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基于特征相似性的RGBD点云配准 被引量:5

RGBD Point Cloud Registration Based on Feature Similarity
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摘要 三维点云数据的配准是计算机视觉领域的重要研究课题,也是三维重建的关键步骤。针对RGBD点云数据的配准问题,提出一种基于特征相似性的初始配准方法。首先需要计算待配准的RGBD点云模型的曲率和颜色特征度(CFD),并对CFD进行统计分析,若模型颜色特征足够丰富优先采用颜色相似性策略,反之尝试曲率相似性策略。通过特征点提取精简点云模型,利用确定的对应点选择策略选择候选对应点对。在候选对应点对上采用优化样本一致性算法获得初始配准变换矩阵,实现两片点云的初始配准。针对不同颜色纹理的RGBD点云模型,本文方法可以自适应选择合适的特征点选择策略,实现点云间良好的初始配准。实验结果表明,对于几何特征不明显的RGBD模型,本文方法能够自适应选择颜色相似性策略来较好地完成初始配准。对于不同类型的模型配准结果较好,算法效率更高。 The registration of 3D point cloud data is an important research topic in the field of computer vision and a key step in 3D reconstruction. Aiming at the registration problem of RGBD point cloud data, a coarse registration method based on feature similarity is proposed. Firstly, the curvature and color characteristics of the RGBD point cloud model to be registered should be calculated. Through the statistical analysis of color characteristics, if the color features of the model are rich enough, the color similarity strategy will be adopted first, otherwise, the curvature similarity strategy will be tried. The feature point extraction can simplify the point cloud model. And we will use the corresponding point selection strategy to select all corresponding point pairs. The coarse registration matrix is obtained by adopting the optimized sample consensus algorithm on the candidate corresponding pairs, and the coarse registration of the two point clouds is realized. For the RGBD point cloud model with different colors and texture, this method can adaptively select the appropriate feature point selection strategy to realize the good coarse registration between point clouds. For different models, we can adaptively select the corresponding selection strategy to calculate the transformation matrix and complete the coarse registration. The experimental results show that the proposed method can adaptively select the color similarity strategy to complete the coarse registration for the RGBD model with less geometric features. For different types of model, the registration results are better, and the algorithm is more efficient.
作者 盛敏 彭玉升 苏本跃 王广军 SHENG Min;PENG Yu-sheng;SU Ben-yue;WANG Guang-jun(School of Mathematics and Computational Science,Anqing Normal University,Anqing Anhui 246011,China;The Key Laboratory of Intelligent Perception and Computing of Anhui Province,Anqing Anhui 246011,China;School of Computer Science and Information Engineering,Hefei University of Technology,Hefei Anhui 230601,China;School of Computer and Information,Anqing Normal University,Anqing Anhui 246011,China)
出处 《图学学报》 CSCD 北大核心 2019年第5期829-834,共6页 Journal of Graphics
基金 国家自然科学基金项目(11475003,61603003,11471093) 教育部“云数融合科教创新”基金项目(2017A09116) 安徽省科技重大专项(18030901021) 安徽省高校优秀拔尖人才培育资助项目(gxbjZD26)
关键词 RGBD点云 初始配准 特征相似性 颜色相似性 曲率相似性 RGBD point cloud coarse registration feature similarity color similarity curvature similarity
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  • 1罗先波,钟约先,李仁举.三维扫描系统中的数据配准技术[J].清华大学学报(自然科学版),2004,44(8):1104-1106. 被引量:98
  • 2张学昌,习俊通,严隽琪.基于点云数据的复杂型面数字化检测技术研究[J].计算机集成制造系统,2005,11(5):727-731. 被引量:28
  • 3何文峰,查红彬.基于平面特征的深度图像配准[A].见:中国人工智能进展2003,上卷[C]:643-648,北京邮电大学出版社,2003.
  • 4Besl P J,Mckay N D.A method for registration of 3-d shapes[J].IEEE Transactions on Pattern Analysis and Machine Intelligence,1992,14(2):239 -256.
  • 5Chen Y,Medioni G.Object modeling by registration of multiple range images[A].In:Proceeding of the 1991 IEEE International Conference on Robotics and Automation[C],Sacramento,CA,USA,1991:2724 - 2729.
  • 6Blais G,Levine M D.Registering multiview range data to create 3D computer graphics[J].IEEE Transactions on Pattern Analysis and Machine Intelligence,1995,17(8):820 - 824.
  • 7Li Q,Griffiths J G.Iterative closest geometric objects registration[J].Computers and Mathematics with Applications,2000,40(10):1171 - 1188.
  • 8Yang R,Allen P.Registering,integrating,and building cad models from range data[A].In:IEEE International Conference on Robotics and Automation[C],Leuven,Belgium,1998:3115 - 3120.
  • 9Prakash S, Gupta P. An efficient ear recognition technique invariant to illumination and pose [J]. Telecommunication Systems, 2013, 52(3): 1435-1448.
  • 10Iannarelli A. Ear identification, forensic identification series [M]. California: Fremont Paramount Publishing Company, 1989:108-119.

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