Deep Learning based Wall Structure Object Extraction for 3D Building Modeling Automation

Hyeongjun Yoo, Gyeong-ro Rhee, Je-Ho Ryu, Seungjoo Lee, Jong-Hun Lee
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Abstract

To create a digital twin, 3D modeling data that imitated represents the real-world is essential. However, people manually create modeling data by looking at photos or 3D scanning data. To address 3D modeling by hand, it is necessary to automatically extract information required for 3D modeling from 3D scanning data. In this paper, we propose a method based on deep learning-based 3D semantic segmentation and stochastic-based extraction of wall structure object from point clouds. We validate the performance of the proposed method by comparing the extracted wall structure object information from the initial point cloud with the actual 3D modeling.
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基于深度学习的三维建筑建模自动化墙体结构对象提取
为了创建数字双胞胎,模拟代表现实世界的3D建模数据是必不可少的。然而,人们通过查看照片或3D扫描数据手动创建建模数据。为了解决手工三维建模问题,需要从三维扫描数据中自动提取三维建模所需的信息。本文提出了一种基于深度学习的三维语义分割和基于随机的点云中墙体结构对象的提取方法。通过将从初始点云中提取的墙体结构目标信息与实际三维建模结果进行对比,验证了所提方法的性能。
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