FloorSAM: SAM-Guided Floorplan Reconstruction with Semantic-Geometric Fusion
Ye, Han, Wang, Haofu, Zhang, Yunchi, Xiao, Jiangjian, Jin, Yuqiang, Liu, Jinyuan, Zhang, Wen-An, Sychou, Uladzislau, Tuzikov, Alexander, Sobolevskii, Vladislav, Zakharov, Valerii, Sokolov, Boris, Fu, Minglei
–arXiv.org Artificial Intelligence
Abstract--Reconstructing building floor plans from point cloud data is a critical technology for indoor navigation, building information modeling (BIM), and highly accurate precise indoor measurement applications. Traditional methods, such as geometric algorithms and Mask R-CNN-based deep learning for mask segmentation, often suffer from sensitivity to noise, limited generalization, and loss of geometric details, severely impacting measurement accuracy. This study proposes an innovative framework, FloorSAM, that integrates room-height point cloud density maps with the guided segmentation capabilities of the Segment Anything Model (SAM) to enhance the precision of floor plan reconstruction from LiDAR point cloud data. By applying grid-based filtering to retain elevation point clouds near the ceiling of each region, combined with adaptive resolution projection and image enhancement techniques, a top-down density map is generated, improving the robustness and accuracy of spatial feature measurement. This framework leverages SAM's zero-shot learning to achieve high-fidelity room segmentation, remarkably enhancing reconstruction and measurement accuracy across diverse building layouts. Subsequently, leveraging SAM's zero-shot guided segmentation capabilities, high-quality room masks are generated based on adaptive prompt points, followed by a multistage filtering process to extract precise semantic masks for individual rooms. Through joint analysis of mask and point cloud modalities, contour extraction and regularization are performed, integrating semantic segmentation with geometric information to produce accurate room floor plans and recover topological relationships between rooms.
arXiv.org Artificial Intelligence
Sep-22-2025
- Country:
- Asia
- China > Zhejiang Province
- Russia (0.04)
- Europe
- Belarus > Minsk Region
- Minsk (0.04)
- Russia > Northwestern Federal District
- Leningrad Oblast > Saint Petersburg (0.04)
- Belarus > Minsk Region
- Asia
- Genre:
- Research Report (1.00)
- Technology: