Learning from Synthetic Point Cloud Data for Historical Buildings Semantic Segmentation

被引:35
|
作者
Morbidoni, Christian [1 ]
Pierdicca, Roberto [2 ]
Paolanti, Marina [1 ]
Quattrini, Ramona [2 ]
Mammoli, Raissa [2 ]
机构
[1] Univ Politecn Marche DII, Via Brecce Bianche, I-60131 Ancona, Italy
[2] Univ Politecn Marche DICEA, Via Brecce Bianche, I-60131 Ancona, Italy
来源
关键词
Deep learning; point cloud semantic segmentation; synthetic point cloud; cultural heritage; historical building; dynamic graph convolutional neural network; radius distance; scan-to-BIM;
D O I
10.1145/3409262
中图分类号
C [社会科学总论];
学科分类号
03 ; 0303 ;
摘要
Historical heritage is demanding robust pipelines for obtaining Heritage Building Information Modeling models that are fully interoperable and rich in their informative content. The definition of efficient Scan-to-BIM workflows represent a very important step toward a more efficient management of the historical real estate, as creating structured three-dimensional (3D) models from point clouds is complex and time-consuming. In this scenario, semantic segmentation of 3D Point Clouds is gaining more and more attention, since it might help to automatically recognize historical architectural elements. The way paved by recent Deep Learning approaches proved to provide reliable and affordable degrees of automation in other contexts, as road scenes understanding. However, semantic segmentation is particularly challenging in historical and classical architecture, due to the shapes complexity and the limited repeatability of elements across different buildings, which makes it difficult to define common patterns within the same class of elements. Furthermore, as Deep Learning models requires a considerably large amount of annotated data to be trained and tuned to properly handle unseen scenes, the lack of (big) publicly available annotated point clouds in the historical building domain is a huge problem, which in fact blocks the research in this direction. However, creating a critical mass of annotated point clouds by manual annotation is very time-consuming and impractical. To tackle this issue, in this work we explore the idea of leveraging synthetic point cloud data to train Deep Learning models to perform semantic segmentation of point clouds obtained via Terrestrial Laser Scanning. The aim is to provide a first assessment of the use of synthetic data to drive Deep Learning-based semantic segmentation in the context of historical buildings. To achieve this purpose, we present an improved version of the Dynamic Graph CNN (DGCNN) named RadDGCNN. The main improvement consists on exploiting the radius distance. In our experiments, we evaluate the trained models on synthetic dataset (publicly available) about two different historical buildings: the Ducal Palace in Urbino, Italy, and Palazzo Ferretti in Ancona, Italy. RadDGCNN yields good results, demonstrating improved segmentation performances on the TLS real datasets.
引用
收藏
页数:16
相关论文
共 50 条
  • [31] Learning Semantic Segmentation on Unlabeled Real-World Indoor Point Clouds via Synthetic Data
    Song, Youcheng
    Sun, Zhengxing
    Wu, Yunjie
    Sun, Yunhan
    Luo, Shoutong
    Li, Qian
    2022 26TH INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION (ICPR), 2022, : 3750 - 3756
  • [32] Using Deep Learning in Semantic Classification for Point Cloud Data
    Yao, Xuanxia
    Guo, Jia
    Hu, Juan
    Cao, Qixuan
    IEEE ACCESS, 2019, 7 : 37121 - 37130
  • [33] Towards synthesized training data for semantic segmentation of mobile laser scanning point clouds: Generating level crossings from real and synthetic point cloud samples
    Uggla, Gustaf
    Horemuz, Milan
    AUTOMATION IN CONSTRUCTION, 2021, 130
  • [34] On Adversarial Robustness of Point Cloud Semantic Segmentation
    Xu, Jiacen
    Zhou, Zhe
    Feng, Boyuan
    Ding, Yufei
    Li, Zhou
    2023 53RD ANNUAL IEEE/IFIP INTERNATIONAL CONFERENCE ON DEPENDABLE SYSTEMS AND NETWORKS, DSN, 2023, : 531 - 544
  • [35] A multi-granularity semisupervised active learning for point cloud semantic segmentation
    Shanding Ye
    Zhe Yin
    Yongjian Fu
    Hu Lin
    Zhijie Pan
    Neural Computing and Applications, 2023, 35 : 15629 - 15645
  • [36] Point cloud semantic segmentation of complex railway environments using deep learning
    Grandio J.
    Riveiro B.
    Soilán M.
    Arias P.
    Automation in Construction, 2022, 141
  • [37] A multi-granularity semisupervised active learning for point cloud semantic segmentation
    Ye, Shanding
    Yin, Zhe
    Fu, Yongjian
    Lin, Hu
    Pan, Zhijie
    NEURAL COMPUTING & APPLICATIONS, 2023, 35 (21): : 15629 - 15645
  • [38] LEARNING LOCAL STRUCTURE OF REPRESENTATIVE POINTS FOR POINT CLOUD CLASSIFICATION AND SEMANTIC SEGMENTATION
    Li, Xincheng
    Pang, Yanwei
    Wu, Yuefeng
    Li, Yazhao
    2020 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH, AND SIGNAL PROCESSING, 2020, : 3472 - 3476
  • [39] Semantic Segmentation on LiDAR Point Cloud in Urban Area using Deep Learning
    Wicaksono, Satria Bagus
    Wibisono, Ari
    Jatmiko, Wisnu
    Gamal, Ahmad
    Wisesa, Hanif Arief
    2019 4TH INTERNATIONAL WORKSHOP ON BIG DATA AND INFORMATION SECURITY (IWBIS 2019), 2019, : 63 - 66
  • [40] A voxel-based deep learning approach for Point Cloud Semantic Segmentation
    Diaz-Medina, Miguel
    Fuertes-Garcia, Jose-Manuel
    Ogayar-Anguita, Carlos-Javier
    Lucena, Manuel
    XXIX SPANISH COMPUTER GRAPHICS CONFERENCE (CEIG19), 2019, : 73 - 76