Single image dehazing is a challenging ill-posed problem which estimates latent haze-free images from observed hazy images. Some existing deep learning based methods are devoted to improving the model performance via increasing the depth or width of convolution. The learning ability of convolutional neural network (CNN) structure is still under-explored. In this paper, a detail-enhanced attention block (DEAB) consisting of the detail-enhanced convolution (DEConv) and the content-guided attention (CGA) is proposed to boost the feature learning for improving the dehazing performance. Specifically, the DEConv integrates prior information into normal convolution layer to enhance the representation and generalization capacity. Then by using the re-parameterization technique, DEConv is equivalently converted into a vanilla convolution with NO extra parameters and computational cost. By assigning unique spatial importance map (SIM) to every channel, CGA can attend more useful information encoded in features. In addition, a CGA-based mixup fusion scheme is presented to effectively fuse the features and aid the gradient flow. By combining above mentioned components, we propose our detail-enhanced attention network (DEA-Net) for recovering high-quality haze-free images. Extensive experimental results demonstrate the effectiveness of our DEA-Net, outperforming the state-of-the-art (SOTA) methods by boosting the PSNR index over 41 dB with only 3.653 M parameters. The source code of our DEA-Net will be made available at https://github.com/cecret3350/DEA-Net.
翻译:单一图像失色是一个挑战性的问题,它估计了从观察到的模糊图像中隐含的无烟图像。一些现有的深层学习基础方法致力于通过提高变异深度或宽度来改进模型性能。进化神经网络(CNN)结构的学习能力仍然未得到充分探讨。在本文中,一个细节强化关注区(DEAB),由详细的增强变异(DEConv)和内容引导关注(CGA)组成,目的是为了促进改进变色性能的特征学习。具体地说,DEConv将先前的信息整合到正常的变异层中,以提高代表性和总体化能力。然后,通过使用再校准技术,DECon被等同地转化成一个充满无额外参数和计算成本的香味变变色图。通过给每个频道分配独特的空间重要性地图(SIM),CGAA-GA-基于C的混合组合计划将有效地整合功能,帮助升级的变异性图流。我们通过上面提到的高质量的MAA-DEA-deal 数据网络,我们建议了我们正在恢复的磁带结果。