Semantic Segmentation in Multiple Adverse Weather Conditions with Domain Knowledge Retention
Xin Yang,
Wending Yan,
Yuan Yuan
et al.
Abstract:Semantic segmentation's performance is often compromised when applied to unlabeled adverse weather conditions. Unsupervised domain adaptation is a potential approach to enhancing the model's adaptability and robustness to adverse weather. However, existing methods encounter difficulties when sequentially adapting the model to multiple unlabeled adverse weather conditions. They struggle to acquire new knowledge while also retaining previously learned knowledge. To address these problems, we propose a semantic s… Show more
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