A Specialized Pipeline for Efficient and Reliable 3D Semantic Model Reconstruction of Buildings from Indoor Point Clouds.

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY Journal of Imaging Pub Date : 2024-10-19 DOI:10.3390/jimaging10100261
Cedrique Fotsing, Willy Carlos Tchuitcheu, Lemopi Isidore Besong, Douglas William Cunningham, Christophe Bobda
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Abstract

Recent advances in laser scanning systems have enabled the acquisition of 3D point cloud representations of scenes, revolutionizing the fields of Architecture, Engineering, and Construction (AEC). This paper presents a novel pipeline for the automatic generation of 3D semantic models of multi-level buildings from indoor point clouds. The architectural components are extracted hierarchically. After segmenting the point clouds into potential building floors, a wall detection process is performed on each floor segment. Then, room, ground, and ceiling extraction are conducted using the walls 2D constellation obtained from the projection of the walls onto the ground plan. The identification of the openings in the walls is performed using a deep learning-based classifier that separates doors and windows from non-consistent holes. Based on the geometric and semantic information from previously detected elements, the final model is generated in IFC format. The effectiveness and reliability of the proposed pipeline are demonstrated through extensive experiments and visual inspections. The results reveal high precision and recall values in the extraction of architectural elements, ensuring the fidelity of the generated models. In addition, the pipeline's efficiency and accuracy offer valuable contributions to future advancements in point cloud processing.

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从室内点云高效可靠地重建建筑物三维语义模型的专用管道。
激光扫描系统的最新进展使得三维点云场景的获取成为可能,为建筑、工程和施工(AEC)领域带来了革命性的变化。本文介绍了一种从室内点云自动生成多层建筑三维语义模型的新方法。建筑组件是分层提取的。在将点云分割成潜在的建筑楼层后,对每个楼层段执行墙壁检测过程。然后,使用从墙壁投影到地面平面图上获得的墙壁二维星座进行房间、地面和天花板提取。使用基于深度学习的分类器识别墙壁上的开口,该分类器可将门窗与不一致的孔洞区分开来。根据之前检测到的元素的几何和语义信息,以 IFC 格式生成最终模型。通过大量的实验和目视检查,证明了所建议管道的有效性和可靠性。结果显示,在提取建筑元素时,精确度和召回值都很高,确保了生成模型的保真度。此外,该管道的效率和准确性还为未来点云处理技术的进步做出了宝贵贡献。
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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
期刊最新文献
A Specialized Pipeline for Efficient and Reliable 3D Semantic Model Reconstruction of Buildings from Indoor Point Clouds. Design and Use of a Custom Phantom for Regular Tests of Radiography Apparatus: A Feasibility Study. Differentiation of Benign and Malignant Neck Neoplastic Lesions Using Diffusion-Weighted Magnetic Resonance Imaging. Investigating the Sim-to-Real Generalizability of Deep Learning Object Detection Models. Quantitative Comparison of Color-Coded Parametric Imaging Technologies Based on Digital Subtraction and Digital Variance Angiography: A Retrospective Observational Study.
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