SCANet: Split Coordinate Attention Network for Building Footprint Extraction
SCANet: Split Coordinate Attention Network for Building Footprint Extraction
Building footprint extraction holds immense significance in remote sensing image analysis and has great value in urban planning, land use, environmental protection and disaster assessment. Despite the progress made by conventional and deep learning approaches in this field, they continue to encounter significant challenges. This paper introduces a novel plug-and-play attention module, Split Coordinate Attention (SCA), which ingeniously captures spatially remote interactions by employing two spatial range of pooling kernels, strategically encoding each channel along x and y planes, and separately performs a series of split operations for each feature group, thus enabling more efficient semantic feature extraction. By inserting into a 2D CNN to form an effective SCANet, our SCANet outperforms recent SOTA methods on the public Wuhan University (WHU) Building Dataset and Massachusetts Building Dataset in terms of various metrics. Particularly SCANet achieves the best IoU, 91.61% and 75.49% for the two datasets. Our code is available at https://github.com/AiEson/SCANet
Chunshi Wang、Bin Zhao、Shuxue Ding
区域规划、城乡规划灾害、灾害防治建筑理论
Chunshi Wang,Bin Zhao,Shuxue Ding.SCANet: Split Coordinate Attention Network for Building Footprint Extraction[EB/OL].(2025-07-28)[2025-08-10].https://arxiv.org/abs/2507.20809.点此复制
评论