Journal of System Simulation ›› 2026, Vol. 38 ›› Issue (6): 1628-1646.doi: 10.16182/j.issn1004731x.joss.25-0649
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Jiang Yanji1, Cui Jiayu1, Dong Hao2, Liu Daqian1, Fei Bowen1, Yu Miao3, Huang Jinshan4
Received:2025-07-08
Revised:2025-10-11
Online:2026-06-25
Published:2026-06-25
CLC Number:
Jiang Yanji, Cui Jiayu, Dong Hao, Liu Daqian, Fei Bowen, Yu Miao, Huang Jinshan. Object Detection Networks and Their Interpretability in Rain, Fog, and Snow Scenarios[J]. Journal of System Simulation, 2026, 38(6): 1628-1646.
Table 2
Test on synthetic fog dataset VOC-FOG-testR
| 模型 | 专攻天气类型 | 类型 | 人 | 自行车 | 小汽车 | 摩托车 | 巴士 | 平均精度 |
|---|---|---|---|---|---|---|---|---|
| TogetherNet[ | 雨、雾、雪 | ODAW | 83.59 | 67.60 | 79.12 | 71.70 | 86.27 | 77.66 |
| FFA-YOLOXs*[ | 雾 | IR+OD | 78.30 | 70.31 | 69.97 | 68.80 | 80.72 | 73.62 |
| DCP-YOLOXs*[ | 雾 | IR+OD | 81.84 | 70.38 | 78.63 | 73.48 | 84.68 | 77.80 |
| AOD-YOLOXs*[ | 雾 | IR+OD | 67.40 | 49.19 | 60.51 | 55.59 | 62.07 | 58.95 |
| RDMNet[ | 雨、雾、雪 | ODAW | 83.98 | 71.18 | 79.16 | 73.92 | 86.19 | 78.89 |
| YOLOXs[ | 雨、雾、雪 | OD | 67.67 | 83.28 | 77.75 | 68.91 | 81.70 | 75.86 |
| YOLOXs* | 雨、雾、雪 | OD | 73.09 | 57.22 | 69.55 | 59.83 | 77.34 | 67.41 |
| DETR*[ | 雨、雾、雪 | OD | 79.74 | 62.48 | 70.24 | 64.16 | 81.31 | 71.58 |
| MS-DETR*[ | 雨、雾、雪 | OD | 81.41 | 65.13 | 78.20 | 71.08 | 84.52 | 76.07 |
| VitDet*[ | 雨、雾、雪 | OD | 62.08 | 30.28 | 36.70 | 33.70 | 54.45 | 43.44 |
| Semi-YOLOXs*[ | 雾 | IR+OD | 81.15 | 76.94 | 76.92 | 72.89 | 84.88 | 78.56 |
| RestorNet-YOLOXs*[ | 雾、雨 | IR+OD | 78.71 | 67.15 | 72.56 | 71.68 | 82.36 | 74.49 |
| DS-Net[ | 雾 | ODAW | 72.44 | 60.47 | 81.27 | 53.85 | 61.43 | 65.89 |
| IA-YOLO[ | 雾 | ODAW | 70.98 | 61.98 | 70.98 | 57.93 | 61.98 | 64.77 |
| KADet | 雨、雾、雪 | ODAW | 85.23 | 69.21 | 80.86 | 75.35 | 88.45 | 79.82 |
Table 3
Test on real-world Foggy Driving dataset
| 模型 | 专攻天气类型 | 类型 | 人 | 自行车 | 小汽车 | 摩托车 | 巴士 | mAP |
|---|---|---|---|---|---|---|---|---|
| TogetherNet | 雨、雾、雪 | ODAW | 25.39 | 17.86 | 56.79 | 7.14 | 43.25 | 30.09 |
