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应用于三维点云数据去噪的改进C均值算法 被引量:11

Improved C-means algorithm used in 3D point cloud data denoising
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摘要 针对三维激光扫描仪采集到的点云数据中离群点不易区分和去噪难度大的问题,提出了一种改进的C均值算法。通过分析三维点云数据特征,在传统C均值算法中引入模糊聚类权重因子,降低类内距离和拉大类间距离,有效增强了离群点特征以降低识别难度。进而将识别出的噪声分类别处理,利用改进的C均值算法去除大尺度噪声,构造双边滤波算法去除小尺度噪声数据。与密度聚类算法、正交整体最小二乘平面拟合和基于特征选择的双边滤波点云去噪等算法相比,去噪准确度分别提升了7.3%、6.5%和6.0%,实验结果表明该算法可以有效去除大尺度噪声并能较好地保留有效数据。 The point cloud data is uneasy to distinguish and difficult to denoise by outlier 3-D laser scanning. To solve the problems, this paper presents an improved C-means algorithm for solving the 3-D laser scanning point cloud data noise and outliers. The improved C-means algorithm introduces the fuzzy weighting factor that can effectively expand the char-acteristics of outliers in the dataset and make easier to identify outlier data. The noise is divided into large and small scales in two categories. The C-means clustering algorithm can remove the large scale data smoothing noise and some small noise data using point cloud bilateral filtering method. Compared with the density clustering algorithm, orthogonal total least squares plane fitting and filtering point clouds denoising and feature selection algorithm based on bilateral, the accu-racy of denoising is promoted 7.3%, 6.5%and 6%. The experimental results show that the algorithm can remove the noise of large scale, better retention of valid data, improve the effect of denoising.
出处 《计算机工程与应用》 CSCD 北大核心 2015年第12期1-4,共4页 Computer Engineering and Applications
基金 国家自然科学基金(No.61373112 No.50878176) 西安建筑科技大学人才科技基金项目(No.RC1343)
关键词 C均值 三维点云 去噪 模糊聚类 C-means 3D point cloud data denoising fuzzy clustering
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共引文献139

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  • 1杨刚,邢美军,黄心渊.应用于GreenLab模型构建的测树方法[J].北京林业大学学报,2009,31(S2):60-63. 被引量:2
  • 2淮永建,王梅峰,左正兴,黄心渊.虚拟环境中森林植被的实时可视化技术研究[J].计算机工程与应用,2004,40(35):33-36. 被引量:7
  • 3丁克良,欧吉坤,赵春梅.正交最小二乘曲线拟合法[J].测绘科学,2007,32(3):18-19. 被引量:71
  • 4Li Zhongwei,Fu You.Gamma-distorted fringe image modeling and accurate gamma correction for fast phase measuring profilometry[J].Optics Letters,2011,36(2):154-156.
  • 5Xu Ying,Ekstrand Laura,Dai Junfei.Phase error compensation for three-dimensional shape measurement with projector defocusing[J].Appl Opt,2011,50(17):2578-2581.
  • 6Song J.Two-stage point-sampled model denoising by robust ellipsoid criterion and mean shift[C]∥2013 Int’l Conf on Intelligent System Design and Engineering Applications,Hong Kong:IEEE,2013:1581-1584.
  • 7Xiao Chunxia,Miao Yongwei,Liu Shu,et al.A dynamic balanced flow for filtering point-sampled geometry[J].The Visual Computer,2006,22(3):210-219.
  • 8Vosselman G.Advanced point cloud processing[C].PhotogrammetricWeek,2009,9:137-146.
  • 9Huang H,Brenner C,Sester M.A generative statisticalapproach to automatic 3D building roof reconstructionfrom laser scanning data[J].ISPRS Journal of Photogrammetryand Remote Sensing,2013,79:29-43.
  • 10Fleishman S,Drori I,Cohen-Or D.Bilateral mesh[J].ACMTransactions on Graphics(TOG),2003,22(3):950-953.

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