Figure/Table detail

Semantic Segmentation Method of Street Point Cloud based on Deep-Supervised Multi-Scale Self-Attention
Guangchao LIU, Chenxiao ZHANG, Lei HU
Remote Sensing Technology and Application, 2025, 40(6): 1626-1636.   DOI: 10.11873/j.issn.1004-0323.2025.6.1626

实验模型OAmIoU地面建筑汽车植被电线杆桥梁
SnapNet54.817.342.843.96.010.80.00.0
PointNet++94.169.692.890.565.672.526.469.6
3D CNN58.419.278.290.51.35.40.50.2
DeepNet61.222.279.935.38.78.60.30.0
KPConv93.654.394.187.866.677.50.00.0
RandLA-Net93.358.392.087.979.967.317.06.0
Point Transformer95.471.093.092.874.993.822.149.8
本文方法95.572.793.292.081.895.123.850.1
Table 2 Semantic segmentation results of different models on CSPC dataset Scene2
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