7
相关论文
共 15 条
[1]  
ZHAO CH, ZHANG B M, YU D X, Et al., Airborne LiDAR point cloud classification using transfer learning, Opt. Precision Eng, 27, 7, pp. 1601-1612, (2019)
[2]  
MUELLER CHRISTIAN A, Birk, Et al., Visual object categorization based on hierarchical shape motifs learned from noisy point cloud decompositions [J], Journal of Intelligent and Robotic Systems, 1, pp. 1-26, (2019)
[3]  
YANG W, ZHOU M Q, GENG G H, Et al., Hierarchical optimization of skull point cloud registration, Opt. Precision Eng, 27, 12, pp. 2730-2739, (2019)
[4]  
WANG Y N, WANG T F, TIAN Y ZH, Et al., Improved local convexity algorithm of segmentation for 3D point cloud [J], Chinese Optics, 10, 3, pp. 348-354, (2017)
[5]  
POLAT N, UYSAL M., Investigating performance of airborne LiDAR data filtering algorithms for DTM generation [J], Measurement, 63, pp. 61-68, (2015)
[6]  
XU SH P, LIN ZH Y, LI CH X, Et al., Fast noise level estimation algorithm adopting training strategy [J], Journal of Image and Graphics, 24, 11, pp. 1882-1892, (2019)
[7]  
XU Z, FOI A., Anisotropic denoising of 3D point clouds by aggregation of multiple surface-adaptive estimates [J], IEEE transactions on visualization and computer graphics, 99, 12, pp. 1-10, (2019)
[8]  
ZHAO K, XU Y CH, LI Y L, Et al., Large-scale scattered point-cloud denoising based on VG-DBSCAN algorithm [J], Acta Optica Sinica, 38, 10, pp. 370-375, (2018)
[9]  
DAI SH J, REN Y CH, ZHANG H B., Study on smooth denoising of 3D scattered point clouds with anisotropic diffusion filtering, Journal of Computer-Aided Design & Computer Graphics, 30, 10, pp. 1843-1849, (2018)
[10]  
LI P, ZOU Y, YAO ZH A., Fourth-order anisotropic diffusion equations for image zooming [J], Journal of Image and Graphics, 18, 10, pp. 1261-1269, (2013)