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Proximal Dehaze-Net: A Prior Learning-Based Deep Network for Single Image Dehazing

机译:近端去雾网:用于单个图像去雾的基于先验学习的深度网络

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Photos taken in hazy weather are usually covered with white masks and often lose important details. In this paper, we propose a novel deep learning approach for single image dehazing by learning dark channel and transmission priors. First, we build an energy model for dehazing using dark channel and transmission priors and design an iterative optimization algorithm using proximal operators for these two priors. Second, we unfold the iterative algorithm to be a deep network, dubbed as proximal dehaze-net, by learning the proximal operators using convolutional neural networks. Our network combines the advantages of traditional prior-based dehazing methods and deep learning methods by incorporating haze-related prior learning into deep network. Experiments show that our method achieves state-of-the-art performance for single image dehazing.
机译:在朦胧的天气中拍摄的照片通常会蒙上白色面具,并且常常会丢失重要的细节。在本文中,我们通过学习暗通道和透射先验,提出了一种用于单图像去雾的新型深度学习方法。首先,我们使用暗通道和先验先验建立了一个用于除雾的能量模型,并针对这两个先验使用近端算子设计了迭代优化算法。其次,通过使用卷积神经网络学习近端算子,我们将迭代算法展开为一个称为近端除雾网的深层网络。我们的网络通过将与雾霾相关的先验学习整合到深度网络中,结合了传统的基于先验的去雾方法和深度学习方法的优势。实验表明,我们的方法实现了单图像去雾的最先进性能。

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