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Research on Single Image Dehazing Enhancement Method Based on CycleGAN

机译:基于CycleGAN的单图像去雾增强方法研究

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Although researchers have made great progress in image dehazing recently, there are still great challenges in balancing the suitable universality and dehazing accuracy. In this paper, we propose the dark channel prior cycle dehaze network (DCP-Cycle-Dehaze) to single image dehazing. This network is based on CycleGAN, which adds DCP loss based on dark channel prior knowledge and improved cycle perceptual loss to achieve image dehazing function. DCP-Cycle-Dehaze mainly enhance the dehazing capacity of model by enhancing the sensitivity of network for haze features during training. It further improves the performance of the CycleGAN network framework in image dehazing tasks, and makes the network still reach the accuracy of supervised training without unsupervised training. We conduct simulation experiments on four representative data sets: O-HAZE, I-HAZE, RESIDE and D-Hazy. The experimental results show that DCP-Cycle-Dehaze network we proposed has achieved very good results in outdoor environment, the results on the O-HAZE dataset exceed the best results of NTIRE2018; moreover, it also has better results on the indoor environment. The experimental results prove the effectiveness of our method from a quantitative and qualitative perspective.
机译:尽管研究人员最近在图像去雾方面取得了长足的进步,但是在平衡适当的通用性和去雾精度方面仍然存在巨大的挑战。在本文中,我们提出了暗通道先验循环除雾网络(DCP-Cycle-Dehaze)来对单个图像进行除雾。该网络基于CycleGAN,它基于暗信道先验知识增加了DCP损失,并改善了循环感知损失,以实现图像去雾功能。 DCP-Cycle-Dehaze主要通过增强训练过程中网络对雾度特征的敏感性来增强模型的除雾能力。它进一步提高了CycleGAN网络框架在图像去雾任务中的性能,并使得在没有无监督训练的情况下,网络仍然可以达到有监督训练的精度。我们对四个代表性数据集进行了模拟实验:O-HAZE,I-HAZE,RESIDE和D-Hazy。实验结果表明,我们提出的DCP-Cycle-Dehaze网络在室外环境下取得了很好的效果,O-HAZE数据集的结果超过了NTIRE2018的最佳结果;而且,在室内环境下也有较好的效果。实验结果从定量和定性的角度证明了我们方法的有效性。

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