Information theory based validation for point-cloud segmentation aided by tensor voting

Ming Liu, R. Siegwart
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引用次数: 15

Abstract

Segmentation of point-cloud is still a challenging problem, regarding observation noise and various constraints defined by applications. These difficulties do not concede to its necessity for almost all kinds of modeling approaches using point-cloud. However, the criteria to justify the quality of a clustering result are not much studied. In this paper, we first propose a point-cloud segmentation algorithm using adapted k-means to cluster normal vectors obtained from tensor voting. Then we concentrate on how to use a non-parametrical criterion to validate the clustering results, which is an approximation of the information introduced by the clustering process. Compared with other approaches, we use noisy point-cloud obtained from moving laser range finders directly, instead of reconstruction of 3d grid-cells or meshing. Moreover, the criterion does not rely on the assumption of distributions of points. We show the distinguishable characteristics using the proposed criteria, as well as the better performance of the novel clustering algorithm against other approaches.
基于信息理论的张量投票辅助点云分割验证
由于观测噪声和各种应用的约束,点云的分割仍然是一个具有挑战性的问题。这些困难并不意味着对几乎所有使用点云的建模方法都有必要。然而,证明聚类结果质量的标准并没有太多的研究。本文首先提出了一种利用自适应k-means对张量投票法向量进行聚类的点云分割算法。然后,我们重点研究了如何使用非参数准则来验证聚类结果,这是聚类过程中引入的信息的近似。与其他方法相比,我们直接使用运动激光测距仪获得的噪声点云,而不是重建三维网格单元或进行网格划分。此外,该准则不依赖于点的分布假设。我们使用提出的标准展示了可区分的特征,以及与其他方法相比,新的聚类算法具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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