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Semantic segmentation of point clouds of building interiors with deep learning: Augmenting training datasets with synthetic BIM-based point clouds
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Semantic segmentation of point clouds of building interio...
Cited by6
2021Classification and analysis of deep learning ...149 cites2021Automated semantic segmentation of industrial...126 cites2022Integrated applications of building informati...126 cites2025Deep learning-based point cloud completion fo...24 cites2025Deep learning-based pipe segmentation and geo...20 cites2025Towards an integrative framework for BIM and ...19 cites