A novel rapid point-cloud surface reconstruction algorithm for laser imaging radar

被引:0
|
作者
Wendong Wang
机构
[1] Yan’an University,College of Mathematics and Computer Science
来源
关键词
Automated vehicle operation; Laser rangefinder; Image data; Depth surface; Interpolation; Markov random field;
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暂无
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学科分类号
摘要
In order to obtain the fast three-dimensional surface reconstruction from given scattered point clouds, a novel improved point-cloud surface reconstruction algorithm for laser imaging radar is proposed so as to reconstruct the three-dimensional depth surface from the depth data and image data in this paper. Firstly, the three-dimensional space is partitioned into voxels with local distance points and finds outliers with point histogram features; then the Gaussian process (GP) regression is adopted to generate a plane similar to a Gaussian distribution; finally, the high-resolution gray data and three-dimensional interpolation points are fused by using Markov random fields to build a dense three-dimensional depth surface. Experimental results show that our proposed algorithm will greatly improve the robustness and reconstruction accuracy of three-dimensional surface reconstruction algorithm and can be used to assist unmanned driving in complex urban scenes.
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页码:8737 / 8749
页数:12
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