Deep Learning–Based Automation of Scan-to-BIM with Modeling Objects from Occluded Point CloudsSource: Journal of Management in Engineering:;2022:;Volume ( 038 ):;issue: 004::page 04022025Author:Junwoo Park
,
Jaehong Kim
,
Dongyeop Lee
,
Kwangbok Jeong
,
Jaewook Lee
,
Hakpyeong Kim
,
Taehoon Hong
DOI: 10.1061/(ASCE)ME.1943-5479.0001055Publisher: ASCE
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.
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contributor author | Junwoo Park | |
contributor author | Jaehong Kim | |
contributor author | Dongyeop Lee | |
contributor author | Kwangbok Jeong | |
contributor author | Jaewook Lee | |
contributor author | Hakpyeong Kim | |
contributor author | Taehoon Hong | |
date accessioned | 2022-05-07T19:59:02Z | |
date available | 2022-05-07T19:59:02Z | |
date issued | 2022-03-28 | |
identifier other | (ASCE)ME.1943-5479.0001055.pdf | |
identifier uri | http://yetl.yabesh.ir/yetl1/handle/yetl/4281870 | |
description 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. | |
publisher | ASCE | |
title | Deep Learning–Based Automation of Scan-to-BIM with Modeling Objects from Occluded Point Clouds | |
type | Journal Paper | |
journal volume | 38 | |
journal issue | 4 | |
journal title | Journal of Management in Engineering | |
identifier doi | 10.1061/(ASCE)ME.1943-5479.0001055 | |
journal fristpage | 04022025 | |
journal lastpage | 04022025-11 | |
page | 11 | |
tree | Journal of Management in Engineering:;2022:;Volume ( 038 ):;issue: 004 | |
contenttype | Fulltext |