Smart City Gnosys

Smart city article details

Title Semi-Supervised Semantic Segmentation Network For Point Clouds Based On 3D Shape
ID_Doc 48325
Authors Zhang L.; Zhang K.
Year 2023
Published Applied Sciences (Switzerland), 13, 6
DOI http://dx.doi.org/10.3390/app13063872
Abstract The semantic segmentation of point clouds has significant applications in fields such as autonomous driving, robot vision, and smart cities. As LiDAR technology continues to develop, point clouds have gradually become the main type of 3D data. However, due to the disordered and scattered nature of point cloud data, it is challenging to effectively segment them semantically. A three-dimensional (3D) shape provides an important means of studying the spatial relationships between different objects and their structures in point clouds. Thus, this paper proposes a semi-supervised semantic segmentation network for point clouds based on 3D shape, which we call SBSNet. This network groups and encodes the geometric information of 3D objects to form shape features. It utilizes an attention mechanism and local information fusion to capture shape context information and calculate the data features. The experimental results showed that the proposed method achieved an overall intersection ratio of 85.3% in the ShapeNet dataset and 90.6% accuracy in the ModelNet40 dataset. Empirically, it showed strong performance on par or even better than state-of-the-art models. © 2023 by the authors.
Author Keywords attention mechanism; geometric features; point cloud; semi-supervision


Similar Articles


Id Similarity Authors Title Published
61547 View0.906Gu K.; Lv Z.; Zhu W.; Yi Y.; Jia F.; Ma J.Weakly Supervised Point Cloud Semantic Segmentation Based On Multidimensional Feature Fusion And Feature Representation2023 10th International Forum on Electrical Engineering and Automation, IFEEA 2023 (2023)
43636 View0.888Yi H.; Liu Y.; Wang M.Psnet: Patch-Based Self-Attention Network For 3D Point Cloud Semantic SegmentationRemote Sensing, 17, 12 (2025)
34830 View0.883Li Y.; Ye Z.; Huang X.; HeLi Y.; Shuang F.Lcl_Fda: Local Context Learning And Full-Level Decoder Aggregation Network For Large-Scale Point Cloud Semantic SegmentationNeurocomputing, 621 (2025)
159 View0.867Fan Y.-C.; Liao K.-Y.; Xiao Y.-S.; Lu M.-H.; Yan W.-Z.3D Point Cloud Semantic Segmentation System Based On Lightweight FpconvIEEE Access, 11 (2023)
48268 View0.864Koszyk J.; Jasińska A.; Pargieła K.; Malczewska A.; Grzelka K.; Bieda A.; Ambroziński Ł.Semantic Segmentation-Driven Integration Of Point Clouds From Mobile Scanning Platforms In Urban EnvironmentsRemote Sensing, 16, 18 (2024)
18256 View0.861Li Z.; Ning X.; Lv Z.; Shi Z.; Jin H.; Wang Y.; Zhou W.Demf-Net: Dual-Branch Feature Enhancement And Multi-Scale Fusion For Semantic Segmentation Of Large-Scale Point Clouds; [Demf-Net:基于双分支增强和多尺度融合的大规模点云语义分割]Journal of Graphics, 46, 2 (2025)
48566 View0.853Li X.; Zhang Z.; Li Y.; Huang M.; Zhang J.Sfl-Net: Slight Filter Learning Network For Point Cloud Semantic SegmentationIEEE Transactions on Geoscience and Remote Sensing, 61 (2023)
41134 View0.851Merkle D.; Reiterer A.Overview Of 3D Point Cloud Annotation And Segmentation Techniques For Smart City ApplicationsProceedings of SPIE - The International Society for Optical Engineering, 12269 (2022)
17074 View0.851Zaboli M.; Rastiveis H.; Hosseiny B.; Shokri D.; Sarasua W.A.; Homayouni S.D-Net: A Density-Based Convolutional Neural Network For Mobile Lidar Point Clouds Classification In Urban AreasRemote Sensing, 15, 9 (2023)