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3D semantic segmentation for high-resolution aerial survey derived point clouds using deep learning (demonstration)

Published: 06 November 2018 Publication History

Abstract

Three-dimensional (3D) Semantic segmentation of aerial derived point cloud aims at assigning each point to a semantic class such as building, tree, road, and so on. Accurate 3D-segmentation results can be used as an essential information for constructing 3D city models, for assessing the urban expansion and economical condition. However, the fine-grained semantic segmentation is a challenge in high-resolution point cloud due to irregularly distributed points unlike regular pixels of image. In this demonstration, we present a case study to apply PointNet, a novel deep learning network, to outdoor aerial survey derived point clouds by considering intensity (depth) as well as spectral information (RGB). PointNet was basically designed for indoor point cloud data based on the permutation invariance of 3D points. We firstly fuse two surveying datasets of Light Detection and ranging (LiDAR) and aerial images for generating multi-sourced aerial point clouds (RGB-DI). Then, each point of fused data is classified into a semantic class of ordinary building, public facility, apartment, factory, transportation network, park, and water by reworking PointNet. The result of our approach by using deep learning shows about 0.88 accuracy and 0.64 F-measure of semantic segmentation with the RGB-DI data we have fused. It outperforms a Support Vector Machine(SVM) approach based on geometric features of linearity, planarity, scattering, and verticality of a set of 3D points.

References

[1]
Alexandre Boulch, Bertrand Le Saux, and Nicolas Audebert. 2017. Unstructured point cloud semantic labeling using deep segmentation networks. In Eurographics Workshop on 3D Object Retrieval, Vol. 2. 1.
[2]
Xin Huang, Liangpei Zhang, and Wei Gong. 2011. Information fusion of aerial images and LIDAR data in urban areas: vector-stacking, re-classification and post-processing approaches. International Journal of Remote Sensing 32, 1 (2011), 69--84.
[3]
Charles R Qi, Hao Su, Kaichun Mo, and Leonidas J Guibas. 2017. Pointnet: Deep learning on point sets for 3d classification and segmentation. Proc. Computer Vision and Pattern Recognition (CVPR), IEEE 1, 2 (2017), 4.
[4]
Charles Ruizhongtai Qi, Li Yi, Hao Su, and Leonidas J Guibas. 2017. Pointnet++: Deep hierarchical feature learning on point sets in a metric space. In Advances in Neural Information Processing Systems. 5105--5114.
[5]
Lyne P Tchapmi, Christopher B Choy, Iro Armeni, Jun Young Gwak, and Silvio Savarese. 2017. SEGCloud: Semantic Segmentation of 3D Point Clouds. arXiv preprint arXiv:1710.07563 (2017).
[6]
Zeyi Wen, Jiashuai Shi, Qinbin Li, Bingsheng He, and Jian Chen. 2018. ThunderSVM: A Fast SVM Library on GPUs and CPUs. Journal of Machine Learning Research 19 (2018), 1--5.

Cited By

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  • (2024)Dynamic Spatial–Spectral Feature Optimization-Based Point Cloud ClassificationRemote Sensing10.3390/rs1603057516:3(575)Online publication date: 2-Feb-2024
  • (2024)Multiple Resolutions Detail Enhancement Network for Real-Time Image Semantic SegmentationIEEE Transactions on Artificial Intelligence10.1109/TAI.2024.33553545:7(3393-3407)Online publication date: Jul-2024
  • (2023)A Randla-Net-Based Approach to Segment Roadway Objects in Large-Scale Point CloudsIGARSS 2023 - 2023 IEEE International Geoscience and Remote Sensing Symposium10.1109/IGARSS52108.2023.10282549(5246-5249)Online publication date: 16-Jul-2023
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  1. 3D semantic segmentation for high-resolution aerial survey derived point clouds using deep learning (demonstration)

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      cover image ACM Conferences
      SIGSPATIAL '18: Proceedings of the 26th ACM SIGSPATIAL International Conference on Advances in Geographic Information Systems
      November 2018
      655 pages
      ISBN:9781450358897
      DOI:10.1145/3274895
      Permission to make digital or hard copies of part or all of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for third-party components of this work must be honored. For all other uses, contact the Owner/Author.

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      Publication History

      Published: 06 November 2018

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      Author Tags

      1. 3D-segmentation
      2. PointNet
      3. aerial images
      4. deep learning
      5. point cloud

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      SIGSPATIAL '18 Paper Acceptance Rate 30 of 150 submissions, 20%;
      Overall Acceptance Rate 220 of 1,116 submissions, 20%

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      Cited By

      View all
      • (2024)Dynamic Spatial–Spectral Feature Optimization-Based Point Cloud ClassificationRemote Sensing10.3390/rs1603057516:3(575)Online publication date: 2-Feb-2024
      • (2024)Multiple Resolutions Detail Enhancement Network for Real-Time Image Semantic SegmentationIEEE Transactions on Artificial Intelligence10.1109/TAI.2024.33553545:7(3393-3407)Online publication date: Jul-2024
      • (2023)A Randla-Net-Based Approach to Segment Roadway Objects in Large-Scale Point CloudsIGARSS 2023 - 2023 IEEE International Geoscience and Remote Sensing Symposium10.1109/IGARSS52108.2023.10282549(5246-5249)Online publication date: 16-Jul-2023
      • (2023)Deep Learning-Based 3-D Model for the Cultural Heritage Sites in the State of Gujarat, IndiaArtificial Intelligence and Sustainable Computing10.1007/978-981-99-1431-9_59(737-750)Online publication date: 24-Sep-2023
      • (2022)Research Contribution and Comprehensive Review towards the Semantic Segmentation of Aerial Images Using Deep Learning TechniquesSecurity and Communication Networks10.1155/2022/60109122022Online publication date: 1-Jan-2022
      • (2022)An Automated Sound Barrier Inventory Method Using Mobile LiDARJournal of Transportation Engineering, Part A: Systems10.1061/JTEPBS.0000732148:10Online publication date: Oct-2022
      • (2021)Airborne Laser Scanning Point Cloud Classification Using the DGCNN Deep Learning MethodRemote Sensing10.3390/rs1305085913:5(859)Online publication date: 25-Feb-2021
      • (2021)Toward a Deep Learning Approach for Automatic Semantic Segmentation of 3D Lidar Point Clouds in Urban AreasGeospatial Intelligence10.1007/978-3-030-80458-9_6(67-77)Online publication date: 11-Nov-2021
      • (2021)Semantic Segmentation of Airborne LiDAR Data for the Development of an Urban 3D ModelBuilding Information Modeling for a Smart and Sustainable Urban Space10.1002/9781119885474.ch7(113-130)Online publication date: 24-Dec-2021
      • (2020)Detection, Segmentation, and Model Fitting of Individual Tree Stems from Airborne Laser Scanning of Forests Using Deep LearningRemote Sensing10.3390/rs1209146912:9(1469)Online publication date: 6-May-2020
      • Show More Cited By

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