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WeatherSeg: Weather-Robust Image Segmentation using Teacher-Student Dual Learning and Classifier-Updating Attention

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WeatherSeg, an advanced semi-supervised segmentation framework, addresses autonomous driving's environmental perception challenges in adverse weather while reducing annotation costs. This framework integrates a Dual Teacher-Student Weight-Sharing Model (DTSWSM) that enables knowledge distillation from weather-affected images, and a Classifier Weight Updating Attention Mechanism (CWUAM) that dynamically adjusts classifier weights based on environmental attributes. Comprehensive evaluations demonstrate that WeatherSeg significantly outperforms baseline models in both accuracy and robustness across various weather conditions, including clear, rainy, cloudy, and foggy scenarios, establishing it as an effective solution for all-weather semantic segmentation in autonomous driving and related applications.

Zhang Zhang, Yifeng Zeng, Houshi Jiang, Yinghui Pan• 2026

Related benchmarks

TaskDatasetResultRank
Semantic segmentationCityscapes (val)
mIoU81.32
527
Semantic segmentationACDC
mIoU83.7
34
Semantic segmentationRainCityscape
mIoU82.8
24
Semantic segmentationACDC and Cityscapes Rain (val test)
Parameters (M)14.3
5
Semantic segmentationACDC 1/8 annotation ratio
mIoU69.2
3
Semantic segmentationACDC 1/2 annotation ratio
mIoU80.3
3
Semantic segmentationACDC Full supervision
mIoU83.7
3
Semantic segmentationRainCityScapes (1/8 annotation ratio)
mIoU68.3
3
Semantic segmentationRainCityScapes 1/2 annotation ratio
mIoU79.4
3
Semantic segmentationRainCityScapes Full supervision
mIoU82.8
3
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