Frontiers of Data and Computing ›› 2026, Vol. 8 ›› Issue (2): 25-39.
CSTR: 32002.14.jfdc.CN10-1649/TP.2026.02.003
doi: 10.11871/jfdc.issn.2096-742X.2026.02.003
• Special Issue: Key Technologies and Applications of Cryospheric Big Data Mining and Analysis • Previous Articles Next Articles
WANG Zhaobin1,*(
),WANG Rui1,LYU Yongke1,ZHANG Yaonan2
Received:2025-07-23
Online:2026-04-20
Published:2026-04-23
WANG Zhaobin, WANG Rui, LYU Yongke, ZHANG Yaonan. Desert Segmentation Based on Adaptive Semantic Connectivity and Perceptual Attention[J]. Frontiers of Data and Computing, 2026, 8(2): 25-39, https://cstr.cn/32002.14.jfdc.CN10-1649/TP.2026.02.003.
Table 2
Impact of using different Loss functions on network performance"
| Loss1 | Loss2 | Loss3 | OA (%) | MIoU (%) | MPA (%) | MRecall (%) | MF1 (%) |
|---|---|---|---|---|---|---|---|
| Ce-loss | 97.91 | 95.90 | 97.90 | 97.91 | 97.91 | ||
| Dice-loss | 98.00 | 96.07 | 97.97 | 98.03 | 97.99 | ||
| Ce-loss | Dice-loss | 98.52 | 97.08 | 98.51 | 98.52 | 98.52 | |
| Ce-loss | Dice-loss | Bou-loss | 98.65 | 97.32 | 98.63 | 98.66 | 98.64 |
Table 3
Comparison results of different semantic segmentation models on the test set"
| Methods | OA (%) | MIoU (%) | MPA (%) | MRecall (%) | MF1 (%) |
|---|---|---|---|---|---|
| UNet[ | 92.11 | 85.33 | 92.10 | 92.06 | 92.08 |
| PSPNet[ | 93.95 | 88.53 | 94.07 | 93.82 | 93.91 |
| S-UNet[ | 95.12 | 90.67 | 95.14 | 95.08 | 95.11 |
| DeepLab V3+[ | 95.17 | 90.76 | 95.19 | 95.12 | 95.15 |
| DAE-Former[ | 95.55 | 91.46 | 95.55 | 95.53 | 95.54 |
| Swin-UNet[ | 96.22 | 92.70 | 96.23 | 96.20 | 96.21 |
| HiFormer[ | 96.44 | 93.11 | 96.45 | 96.41 | 96.43 |
| MT-UNet[ | 97.36 | 94.83 | 97.37 | 97.32 | 97.35 |
| ASC-Trans | 98.65 | 97.32 | 98.63 | 98.66 | 98.64 |
Table 4
Comparison results of computational complexity and resource consumption among different semantic segmentation models"
| Methods | Params (M) | FLOPs (G) |
|---|---|---|
| UNet[ | 24.45 | 31.20 |
| PSPNet[ | 46.73 | 68.12 |
| S-UNet[ | 63.25 | 52.36 |
| DeepLab V3+[ | 39.67 | 62.35 |
| DAE-Former[ | 48.07 | 26.16 |
| Swin-UNet[ | 41.38 | 34.79 |
| HiFormer[ | 73.85 | 23.21 |
| MT-UNet[ | 79.95 | 44.78 |
| ASC-Trans | 116.24 | 178.45 |
Table 5
Comparison results of evaluation metrics for different methods on desert boundary data connected to rivers and lakes"
| Methods | OA (%) | MIoU (%) | MPA (%) | MRecall (%) | MF1 (%) |
|---|---|---|---|---|---|
| PSPNet[ | 95.50 | 87.27 | 92.66 | 93.43 | 93.04 |
| UNet[ | 96.24 | 89.45 | 92.97 | 95.88 | 94.33 |
| S-UNet[ | 96.65 | 90.28 | 94.58 | 95.04 | 94.80 |
| DeepLab V3+[ | 97.25 | 91.58 | 97.77 | 93.63 | 93.04 |
| DAE-Former[ | 96.70 | 90.29 | 95.30 | 94.33 | 94.80 |
| Swin-UNet[ | 97.21 | 91.78 | 95.64 | 95.67 | 95.65 |
| HiFormer[ | 97.58 | 92.92 | 95.65 | 96.96 | 96.29 |
| MT-UNet[ | 98.53 | 95.54 | 97.74 | 97.66 | 97.70 |
| ASC-Trans | 98.97 | 96.86 | 98.48 | 98.32 | 98.40 |
Table 6
Comparison results of evaluation metrics for different methods on desert boundary data connected to Gobi Bare Land"
| Methods | OA (%) | MIoU (%) | MPA (%) | MRecall (%) | MF1 (%) |
|---|---|---|---|---|---|
| UNet[ | 95.98 | 91.29 | 94.78 | 96.16 | 95.42 |
| PSPNet[ | 96.57 | 92.39 | 96.15 | 95.89 | 96.02 |
| DeepLab V3+[ | 96.58 | 92.38 | 96.27 | 95.78 | 96.02 |
| S-UNet[ | 96.74 | 93.56 | 96.86 | 96.51 | 96.67 |
| DAE-Former[ | 96.96 | 93.20 | 96.74 | 96.21 | 96.46 |
| Swin-UNet[ | 97.53 | 94.44 | 97.24 | 97.03 | 97.13 |
| MT-UNet[ | 97.76 | 95.54 | 97.75 | 97.70 | 97.72 |
| HiFormer[ | 98.08 | 95.65 | 98.07 | 97.49 | 97.77 |
| ASC-Trans | 98.73 | 97.45 | 98.68 | 98.74 | 98.71 |
Table 7
Comparison results of evaluation metrics for different methods on desert boundary data connected to mountains and artificial structures"
| Methods | OA (%) | MIoU (%) | MPA (%) | MRecall (%) | MF1 (%) |
|---|---|---|---|---|---|
| PSPNet[ | 95.34 | 90.91 | 95.53 | 95.01 | 95.23 |
| UNet[ | 95.99 | 92.15 | 95.93 | 95.90 | 95.91 |
| S-UNet[ | 96.56 | 92.40 | 95.97 | 96.10 | 96.03 |
| DeepLab V3+[ | 97.12 | 94.30 | 97.09 | 97.04 | 97.07 |
| DAE-Former[ | 97.22 | 94.50 | 97.26 | 97.08 | 97.17 |
| Swin-UNet[ | 97.44 | 94.92 | 97.47 | 97.32 | 97.39 |
| MT-UNet[ | 97.94 | 95.33 | 98.07 | 97.16 | 97.60 |
| HiFormer[ | 97.99 | 95.99 | 98.02 | 97.89 | 97.96 |
| ASC-Trans | 98.73 | 97.45 | 98.71 | 98.81 | 98.76 |
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