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Efficient segmentation and plane modeling of point-cloud for structured environment by normal clustering and tensor voting

机译:通过正常聚类和张量投票对结构化环境的点云进行有效的分割和平面建模

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In this paper, we introduce an efficient point-cloud segmentation algorithm, inspired by efficient segmentation (also named as super-pixel extraction). It uses parameterised “normal words” as distance measures, which are obtained by clustering of surface normals. We estimate the surface normals by the sparse tensor voting framework, which enables adaptive structural extraction, even for the case of missing points. The output result is consist of labeled point representations regarding plane assumptions, which is validated by metrics based on information theory. We show the quality of the segmentation results by experiments on real datasets, and demonstrate its potentials in aiding 2.5D topological navigation for structured environments.
机译:在本文中,我们介绍了一种有效的点云分割算法,该算法受有效分割(也称为超像素提取)的启发。它使用参数化的“法线词”作为距离量度,该距离量度是通过表面法线的聚类获得的。我们通过稀疏张量投票框架估算表面法线,即使在缺少点的情况下,该框架也可以进行自适应结构提取。输出结果由有关平面假设的标记点表示形式组成,并通过基于信息论的度量进行了验证。我们通过在真实数据集上进行实验来显示分割结果的质量,并展示其在帮助2.5D拓扑导航用于结构化环境中的潜力。

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