Han Wensheng, Zhu Hong, Qi Chenghui, Li Jingsi, Zhang Dengyin
School of Communication and Information Engineering, Nanjing University of Posts and Telecommunications, Nanjing 210003, China.
School of Internet of Things, Nanjing University of Posts and Telecommunications, Nanjing 210003, China.
Sensors (Basel). 2022 Mar 15;22(6):2257. doi: 10.3390/s22062257.
Deep learning-based image dehazing methods have made great progress, but there are still many problems such as inaccurate model parameter estimation and preserving spatial information in the U-Net-based architecture. To address these problems, we propose an image dehazing network based on the high-resolution network, called DeHRNet. The high-resolution network originally used for human pose estimation. In this paper, we make a simple yet effective modification to the network and apply it to image dehazing. We add a new stage to the original network to make it better for image dehazing. The newly added stage collects the feature map representations of all branches of the network by up-sampling to enhance the high-resolution representations instead of only taking the feature maps of the high-resolution branches, which makes the restored clean images more natural. The final experimental results show that DeHRNet achieves superior performance over existing dehazing methods in synthesized and natural hazy images.
基于深度学习的图像去雾方法取得了很大进展,但仍存在许多问题,如模型参数估计不准确以及在基于U-Net的架构中保留空间信息等问题。为了解决这些问题,我们提出了一种基于高分辨率网络的图像去雾网络,称为DeHRNet。高分辨率网络最初用于人体姿态估计。在本文中,我们对该网络进行了简单而有效的修改,并将其应用于图像去雾。我们在原始网络中添加了一个新阶段,使其更适合图像去雾。新添加的阶段通过上采样收集网络所有分支的特征图表示,以增强高分辨率表示,而不是仅采用高分辨率分支的特征图,这使得恢复的清晰图像更加自然。最终实验结果表明,DeHRNet在合成和自然模糊图像上比现有去雾方法具有更优越的性能。