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Scan2BIM-NET: Deep Learning Method for Segmentation of Point Clouds for Scan-to-BIM

机译:Scan2Bim-Net:扫描到BIM的点云分割的深度学习方法

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The architecture, engineering, and construction (AEC) industry perform thousands of scans each year. The majority of these point clouds are used for generating three-dimensional (3D) models-a process formally known as scan to building information modeling (Scan-to-BIM)-that represent the current conditions of a construction scene. Although point cloud data provide the scene's geometric information, its use presents several challenges that make the process of generating a 3D model from point cloud data time-consuming, labor-intensive, and error-prone. In order to address the mentioned challenges, this paper presents a new end-to-end deep learning method, named Scan2BIM-NET, for semantically segmenting the structural, architectural, and mechanical components present in point cloud data. It classifies beam, ceiling, column, floor, pipe, and wall elements using three main networks: two convolutional neural network (CNN) and one recurrent neural network (RNN). The method was trained and tested using 83 rooms from point cloud data representing real-world industrial and commercial buildings. The process returned an average accuracy of 86.13%, and the beam, ceiling, column, floor, pipe, and wall categories obtained an accuracy of 82.47%, 92.60%, 59.31%, 98.71%, 82.79%, and 84.46%, respectively. The experimental results showed that deep learning improves the accuracy of semantic segmentation of architectural, structural, and mechanical components. This new method has the potential of being a tool during the Scan-to-BIM process, especially for semantically segmenting underceiling areas where mechanical components are close to structural elements.
机译:建筑,工程和建筑(AEC)行业每年表现成千上万的扫描。这些点云的大多数用于生成三维(3D)模型 - 一种正式称为扫描的过程,以构建信息建模(扫描到BIM) - 表示施工场景的当前条件。虽然点云数据提供了场景的几何信息,但其使用呈现了几个挑战,使得从点云数据耗时,劳动密集型和容易出错的过程中生成3D模型的过程。为了解决提到的挑战,本文提出了一种新的端到端深度学习方法,名为Scan2Bim-Net,用于语义分割点云数据中存在的结构,架构和机械组件。它使用三个主要网络进行分类梁,天花板,柱,地板,管道和墙壁元件:两个卷积神经网络(CNN)和一个经常性神经网络(RNN)。该方法培训并使用83个房间从代表现实世界的工业和商业建筑物的点云数据进行培训和测试。该过程返回了86.13%的平均精度,光束,天花板,柱,地板,管道和墙壁类别分别获得了82.47%,92.60%,59.31%,98.71%,82.79%和84.46%。实验结果表明,深度学习提高了建筑,结构和机械部件的语义分割的准确性。这种新方法具有在扫描到BIM过程中成为一种工具,特别是对于机械部件接近结构元件的语义分割区域。

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