3D point cloud registration based on a purpose-designed similarity measure

被引:0
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作者
Carlos Torre-Ferrero
José R Llata
Luciano Alonso
Sandra Robla
Esther G Sarabia
机构
[1] University of Cantabria,Electronics Technology, Systems and Automation Engineering Department
[2] Santander,undefined
关键词
laser scanner; 3D point cloud; descriptor; similarity measure; coarse alignment; 3D registration;
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摘要
This article introduces a novel approach for finding a rigid transformation that coarsely aligns two 3D point clouds. The algorithm performs an iterative comparison between 2D descriptors by using a purpose-designed similarity measure in order to find correspondences between two 3D point clouds sensed from different positions of a free-form object. The descriptors (named with the acronym CIRCON) represent an ordered set of radial contours that are extracted around an interest-point within the point cloud. The search for correspondences is done iteratively, following a cell distribution that allows the algorithm to converge toward a candidate point. Using a single correspondence an initial estimation of the Euclidean transformation is computed and later refined by means of a multiresolution approach. This coarse alignment algorithm can be used for 3D modeling and object manipulation tasks such as "Bin Picking" when free-form objects are partially occluded or present symmetries.
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