Single image dehazing algorithm based on generative adversarial network

Donghui Zhao, Bo Mo
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Abstract

This paper proposes a kind of generative adversarial network which is used to remove the haze for single image. In this paper, the generator uses U-Net as the backbone, and in order to effectively fuse the feature of different scales between the non-adjacent layers of the generator, a dense linking module which based on back-projection is used in the generator. In this paper, a kind of enhancement strategy which based on boosting strategy is used to improve the effectiveness of skip connection between the encoder and the decoder in the generator model. In order to evaluate the effect of haze removing, the proposed model is trained on the RESIDE and evaluated on the SOTS. The experiment proves that our method has advantages in both qualitative comparison and quantitative assessment.
基于生成对抗网络的单幅图像去雾算法
本文提出了一种用于单幅图像去雾的生成对抗网络。本文以U-Net为骨干,为了有效融合非相邻层之间不同尺度的特征,在生成器中使用了基于反投影的密集链接模块。本文采用一种基于升压策略的增强策略来提高发生器模型中编码器和解码器之间的跳变连接的有效性。为了评估雾霾去除的效果,该模型在live上进行了训练,并在SOTS上进行了评估。实验证明,该方法在定性比较和定量评价两方面都具有优势。
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