论文标题
使用基于高斯工艺的Cyclegan无监督对天气影响的图像的恢复
Unsupervised Restoration of Weather-affected Images using Deep Gaussian Process-based CycleGAN
论文作者
论文摘要
现有的恢复天气降解图像的方法遵循了完全监督的范式,它们需要配对的数据进行培训。但是,为天气降解收集配对的数据极具挑战性,现有方法最终接受了综合数据的培训。为了克服这个问题,我们描述了一种基于Cyclegan的深层网络的方法,从而使使用未标记的现实世界数据进行培训。具体来说,我们引入了训练周期的新损失,从而导致更有效的培训,从而导致高质量的重建。这些新损失是通过将预测的干净图像和原始干净图像的潜在空间嵌入通过深层过程中获得的。这使Cyclegan体系结构能够更有效地将知识从一个域(天气降低)转移到另一个域(清洁)。我们证明,所提出的方法可以有效地应用于不同的恢复任务,例如脱落,脱落和开口,并且比相当大的余量优于其他无监督技术(利用基于天气的特征)。
Existing approaches for restoring weather-degraded images follow a fully-supervised paradigm and they require paired data for training. However, collecting paired data for weather degradations is extremely challenging, and existing methods end up training on synthetic data. To overcome this issue, we describe an approach for supervising deep networks that are based on CycleGAN, thereby enabling the use of unlabeled real-world data for training. Specifically, we introduce new losses for training CycleGAN that lead to more effective training, resulting in high-quality reconstructions. These new losses are obtained by jointly modeling the latent space embeddings of predicted clean images and original clean images through Deep Gaussian Processes. This enables the CycleGAN architecture to transfer the knowledge from one domain (weather-degraded) to another (clean) more effectively. We demonstrate that the proposed method can be effectively applied to different restoration tasks like de-raining, de-hazing and de-snowing and it outperforms other unsupervised techniques (that leverage weather-based characteristics) by a considerable margin.