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Robust statistical approaches for local planar surface fitting in 3D laser scanning data

机译:用于3D激光扫描数据的局部平面拟合的鲁棒统计方法

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This paper proposes robust methods for local planar surface fitting in 3D laser scanning data. Searching through the literature revealed that many authors frequently used Least Squares (LS) and Principal Component Analysis (PCA) for point cloud processing without any treatment of outliers. It is known that LS and PCA are sensitive to outliers and can give inconsistent and misleading estimates. RANdom SAmple Consensus (RANSAC) is one of the most well-known robust methods used for model fitting when noise and/or outliers are present. We concentrate on the recently introduced Deterministic Minimum Covariance Determinant estimator and robust PCA, and propose two variants of statistically robust algorithms for fitting planar surfaces to 3D laser scanning point cloud data. The performance of the proposed robust methods is demonstrated by qualitative and quantitative analysis through several synthetic and mobile laser scanning 3D data sets for different applications. Using simulated data, and comparisons with LS, PCA, RANSAC, variants of RANSAC and other robust statistical methods, we demonstrate that the new algorithms are significantly more efficient, faster, and produce more accurate fits and robust local statistics (e.g. surface normals), necessary for many point cloud processing tasks. Consider one example data set used consisting of 100 points with 20% outliers representing a plane. The proposed methods called DetRD-PCA and DetRPCA, produce bias angles (angle between the fitted planes with and without outliers) of 0.20° and 0.24° respectively, whereas LS, PCA and RANSAC produce worse bias angles of 52.49°, 39.55° and 0.79° respectively. In terms of speed, DetRD-PCA takes 0.033 s on average for fitting a plane, which is approximately 6.5,25.4 and 25.8 times faster than RANSAC, and two other robust statistical methods, respectively. The estimated robust surface normals and curvatures from the new methods have been used for plane fitting, sharp feature preservation and segmentation in 3D point clouds obtained from laser scanners. The results are significantly better and more efficiently computed than those obtained by existing methods.
机译:本文提出了用于3D激光扫描数据中局部平面拟合的鲁棒方法。查阅文献表明,许多作者经常使用最小二乘(LS)和主成分分析(PCA)进行点云处理,而没有任何离群值的处理。众所周知,LS和PCA对异常值敏感,并且可能给出不一致和误导的估计。当存在噪声和/或离群值时,随机抽样共识(RANSAC)是用于模型拟合的最著名的鲁棒方法之一。我们专注于最近推出的确定性最小协方差行列式估计器和鲁棒PCA,并提出了统计鲁棒算法的两个变体,用于将平面拟合到3D激光扫描点云数据。通过针对不同应用的几种合成和移动激光扫描3D数据集进行定性和定量分析,证明了所提出的鲁棒方法的性能。使用模拟数据,并与LS,PCA,RANSAC,RANSAC的变体和其他可靠的统计方法进行比较,我们证明了新算法的效率,速度明显提高,并且产生了更精确的拟合和稳健的局部统计数据(例如表面法线),是许多点云处理任务所必需的。考虑一个使用100个点组成的示例数据集,其中20%的异常值代表一个平面。所提出的方法称为DetRD-PCA和DetRPCA,它们分别产生0.20°和0.24°的偏角(有和没有离群值的拟合平面之间的角度),而LS,PCA和RANSAC产生的偏角更糟,分别为52.49°,39.55°和0.79 °分别。在速度方面,DetRD-PCA平均花费0.033 s来拟合平面,这比RANSAC和其他两种可靠的统计方法快大约6.5、25.4和25.8倍。通过新方法估算的鲁棒表面法线和曲率已用于平面拟合,清晰的特征保留和从激光扫描仪获得的3D点云的分割中。与通过现有方法获得的结果相比,结果明显更好,更有效。

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