期刊文献+

一种区域层次上的自动点云配准算法 被引量:29

Automatic Point Clouds Registration Based on Regions
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摘要 针对目前已有的三维点云配准算法直接在全局上进行配准,不能有效地处理重叠比例较低和重叠区域特征不明显的三维点云数据的问题,提出一种区域层次上的自动点云配准算法.首先利用刚体变换的低维性质,把区域作为基本的配准对象,将全局配准分解为多个规模更小的区域配准,通过重叠的区域恢复区域间局部的刚体变换;其次引入可信性和一致性的概念,通过求解一个优化问题从一系列区域配准中得到全局配准;最后用稀疏ICP算法进行精确配准.实验结果表明,该算法在保持对噪声和离群点鲁棒的前提下可以正确配准重叠比例更低的点云,适用范围更广泛. We present a region-based algorithm for the automatic registration of 3D point clouds. Most existedalgorithms align the two scans globally, making them unsuitable when the overlapping ratio is low orthe input shapes do not have strong features. We notice that rigid transform is low-dimensional and twooverlapped regions of the point clouds are enough to recover it. Thus, we align each pair of regions directly,and then solve an energy optimization to obtain the global transform from a series of region registrations byintroducing confidence term and consistency term. Finally, sparse ICP algorithm is used for refinement. Experimentsshow that under premise of robustness to noise and outliers, our algorithm can align scans withlower overlapping ratio and more general shapes.
出处 《计算机辅助设计与图形学学报》 EI CSCD 北大核心 2015年第2期313-319,共7页 Journal of Computer-Aided Design & Computer Graphics
基金 国家自然科学基金(61173103 U0935004) 国家重大科技专项(2013ZX04005021)
关键词 点云配准 区域配准 能量函数 可信性 一致性 point clouds registration regions registration energy function confidence consistency
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参考文献16

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二级参考文献21

  • 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
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