论文标题
通过层次对比度学习在朦胧的天气中恢复视力
Restoring Vision in Hazy Weather with Hierarchical Contrastive Learning
论文作者
论文摘要
对于各种计算机视觉应用,在朦胧天气条件下的图像恢复被称为单图像飞机。近年来,基于深度学习的方法取得了成功。但是,现有图像去悬式方法通常忽略了神经网络中特征的层次结构,而无法充分利用其关系。为此,我们提出了一种有效的图像飞行方法,称为层次对比度脱去(HCD),该方法基于特征融合和对比度学习策略。 HCD由分层飞行网络(HDN)和新型的分层对比损失(HCL)组成。具体而言,HDN中的核心设计是一个分层交互模块,该模块利用多尺度激活来层次修改特征响应。为了与HDN的培训合作,我们提出了HCL,该HCL对层次配对的示例进行对比学习,从而促进了雾霾的去除。在公共数据集,居住,榛子和茂密的黑客上进行的广泛实验表明,HCD在PSNR,SSIM和实现更好的视觉质量方面的量化量优于最先进的方法。
Image restoration under hazy weather condition, which is called single image dehazing, has been of significant interest for various computer vision applications. In recent years, deep learning-based methods have achieved success. However, existing image dehazing methods typically neglect the hierarchy of features in the neural network and fail to exploit their relationships fully. To this end, we propose an effective image dehazing method named Hierarchical Contrastive Dehazing (HCD), which is based on feature fusion and contrastive learning strategies. HCD consists of a hierarchical dehazing network (HDN) and a novel hierarchical contrastive loss (HCL). Specifically, the core design in the HDN is a hierarchical interaction module, which utilizes multi-scale activation to revise the feature responses hierarchically. To cooperate with the training of HDN, we propose HCL which performs contrastive learning on hierarchically paired exemplars, facilitating haze removal. Extensive experiments on public datasets, RESIDE, HazeRD, and DENSE-HAZE, demonstrate that HCD quantitatively outperforms the state-of-the-art methods in terms of PSNR, SSIM and achieves better visual quality.