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Parameter-free outlier removal of 3D point clouds with large-scale noises

机译:无参数的3D点云离群与大规模噪声消除

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3D point clouds derived from either multi-view-based techniques or direct laser scanners are inevitably contaminated with severe outliers. This paper presents LSNOR, a parameter-free density-based Outlier Removal approach for point clouds corrupted by Large-Scale Noises. The main contributions are three-fold. (i) A local consistency factor (LCF) is proposed to indicate the local density similarity of points. Based on LCF, parameter estimation and cluster screening are performed via consistency checking. In particular, unlike most of the density-based methods requiring user interactions for parameter determination, the proposed approach realizes automated parameter estimation. Besides, the outliers eliminated by screening can reduce the complexity afterwards. (ii) A new distance measure incorporating color factors is proposed to facilitate separating inliers and outliers apart. Taking into consider the color property of most 3D point clouds, the final correctness of outlier removal can be enhanced. (iii) The density-based clustering method is made to be suited to 3D point clouds, being independent of the prior knowledge of the distribution of points. Experimental results on synthetic and real point clouds demonstrate that our approach outperforms the state-of-the-art in both accuracy and computation time.
机译:从基于多视图的技术或直接激光扫描仪获得的3D点云不可避免地受到严重异常值的污染。本文介绍了LSNOR,这是一种基于参数的基于密度的离群值消除方法,用于大规模噪声破坏的点云。主要贡献是三方面。 (i)建议使用局部一致性因子(LCF)来指示点的局部密度相似性。基于LCF,通过一致性检查执行参数估计和聚类筛选。特别是,与大多数需要用户交互进行参数确定的基于密度的方法不同,所提出的方法实现了自动参数估计。此外,通过筛选消除的异常值可以降低之后的复杂度。 (ii)提出了一种新的包含色彩因素的距离度量,以促进将离群值和离群值分开。考虑到大多数3D点云的颜色属性,可以提高离群值去除的最终正确性。 (iii)使基于密度的聚类方法适合3D点云,而与点分布的先验知识无关。在合成和真实点云上的实验结果表明,我们的方法在准确性和计算时间上均优于最新技术。

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