模态框(Modal)标题

在这里添加一些文本

模态框(Modal)标题

ISSN 1004-0323
CN 62-1099/TP
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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

Fig.10 Visualization results of some mispredictions on CSPC dataset
Other figure/table from this article
  • Fig.1 Network structure of 3D point cloud semantic segmentation based on deep-supervised multi-scale self-attention
  • Fig.2 The structure of the dilated nearest neighbor self-attention module
  • Fig.3 The idea of dilated k-nearest neighbors
  • Fig.4 Structure of dilated down-sampling module, nearest neighbor up-sampling module and multi-scale attention aggregation module
  • Table 1 Semantic segmentation results of different models on Toronto 3D dataset
  • Fig.5 Visualization results on Toronto 3D dataset and CSPC dataset
  • Table 2 Semantic segmentation results of different models on CSPC dataset Scene2
  • Table 3 Semantic segmentation results of different models on CSPC dataset Scene5
  • Fig.6 Confusion matrix of Toronto3D dataset
  • Fig.7 Confusion matrix of CSPC dataset Scene2
  • Fig.8 Confusion matrix of CSPC dataset Scene5
  • Fig.9 Visualization results of some mispredictions on Toronto3D dataset
  • Table 4 Results of ablation study on Toronto3D dataset
  • Table 5 Test efficiency of each method on Toronto3D dataset
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