Paper
20 December 2021 A laser point cloud registration method for local geometric key points
Zhe Wang, Pengwei Gao, Yaxiong Jin, Boqiang Zhai
Author Affiliations +
Proceedings Volume 12155, International Conference on Computer Vision, Application, and Design (CVAD 2021); 1215505 (2021) https://doi.org/10.1117/12.2626554
Event: International Conference on Computer Vision, Application, and Design (CVAD 2021), 2021, Sanya, China
Abstract
The laser point cloud has high density and large amount of data, which will cause the point cloud coarse registration to have a high time cost and unstable registration accuracy. Point cloud fine registration takes the transformation parameters obtained from the coarse registration as the initial value, and usually uses the standard Iterative Closest Point(ICP) algorithm to find the corresponding points and iteratively optimize the transformation parameters. For improving the accuracy and robustness of the laser point cloud registration, this paper proposes to use the 3D Difference-of-Gaussian(DoG) operator to extract the key points with curvature invariance, and then input the key point cloud into 4-Points Congruent Sets(4PCS) algorithm performs coarse registration, and finally uses the standard ICP algorithm to perform fine registration. After using the method in this paper to do registration experiments on three datasets, the effectiveness of the method is verified.
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Zhe Wang, Pengwei Gao, Yaxiong Jin, and Boqiang Zhai "A laser point cloud registration method for local geometric key points", Proc. SPIE 12155, International Conference on Computer Vision, Application, and Design (CVAD 2021), 1215505 (20 December 2021); https://doi.org/10.1117/12.2626554
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KEYWORDS
Clouds

3D acquisition

Detection and tracking algorithms

Target detection

3D scanning

Image processing

3D imaging standards

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