Visual surveillance technology is an indispensable functional component of advanced traffic management systems. It has been applied to perform traffic supervision tasks, such as object detection, tracking and recognition. However, adverse weather conditions, e.g., fog, haze and mist, pose severe challenges for video-based transportation surveillance. To eliminate the influences of adverse weather conditions, we propose a dual attention and dual frequency-guided dehazing network (termed DADFNet) for real-time visibility enhancement. It consists of a dual attention module (DAM) and a high-low frequency-guided sub-net (HLFN) to jointly consider the attention and frequency mapping to guide haze-free scene reconstruction. Extensive experiments on both synthetic and real-world images demonstrate the superiority of DADFNet over state-of-the-art methods in terms of visibility enhancement and improvement in detection accuracy. Furthermore, DADFNet only takes $6.3$ ms to process a 1,920 * 1,080 image on the 2080 Ti GPU, making it highly efficient for deployment in intelligent transportation systems.
翻译:视觉监控技术是先进交通管理系统中不可缺少的功能组件,其被应用于交通监管任务中,例如目标检测、跟踪和识别。然而,不良的天气条件,例如雾、霾和薄雾,给基于视频的交通监视带来了严峻的挑战。为了消除不利天气条件的影响,我们提出了一种双重关注和双频率引导去雾网络(称为DADFNet),用于实时的可视化增强。它由一个双重关注模块(DAM)和一个高低频率引导子网(HLFN)组成,共同考虑关注和频率映射,以引导无雾场景的重建。对于合成和真实世界图像的广泛实验表明,相对于现有的先进方法,DADFNet在能见度增强和检测准确率方面表现优异。此外,DADFNet仅需在2080 Ti GPU上处理一个1920 * 1080的图像即可完成耗时6.3毫秒,使其在智能交通系统的部署中高效运行。