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Planar surface detection for sparse and heterogeneous mobile laser scanning point clouds

机译:稀疏和异构移动激光扫描点云的平面表面检测

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摘要

Plane detection and segmentation is one of the most crucial tasks in point cloud processing. The output from this process can be used as input for further processing steps, such as modelling, registration and calibration. However, the sparseness and heterogeneity of Mobile Laser Scanning (MLS) point clouds may lead to problems for existing planar surfaces detection and segmentation methods. This paper proposes a new method that can be applicable to detect and segment planar features in sparse and heterogeneous MLS point clouds. This method utilises the scan profile patterns and the planarity values between different neighbouring scan profiles to detect and segment planar surfaces from MLS point clouds. The proposed method is compared to the three most state-of-the-art segmentation methods (e.g. RANSAC, a robust segmentation method based on robust statistics and diagnostic principal component analysis RDCPA as well as the plane detection method based on line arrangement). Three datasets are used for the validation of the results. The results show that our proposed method outperforms the existing methods in detecting and segmenting planar surfaces in sparse and heterogeneous MLS point clouds. In some instances, the state-of-the-art methods produce incorrect segmentation results for facade details which have a similar orientation, such as for windows and doors within a facade. While RDCPA produces up to 50% of outliers depending on the neighbourhood threshold, another method could not detect such features at all. When dealing with small features such as a target, some algorithms (including RANSAC) were unable to perform segmentation. However, the propose algorithm was demonstrated to detect all planes in the test data sets correctly. The paper shows that these mis-segmentations in other algorithms may lead to significant errors in the registration process of between 1.047 and 1.614 degrees in the angular parameters, whereas the propose method had only resulted in 0.462 degree angular bias. Furthermore, it is not sensitive to the required method parameters as well as the point density of the point clouds.
机译:平面检测和分割是点云处理中最重要的任务之一。该过程的输出可用作进一步处理步骤的输入,例如建模,注册和校准。然而,移动激光扫描(MLS)点云的稀疏性和异质性可能导致现有的平面表面检测和分段方法的问题。本文提出了一种新方法,可适用于检测稀疏和异构MLS点云中的平面特征。该方法利用不同相邻扫描轮廓之间的扫描简档模式和平坦度值来检测和从MLS点云段的平面表面。将所提出的方法与三种最先进的分割方法进行比较(例如,RANSAC,基于鲁棒统计和诊断主成分分析RDCPA的鲁棒分割方法以及基于线路布置的平面检测方法)。三个数据集用于验证结果。结果表明,我们所提出的方法优于检测稀疏和异构MLS点云中检测和分割平面表面的现有方法。在某些情况下,最先进的方法对具有类似方向的外立面细节产生不正确的分割结果,例如在外观内的窗口和门。当RDCPA产生高达50%的异常值,根据邻域阈值,另一种方法根本无法检测到此类功能。在处理诸如目标的小功能时,某些算法(包括Ransac)无法执行分段。但是,对提出的算法进行说明以正确地检测测试数据中的所有平面。本文表明,其他算法中的这些错误分割可能导致角度参数中1.047和1.614度之间的注册过程中的显着误差,而提议方法仅导致0.462度角偏压。此外,它对所需的方法参数以及点云的点密度不敏感。

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