论文标题

FD-GAN:带有融合式歧义器的生成对抗网络,用于单图像

FD-GAN: Generative Adversarial Networks with Fusion-discriminator for Single Image Dehazing

论文作者

Dong, Yu, Liu, Yihao, Zhang, He, Chen, Shifeng, Qiao, Yu

论文摘要

最近,卷积神经网络(CNN)在单图中取得了极大的改进,并在研究中引起了很多关注。大多数现有基于学习的飞机方法并非完全端到端,它仍然遵循传统的飞行过程:首先估计中等变速箱和大气光,然后根据大气散射模型恢复无雾图像。但是,实际上,由于缺乏先验和约束,很难精确地估算这些中间参数。不准确的估计进一步降低了去向的性能,从而导致伪影,颜色失真和雾霾去除不足。为了解决这个问题,我们提出了一个完全端到端的生成对抗网络,该网络使用融合式 - 歧义器(FD-GAN)进行图像飞机。借助提出的融合歧义器,将频率信息作为其他先验,我们的模型可以生成更自然和逼真的降落图像,而颜色失真较少,伪影较少。此外,我们综合了一个大型培训数据集,包括各种室内和室外朦胧的图像,以提高性能,并揭示,对于基于学习的Dhazing方法,该性能严格受到培训数据的影响。实验表明,我们的方法在公共合成数据集和现实世界图像上都达到了最先进的性能,并具有更令人愉悦的降临结果。

Recently, convolutional neural networks (CNNs) have achieved great improvements in single image dehazing and attained much attention in research. Most existing learning-based dehazing methods are not fully end-to-end, which still follow the traditional dehazing procedure: first estimate the medium transmission and the atmospheric light, then recover the haze-free image based on the atmospheric scattering model. However, in practice, due to lack of priors and constraints, it is hard to precisely estimate these intermediate parameters. Inaccurate estimation further degrades the performance of dehazing, resulting in artifacts, color distortion and insufficient haze removal. To address this, we propose a fully end-to-end Generative Adversarial Networks with Fusion-discriminator (FD-GAN) for image dehazing. With the proposed Fusion-discriminator which takes frequency information as additional priors, our model can generator more natural and realistic dehazed images with less color distortion and fewer artifacts. Moreover, we synthesize a large-scale training dataset including various indoor and outdoor hazy images to boost the performance and we reveal that for learning-based dehazing methods, the performance is strictly influenced by the training data. Experiments have shown that our method reaches state-of-the-art performance on both public synthetic datasets and real-world images with more visually pleasing dehazed results.

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