| FFA-YOLOXs* | 雾 | IR+OD | 19.18 | 18.07 | 50.83 | 2.38 | 42.77 | 26.65 |
| DCP-YOLOXs* | 雾 | IR+OD | 21.57 | 17.85 | 55.30 | 3.57 | 39.92 | 27.64 |
| AOD-YOLOXs* | 雾 | IR+OD | 24.54 | 33.82 | 56.75 | 4.76 | 36.04 | 31.18 |
| RDMNet | 雨、雾、雪 | ODAW | 25.82 | 20.31 | 55.83 | 2.04 | 33.60 | 27.52 |
| YOLOXs | 雨、雾、雪 | OD | 24.37 | 22.33 | 55.57 | 14.29 | 37.34 | 30.78 |
| YOLOXs* | 雨、雾、雪 | OD | 21.48 | 18.84 | 54.67 | 1.59 | 30.33 | 25.38 |
| DETR* | 雨、雾、雪 | OD | 0.01 | 0 | 0.03 | 0 | 0 | 0.01 |
| MS-DETR* | 雨、雾、雪 | OD | 0 | 0 | 0.04 | 0 | 0 | 0.01 |
| VitDet* | 雨、雾、雪 | OD | 4.64 | 0 | 5.73 | 0 | 7.48 | 3.57 |
| Semi-YOLOXs* | 雾 | IR+OD | 22.39 | 27.73 | 56.47 | 4.76 | 44.93 | 31.26 |
| RestorNet-YOLOXs* | 雾、雨 | IR+OD | 23.24 | 18.81 | 53.71 | 2.38 | 35.70 | 26.77 |
| DS-Net | 雾 | ODAW | 26.74 | 20.54 | 58.16 | 7.14 | 36.11 | 29.74 |
| IA-YOLO | 雾 | ODAW | 16.20 | 11.76 | 41.43 | 4.76 | 17.55 | 18.34 |
| KADet | 雨、雾、雪 | ODAW | 27.75 | 27.01 | 59.69 | 14.29 | 42.20 | 34.19 |
Table 4
Test on real-world RTTS dataset
| 模型 | 专攻天气类型 | 类型 | 人 | 自行车 | 小汽车 | 摩托车 | 巴士 | mAP |
|---|---|---|---|---|---|---|---|---|
| TogetherNet | 雨、雾、雪 | ODAW | 77.05 | 42.95 | 68.80 | 42.41 | 28.99 | 52.04 |
| FFA-YOLOXs* | 雾 | IR+OD | 76.52 | 48.13 | 64.31 | 39.74 | 23.71 | 50.48 |
| DCP-YOLOXs* | 雾 | IR+OD | 81.16 | 51.34 | 71.13 | 47.20 | 31.09 | 56.38 |
| AOD-YOLOXs* | 雾 | IR+OD | 76.49 | 43.32 | 61.03 | 34.54 | 22.16 | 47.51 |
| RDMNet | 雨、雾、雪 | ODAW | 82.25 | 52.38 | 71.91 | 48.98 | 31.53 | 57.41 |
| YOLOXs | 雨、雾、雪 | OD | 81.78 | 56.70 | 70.23 | 49.48 | 31.57 | 57.95 |
| YOLOXs* | 雨、雾、雪 | OD | 80.28 | 50.75 | 68.23 | 41.89 | 28.89 | 54.01 |
| DETR* | 雨、雾、雪 | OD | 60.10 | 40.22 | 52.06 | 31.25 | 20.03 | 40.73 |
| MS-DETR* | 雨、雾、雪 | OD | 74.19 | 19.47 | 58.07 | 27.52 | 19.99 | 39.85 |
| VitDet* | 雨、雾、雪 | OD | 16.56 | 1.12 | 5.24 | 2.37 | 0.58 | 5.17 |
| Semi-YOLOXs* | 雾 | IR+OD | 75.71 | 46.72 | 62.74 | 40.37 | 24.51 | 50.01 |
| RestorNet-YOLOXs* | 雾、雨 | IR+OD | 77.48 | 51.43 | 60.92 | 43.12 | 29.16 | 52.42 |
