Image dehazing is an active topic in low-level vision, and many image dehazing networks have been proposed with the rapid development of deep learning. Although these networks' pipelines work fine, the key mechanism to improving image dehazing performance remains unclear. For this reason, we do not target to propose a dehazing network with fancy modules; rather, we make minimal modifications to popular U-Net to obtain a compact dehazing network. Specifically, we swap out the convolutional blocks in U-Net for residual blocks with the gating mechanism, fuse the feature maps of main paths and skip connections using the selective kernel, and call the resulting U-Net variant gUNet. As a result, with a significantly reduced overhead, gUNet is superior to state-of-the-art methods on multiple image dehazing datasets. Finally, we verify these key designs to the performance gain of image dehazing networks through extensive ablation studies.
翻译:图像解层是低层视觉中一个活跃的话题,许多图像解层网络随着深层学习的快速发展被提出来。虽然这些网络的管道运作良好,但改善图像解层性能的关键机制仍然不清楚。 因此,我们的目标不是提出一个带有花哨模块的解层网络;相反,我们只对广受欢迎的U-Net做最低限度的修改,以获得一个紧凑解层网络。具体地说,我们把U-Net的革命区块换成残余区块,与加固机制交换,用选择性内核连接主路径的地貌图和跳过连接,并将由此产生的U-Net变异格UNet称为GUNet。结果,由于管理管理率大幅下降,GUNet优于多层图像解层数据元件方面的最先进的方法。最后,我们通过广泛的和解研究,将这些关键设计与图像解层网络的性能收益进行验证。