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CLASSIFICATION OF PHOTOGRAMMETRIC POINT CLOUDS OF SCAFFOLDS FOR CONSTRUCTION SITE MONITORING USING SUBSPACE CLUSTERING AND PCA

机译:使用子空间聚类和PCA分类施工现场监测脚手架的摄影点云分类

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This paper presents an approach for the classification of photogrammetric point clouds of scaffolding components in a construction site, aiming at making a preparation for the automatic monitoring of construction site by reconstructing an as-built Building Information Model (as-built BIM). The points belonging to tubes and toeboards of scaffolds will be distinguished via subspace clustering process and principal components analysis (PCA) algorithm. The overall workflow includes four essential processing steps. Initially, the spherical support region of each point is selected. In the second step, the normalized cut algorithm based on spectral clustering theory is introduced for the subspace clustering, so as to select suitable subspace clusters of points and avoid outliers. Then, in the third step, the feature of each point is calculated by measuring distances between points and the plane of local reference frame defined by PCA in cluster. Finally, the types of points are distinguished and labelled through a supervised classification method, with random forest algorithm used. The effectiveness and applicability of the proposed steps are investigated in both simulated test data and real scenario. The results obtained by the two experiments reveal that the proposed approaches are qualified to the classification of points belonging to linear shape objects having different shapes of sections. For the tests using synthetic point cloud, the classification accuracy can reach 80%, with the condition contaminated by noise and outliers. For the application in real scenario, our method can also achieve a classification accuracy of better than 63%, without using any information about the normal vector of local surface.
机译:本文介绍了一种施工现场脚手架组件摄影测量点云分类的方法,旨在通过重建竣工建筑信息模型(竣工BIM)来制备自动监测施工现场。将通过子空间聚类过程和主成分分析(PCA)算法来区分属于管道和脚手板的点。整体工作流程包括四个基本处理步骤。最初,选择每个点的球形支撑区域。在第二步中,为子空间聚类引入了基于频谱聚类理论的归一化切割算法,以便选择合适的子空间点集群并避免异常值。然后,在第三步骤中,通过测量由集群中PCA定义的本地参考帧的点和平面之间的距离来计算每个点的特征。最后,通过使用随机森林算法的监督分类方法来区分和标记点的类型。在模拟测试数据和实际方案中都研究了所提出的步骤的有效性和适用性。通过两实验获得的结果表明,所提出的方法有资格达到属于具有不同形状的线性形状物体的点的分类。对于使用合成点云的测试,分类精度可以达到80%,受噪声和异常值污染的情况。对于实际方案中的应用,我们的方法还可以实现优于63%的分类准确性,而不使用关于局部常规向量的任何信息。

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