Uuganbayar Gankhuyag’s research while affiliated with Seoul National University of Science and Technology and other places

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Publications (2)


Evaluation result of the proposed method First floor Second floor
Automatic BIM Indoor Modelling from Unstructured Point Clouds Using a Convolutional Neural Network
  • Article
  • Full-text available

January 2021

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365 Reads

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13 Citations

Intelligent Automation & Soft Computing

Uuganbayar Gankhuyag

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Ji-Hyeong Han
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Automatic 2D Floorplan CAD Generation from 3D Point Clouds

April 2020

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3,052 Reads

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32 Citations

In the architecture, engineering, and construction (AEC) industry, creating an indoor model of existing buildings has been a challenging task since the introduction of building information modeling (BIM). Because the process of BIM is primarily manual and implies a high possibility of error, the automated creation of indoor models remains an ongoing research. In this paper, we propose a fully automated method to generate 2D floorplan computer-aided designs (CADs) from 3D point clouds. The proposed method consists of two main parts. The first is to detect planes in buildings, such as walls, floors, and ceilings, from unstructured 3D point clouds and to classify them based on the Manhattan-World (MW) assumption. The second is to generate 3D BIM in the industry foundation classes (IFC) format and a 2D floorplan CAD using the proposed line-detection algorithm. We experimented the proposed method on 3D point cloud data from a university building, residential houses, and apartments and evaluated the geometric quality of a wall reconstruction. We also offer the source code for the proposed method on GitHub.

Citations (2)


... Scan-to-BIM is the process of converting the measured point clouds into a BIM format model [9]. As-designed BIM is often unavailable for many existing structures; therefore, the Scan-to-BIM technique has been widely adopted in creating As-built BIM models [10]. The conventional Scan-to-BIM workflow demands labor and expense because it always requires mass manual intervention, especially for large-scale scenes and complex elements [11]. ...

Reference:

Automated Scan-to-BIM: A Deep Learning-Based Framework for Indoor Environments with Complex Furniture Elements
Automatic BIM Indoor Modelling from Unstructured Point Clouds Using a Convolutional Neural Network

Intelligent Automation & Soft Computing

... Compared with the traditional CAD method, a number of advantages in the fabrication drawings generation were provided, such as accuracy, efficiency, and collaboration. Gankhuyag and Han [14] designed an automatic approach to generate the 2D floorplan drawing using 3D point clouds. The planes of structural component were extracted from point clouds data, and the Manhattan-World assumption was utilized to classify the point clouds data according to the character of component. ...

Automatic 2D Floorplan CAD Generation from 3D Point Clouds