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Deep Learning–Based Automation of Scan-to-BIM with Modeling Objects from Occluded Point Clouds

Junwoo Park, Jaehong Kim, Dong-Yeop Lee, Kwangbok Jeong, Jaewook Lee, Hakpyeong Kim, Taehoon Hong

2022Journal of Management in Engineering49 citationsDOI

Abstract

As-built building information modeling (BIM) currently is regarded as a tool with the potential to manage buildings efficiently in the operation and maintenance phases. However, as-built BIM modeling is a labor-intensive process that requires considerable cost and time in modeling existing buildings. Although active research on scan-to-BIM automation has addressed this issue, previous studies modeled only major objects such as walls, floors, and ceilings, consequently requiring modeling other objects in indoor spaces. In addition, there was a limitation in modeling objects located in the occluded areas of scanned point clouds. Therefore, this study extracted various indoor objects from a point cloud based on deep-learning, and compensated for incomplete object information from occluded point clouds for automating the process of scan-to-BIM. The number of object classes extracted from the semantic segmentation of a deep learning network was increased to 13, and spatial relationships between objects were defined to improve the accuracy of bounding boxes extracted from point clouds. Furthermore, a parametric algorithm was developed to match the bounding boxes and objects in a BIM library to generate BIM models automatically. In a case study involving an office room, the accuracy of the bounding boxes of some object classes improved by as much as 53.33%. The study verified the feasibility of the proposed method of scan-to-BIM automation for the three-dimensional (3D) reality capture of existing buildings.

Topics & Concepts

Point cloudBuilding information modelingMinimum bounding boxComputer scienceProcess (computing)AutomationBounding overwatchSegmentationPoint (geometry)Parametric statisticsArtificial intelligenceObject (grammar)Deep learningComputer visionEngineeringImage (mathematics)MathematicsMechanical engineeringGeometryCompatibility (geochemistry)Chemical engineeringStatisticsOperating system3D Surveying and Cultural HeritageBIM and Construction IntegrationInfrastructure Maintenance and Monitoring
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