Semi-supervised semantic segmentation method for 3D Mesh building facades based on contrastive learning
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College of Electronic Science and Technology, National University of Defense Technology, Changsha 410073 , China

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TP753

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    Abstract:

    Semantic segmentation of building facades from 3D mesh data is essential for scene understanding but often relies on costly fine-grained annotations. In response to this issue, a semi-supervised learning approach was proposed, introducing a semi-supervised semantic segmentation method based on contrastive learning SS_CC(semi-supervised semantic segmentation based on contrastive learning and consistency regularization) to segment building facades in 3D mesh data. In the SS_CC method, the enhanced contrastive learning module exploited the class separability between positive and negative samples to more effectively utilize class-specific feature information. Additionally, the proposed feature-space consistency regularization loss improved the discriminative capability of the extracted building facade features by leveraging global feature representations. Experimental results show that the proposed SS_CC method outperforms some mainstream methods in F1 score and mIoU, and has relatively better segmentation performance on building walls and windows.

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杜春, 成浩维, 资文杰, 等. 三维Mesh建筑物立面半监督对比学习语义分割方法[J]. 国防科技大学学报, 2025, 47(6): 235-244.

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  • Received:August 07,2024
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  • Online: December 02,2025
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