We propose an enhanced multi-scale network, dubbed GridDehazeNet+, for single image dehazing. It consists of three modules: pre-processing, backbone, and post-processing. The trainable pre-processing module can generate learned inputs with better diversity and more pertinent features as compared to those derived inputs produced by hand-selected pre-processing methods. The backbone module implements multi-scale estimation with two major enhancements: 1) a novel grid structure that effectively alleviates the bottleneck issue via dense connections across different scales; 2) a spatial-channel attention block that can facilitate adaptive fusion by consolidating dehazing-relevant features. The post-processing module helps to reduce the artifacts in the final output. To alleviate domain shift between network training and testing, we convert synthetic data to so-called translated data with the distribution shaped to match that of real data. Moreover, to further improve the dehazing performance in real-world scenarios, we propose a novel intra-task knowledge transfer mechanism that leverages the distilled knowledge from synthetic data to assist the learning process on translated data. Experimental results indicate that the proposed GridDehazeNet+ outperforms the state-of-the-art methods on several dehazing benchmarks. The proposed dehazing method does not rely on the atmosphere scattering model, and we provide a possible explanation as to why it is not necessarily beneficial to take advantage of the dimension reduction offered by this model, even if only the dehazing results on synthetic images are concerned.
翻译:我们提出一个强化的多尺度网络,称为Gribbed Grid DehazeNet+,用于单一图像解密。它由三个模块组成:预处理、主干和后处理。经过训练的预处理模块可以产生与手工选择的预处理方法产生的衍生投入相比,更多样化和更相关的内容。主干模块可以实施多尺度估计,其中有两个重大改进:(1) 一个新的网格结构,通过不同规模的密集连接有效缓解瓶颈问题;(2) 空间通道关注块,通过整合与拆解相关功能,促进适应性融合。后处理模块有助于减少最终产出中的文物。为了减轻网络培训和测试之间的域变换,我们将合成数据转换为所谓的翻译数据,其分布与真实数据相匹配。此外,为了进一步改善现实世界情景中的淡化性性表现,我们提议了一个新型的模型知识传输机制,仅利用合成数据中不断浓缩的知识来协助翻译数据学习过程。实验结果表明,拟议的GridDehazeNet系统不是通过我们提供的一些方法,而是通过我们提供的一种降低大气层的方法,因此可能采用的一种方法。