We propose an enhanced multi-scale network, dubbed GridDehazeNet+, for single image dehazing. The proposed dehazing method does not rely on the Atmosphere Scattering Model (ASM), and an explanation as to why it is not necessarily performing the dimension reduction offered by this model is provided. GridDehazeNet+ 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. Due to domain shift, the model trained on synthetic data may not generalize well on real data. To address this issue, we shape the distribution of synthetic data to match that of real data, and use the resulting translated data to finetune our network. We also propose a novel intra-task knowledge transfer mechanism that can memorize and take advantage of synthetic domain knowledge to assist the learning process on the translated data. Experimental results demonstrate that the proposed method outperforms the state-of-the-art on several synthetic dehazing datasets, and achieves the superior performance on real-world hazy images after finetuning.
翻译:我们提出一个强化的多尺度网络,称为Gribbed GridDehazeNet+,用于单一图像解密。拟议脱色方法并不依赖于大气散射模型(ASM),而是要解释为什么它不一定执行该模型提供的尺寸降幅。GridDehazeNet+由三个模块组成:预处理、主干和后处理。可培训的预处理模块可以产生学习性投入,与手选的预处理方法产生的衍生投入相比,具有更好的多样性和更加相关的特性。主干模块实施多尺度估算,同时有两项重大改进:(1) 新的电网结构,通过不同尺度的密集连接有效缓解瓶颈问题;(2) 空间通道关注块,通过整合与脱色相关的特性,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。由于域变换,经过培训的合成数据模型可能无法很好地概括真实数据。为了解决这个问题,我们调整合成数据的分发方式,以匹配真实数据,通过不同规模的连接新版图像,并使用由此而实现的高级数据转换过程,从而将数据转换为我们内部数据流流流流化的模型网络。