Implementing PointNet for point cloud segmentation in the heritage context

被引:30
作者
Haznedar, Bulent [1 ]
Bayraktar, Rabia [2 ]
Ozturk, Ali Emre [3 ]
Arayici, Yusuf [4 ]
机构
[1] Gaziantep Univ, Dept Comp Engn, Gaziantep, Turkiye
[2] Huawei Turkey R&D Ctr, AI Enablement, Istanbul, Turkiye
[3] Hasan Kalyoncu Univ, Dept Elect Elect Engn, Gaziantep, Turkiye
[4] Northumbria Univ, Dept Architecture & Built Environm, Newcastle, England
关键词
Deep learning; Artificial intelligence; Cultural heritage; Segmentation; 3D point cloud; NEURAL-NETWORK; 3D;
D O I
10.1186/s40494-022-00844-w
中图分类号
C [社会科学总论];
学科分类号
03 ; 0303 ;
摘要
Automated Heritage Building Information Modelling (HBIM) from the point cloud data has been researched in the last decade as HBIM can be the integrated data model to bring together diverse sources of complex cultural content relating to heritage buildings. However, HBIM modelling from the scan data of heritage buildings is mainly manual and image processing techniques are insufficient for the segmentation of point cloud data to speed up and enhance the current workflow for HBIM modelling. Artificial Intelligence (AI) based deep learning methods such as PointNet are introduced in the literature for point cloud segmentation. Yet, their use is mainly for manufactured and clear geometric shapes and components. To what extent PointNet based segmentation is applicable for heritage buildings and how PointNet can be used for point cloud segmentation with the best possible accuracy (ACC) are tested and analysed in this paper. In this study, classification and segmentation processes are performed on the 3D point cloud data of heritage buildings in Gaziantep, Turkey. Accordingly, it proposes a novel approach of activity workflow for point cloud segmentation with deep learning using PointNet for the heritage buildings. Twenty-eight case study heritage buildings are used, and AI training is performed using five feature labelling for segmentation namely, walls, roofs, floors, doors, and windows for each of these 28 heritage buildings. The dataset is divided into clusters with 80% training dataset and 20% prediction test dataset. PointNet algorithm was unable to provide sufficient accuracy in segmenting the point clouds due to deformation and deterioration on the existing conditions of the heritage case study buildings. However, if PointNet algorithm is trained with the restitution-based heritage data, which is called synthetic data in the research, PointNet algorithm provides high accuracy. Thus, the proposed approach can build the baseline for the accurate classification and segmentation of the heritage buildings.
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页数:18
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