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Comparison of 2D and 3D wall reconstruction algorithms from point cloud data for as-built BIM

机译:竣工BIM点云数据2D和3D壁重建算法的比较

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As-built Building Information Models (BIMs) are becoming increasingly popular in the Architectural, Engineering, Construction, Owner and Operator (AECOO) industry. These models reflect the state of the building up to as-built conditions. The production of these models for existing buildings with no prior BIM includes the segmentation and classification of point cloud data and the reconstruction of the BIM objects. The automation of this process is a must since the manual Scan-to-BIM procedure is both time-consuming and error prone. However, the automated reconstruction from point cloud data is still ongoing research with both 2D and 3D approaches being proposed. There currently is a gap in the literature concerning the quality assessment of the created entities. In this research, we present the empirical comparison of both strategies with respect to existing specifications. A 3D and a 2D reconstruction method are implemented and tested on a real life test case. The experiments focus on the reconstruction of the wall geometry from unstructured point clouds as it forms the basis of the model. Both presented approaches are unsupervised methods that segment, classify and create generic wall elements. The first method operates on the 3D point cloud itself and consists of a general approach for the segmentation and classification and a class-specific reconstruction algorithm for the wall geometry. The point cloud is first segmented into planar clusters, after which a Random Forests classifier is used with geometric and contextual features for the semantic labelling. The final wall geometry is created based on the 3D point clusters representing the walls. The second method is an efficient Manhattan-world scene reconstruction algorithm that simultaneously segments and classifies the point cloud based on point feature histograms. The wall reconstruction is considered an instance of image segmentation by representing the data as 2D raster images. Both methods have promising results towards the reconstruction of wall geometry of multi-story buildings. The experiments report that over 80% of the walls were correctly segmented by both methods. Furthermore, the reconstructed geometry is conform Level-of-Accuracy 20 for 88% of the data by the first method and for 55% by the second method despite the Manhattan-world scene assumption. The empirical comparison showcases the fundamental differences in both strategies and will support the further development of these methods.
机译:竣工建筑信息模型(BIMS)在建筑,工程,建筑,业主和运营商(AECOO)行业越来越受欢迎。这些模型反映了建筑的状态,直到建造条件。没有先前BIM的现有建筑物的生产这些模型包括点云数据的分割和分类和BIM对象的重建。此过程的自动化是必须自手动扫描到BIM程序耗时且易于错误的必须。然而,点云数据的自动重建仍然持续研究了2D和3D方法。目前在文献中存在关于所创建的实体质量评估的差距。在这项研究中,我们介绍了两种策略对现有规范的实证比较。在实际测试用例上实现和测试3D和2D重建方法。实验专注于从非结构化点云重建壁几何形状,因为它形成了模型的基础。两种呈现的方法都是无监督的方法,即段,分类和创建通用墙元素。第一种方法在3D点云本身上运行,包括用于分割和分类的一般方法和壁几何的类别特定的重建算法。点云首先分段为平面簇,之后随机森林分类器用于语义标记的几何和上下文特征。基于代表墙壁的3D点簇来创建最终壁几何。第二种方法是一种高效的曼哈顿 - 世界场景重建算法,其同时段和基于点特征直方图对点云进行分类。通过将数据表示为2D光栅图像,壁重建被视为图像分割的实例。这两种方法都具有很有希望的结果,朝着重建多层建筑物的墙岩几何形状。实验报告称,两种方法都正确地分割了80%的墙壁。此外,尽管曼哈顿世界的场景假设,所重构的几何形状由第一种方法符合第一种方法,并且通过第二种方法符合88%的数据。实证比较展示了两种策略的基本差异,并将支持这些方法的进一步发展。

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