Exploiting segmentation for robust 3D object matching

Robotics and Automation(2012)

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摘要
While Iterative Closest Point (ICP) algorithms have been successful at aligning 3D point clouds, they do not take into account constraints arising from sensor viewpoints. More recent beam-based models take into account sensor noise and viewpoint, but problems still remain. In particular, good optimization strategies are still lacking for the beam-based model. In situations of occlusion and clutter, both beam-based and ICP approaches can fail to find good solutions. In this paper, we present both an optimization method for beambased models and a novel framework for modeling observation dependencies in beam-based models using over-segmentations. This technique enables reasoning about object extents and works well in heavy clutter. We also make available a ground-truth 3D dataset for testing algorithms in this area.
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关键词
image matching,image segmentation,inference mechanisms,iterative methods,optimisation,solid modelling,3D point clouds,ICP approach,beam-based models,ground-truth 3D dataset,iterative closest point algorithms,object extent reasoning,optimization method,over-segmentations,robust 3D object matching,segmentation exploitation,sensor noise,sensor viewpoints
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