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Ellipse-fitting algorithm and adaptive threshold to eliminate outliers

机译:椭圆拟合算法和消除异常值的自适应阈值

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摘要

Terrestrial laser scanning is widely applied in many fields owing to its characteristic of rapid acquisition of massive 3D point data. It provides a new way to obtain the cross-section data of metro tunnels for deformation analysis. However, the data contain many outliers, such as pipe and bolt holes, and manual filtering of unwanted points is relatively onerous. Therefore, an ellipse-fitting algorithm based on residual p-norm minimum is proposed to deal with the outliers. Then, an adaptive threshold selection method is introduced for outlier elimination. The remaining valid data are utilised to calculate the deformation after data processing. The experiments validate that the p-norm minimum is more robust than the least-squares algorithm, and the application of an adaptive threshold allows the algorithm to clearly distinguish the outliers. This research provides a reference for the monitoring of subway tunnel deformation.
机译:由于其快速采集了大规模3D点数据的特征,陆地激光扫描广泛应用于许多领域。它提供了一种新的方法来获得变形分析的地铁隧道的横截面数据。然而,数据包含许多异常值,例如管道和螺栓孔,并且手动过滤不需要的点相对繁重。因此,提出了一种基于残差P-NOM最小值的椭圆拟合算法来处理异常值。然后,引入了自适应阈值选择方法以进行异常消除。剩余的有效数据用于计算数据处理后的变形。实验验证,P-Norm最小比最小二乘算法更鲁棒,并且自适应阈值的应用允许算法清楚地区分差。本研究为地铁隧道变形监测提供了参考。

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