The presence of non-homogeneous haze can cause scene blurring, color distortion, low contrast, and other degradations that obscure texture details. Existing homogeneous dehazing methods struggle to handle the non-uniform distribution of haze in a robust manner. The crucial challenge of non-homogeneous dehazing is to effectively extract the non-uniform distribution features and reconstruct the details of hazy areas with high quality. In this paper, we propose a novel self-paced semi-curricular attention network, called SCANet, for non-homogeneous image dehazing that focuses on enhancing haze-occluded regions. Our approach consists of an attention generator network and a scene reconstruction network. We use the luminance differences of images to restrict the attention map and introduce a self-paced semi-curricular learning strategy to reduce learning ambiguity in the early stages of training. Extensive quantitative and qualitative experiments demonstrate that our SCANet outperforms many state-of-the-art methods. The code is publicly available at https://github.com/gy65896/SCANet.
翻译:存在非均匀雾的场景会导致模糊、色彩失真、低对比度和其他降低质量的问题,混合雾模型难以有效地恢复非均匀雾。本文提出了一种新的自感卷曲图像去雾方法,名为SCANet。方法利用自适应分步学习策略,重点聚焦于增强受雾区域,并由注意力生成和场景重构两大方面组成。在注意力生成的过程中利用图像亮度差的特征限制注意力区域。实验证明,与众多最先进的方法相比,SCANet在定量和定性方面都取得了更好的性能表现,其代码已在https://github.com/gy65896/SCANet上公开_AVAILABLE。