| DS-Net | 雾 | ODAW | 68.81 | 18.02 | 46.13 | 15.15 | 15.44 | 32.71 |
| IA-YOLO | 雾 | ODAW | 67.25 | 35.28 | 41.14 | 20.97 | 13.64 | 35.66 |
| KADet | 雨、雾、雪 | ODAW | 84.42 | 56.39 | 76.27 | 58.14 | 41.38 | 63.32 |
Table 5
Test on synthetic rainy dataset VOC-Rain-test
| 模型 | 专攻天气类型 | 类型 | 人 | 自行车 | 小汽车 | 摩托车 | 巴士 | mAP |
|---|---|---|---|---|---|---|---|---|
| TogetherNet | 雨、雾、雪 | ODAW | 83.53 | 69.83 | 77.88 | 74.26 | 86.41 | 78.38 |
| RDMNet | 雨、雾、雪 | ODAW | 83.77 | 72.77 | 77.86 | 73.03 | 86.44 | 78.77 |
| YOLOXs | 雨、雾、雪 | OD | 80.98 | 65.88 | 74.54 | 70.83 | 84.35 | 75.32 |
| YOLOXs* | 雨、雾、雪 | OD | 75.94 | 63.00 | 66.92 | 65.32 | 73.10 | 68.86 |
| DETR* | 雨、雾、雪 | OD | 80.24 | 61.79 | 70.81 | 60.51 | 80.25 | 70.72 |
| MS-DETR* | 雨、雾、雪 | OD | 81.77 | 68.93 | 76.26 | 69.57 | 85.78 | 76.46 |
| VitDet* | 雨、雾、雪 | OD | 61.93 | 29.97 | 32.84 | 36.77 | 56.16 | 43.54 |
| RestorNet-YOLOXs* | 雾、雨 | IR+OD | 80.44 | 68.29 | 71.68 | 70.16 | 82.54 | 74.62 |
| AirNet-YOLOXs*[ | 雾、雨 | IR+OD | 80.06 | 67.81 | 70.75 | 69.87 | 82.77 | 74.25 |
| KADet | 雨、雾、雪 | ODAW | 84.32 | 72.31 | 78.73 | 73.43 | 87.21 | 79.20 |
Table 6
Test on synthetic snowy dataset VOC-Snow-test
| 模型 | 专攻天气类型 | 类型 | 人 | 自行车 | 小汽车 | 摩托车 | 巴士 | mAP |
|---|---|---|---|---|---|---|---|---|
| TogetherNet | 雨、雾、雪 | ODAW | 82.20 | 69.70 | 77.72 | 71.39 | 85.30 | 77.26 |
| RDMNet | 雨、雾、雪 | ODAW | 83.56 | 70.71 | 77.45 | 74.12 | 84.94 | 78.16 |
| YOLOXs | 雨、雾、雪 | OD | 81.16 | 66.64 | 75.43 | 70.87 | 83.28 | 75.48 |
| YOLOXs* | 雨、雾、雪 | OD | 78.40 | 64.88 | 70.80 | 56.90 | 81.15 | 70.43 |
| DETR* | 雨、雾、雪 | OD | 80.09 | 59.86 | 67.66 | 60.76 | 81.05 | 69.89 |
| MS-DETR* | 雨、雾、雪 | OD | 85.12 | 67.57 | 81.22 | 72.73 | 87.93 | 78.91 |
| VitDet* | 雨、雾、雪 | OD | 61.10 | 27.63 | 34.13 | 35.56 | 52.39 | 42.16 |
| TKL-YOLOXs*[ | 雨、雾、雪 | IR+OD | 81.02 | 70.14 | 75.53 | 70.33 | 84.42 | 76.29 |
| LMQFormer-YOLOXs*[ | 雪 | IR+OD | 81.36 | 70.44 | 77.57 | 71.61 | 84.35 | 77.07 |
| KADet | 雨、雾、雪 | ODAW | 83.95 | 71.92 | 79.22 | 74.22 | 87.86 | 79.43 |
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