Deep learning-based single image deraining (SID) with unpaired information is of immense importance, as relying on paired synthetic data often limits their generality and scalability in real-world applications. However, we noticed that direct employ of unpaired adversarial learning and cycle-consistency constraints in the SID task is insufficient to learn the underlying relationship from rainy input to clean outputs, since the domain knowledge between rainy and rain-free images is asymmetrical. To address such limitation, we develop an effective unpaired SID method which explores mutual properties of the unpaired exemplars by a contrastive learning manner in a GAN framework, named as CDR-GAN. The proposed method mainly consists of two cooperative branches: Bidirectional Translation Branch (BTB) and Contrastive Guidance Branch (CGB). Specifically, BTB takes full advantage of the circulatory architecture of adversarial consistency to exploit latent feature distributions and guide transfer ability between two domains by equipping it with bidirectional mapping. Simultaneously, CGB implicitly constrains the embeddings of different exemplars in rain space by encouraging the similar feature distributions closer while pushing the dissimilar further away, in order to better help rain removal and image restoration. During training, we explore several loss functions to further constrain the proposed CDR-GAN. Extensive experiments show that our method performs favorably against existing unpaired deraining approaches on both synthetic and real-world datasets, even outperforms several fully-supervised or semi-supervised models.
翻译:然而,我们注意到,在SID任务中直接采用不善的对抗性学习和周期一致性限制,不足以了解从降雨投入到清洁产出之间的根本关系,因为雨中和无雨图像之间的领域知识是不对称的。为了应对这种局限性,我们开发了一种有效的不完善的SID方法,通过以CDR-GAN命名的GAN框架的对比性学习方式,探索未成熟的合成数据的共同性质,这往往限制了它们的普遍性和在现实世界应用中的可扩展性。然而,我们注意到,在SID任务中直接采用直接使用不善的对抗性学习和周期性制约性制约性制约性制约性制约性制约性制约性制约性制约性制约性制约性能,因为雨中无雨中和无雨中图像之间的领域知识是不对称的。 同时,CGB还隐含了在GRA在更深的GLOF上对不固定的嵌入性支持性支持性嵌入性功能,在雨中,在更接近的阵势中,在更深层空间中,我们进一步展示了更深层的ADRMLLL 。