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Segmentation, Outlier Detection and Feature Identification from unstructured 3D Point Clouds

机译:非结构化3D点云的分割,离群值检测和特征识别

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摘要

In many fields of science and engineering, e.g. metrology, reverse engineering or computer vision, best fitting of geometric primitives is an important issue. Due to the progress in sensor technology large data sets will be available in real time with low-cost sensors for a wide range of applications, so that the acquisition of spatial data sets is accelerated and becomes less expensive. As a consequence the various areas of applications for segmentation and feature identification methods will be further enlarged and powerful algorithms to cope with large data sets will be needed. In this paper we present a very robust and run-time efficient method for automated feature detection, applicable to any kind of implicit surface or plane curve. At first the mathematical modelling of the task is described and optimization methods with fresh ideas are shown which solve the problem of geometric fitting. Afterwards the algorithmic structure and main steps of the segmentation, outlier detection and best fitting process are explained. Moreover our algorithms are applied to real point clouds generated by a lasar-radar scanner. Excellent results are reached even for noisy data sets and partially occluded features. As a conclusion future work and perspectives of the technology are discussed.
机译:在许多科学与工程领域,例如度量,逆向工程或计算机视觉,几何图元的最佳拟合是一个重要问题。由于传感器技术的进步,将可以使用低成本传感器实时提供大数据集,以用于广泛的应用,从而加速了空间数据集的获取并降低了成本。结果,分割和特征识别方法的各个应用领域将进一步扩大,将需要强大的算法来应对大型数据集。在本文中,我们提出了一种非常强大且运行时高效的自动特征检测方法,适用于任何类型的隐式曲面或平面曲线。首先,描述了任务的数学模型,并给出了解决几何拟合问题的具有新颖思想的优化方法。然后说明了分割的算法结构和主要步骤,离群值检测和最佳拟合过程。此外,我们的算法适用于由拉萨尔雷达扫描仪生成的实点云。即使是嘈杂的数据集和部分被遮挡的功能,也可以达到出色的效果。作为结论,讨论了该技术的未来工作和前景。

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