Removing adverse weather conditions like rain, fog, and snow from images is a challenging problem. Although the current recovery algorithms targeting a specific condition have made impressive progress, it is not flexible enough to deal with various degradation types. We propose an efficient and compact image restoration network named DAN-Net (Degradation-Adaptive Neural Network) to address this problem, which consists of multiple compact expert networks with one adaptive gated neural. A single expert network efficiently addresses specific degradation in nasty winter scenes relying on the compact architecture and three novel components. Based on the Mixture of Experts strategy, DAN-Net captures degradation information from each input image to adaptively modulate the outputs of task-specific expert networks to remove various adverse winter weather conditions. Specifically, it adopts a lightweight Adaptive Gated Neural Network to estimate gated attention maps of the input image, while different task-specific experts with the same topology are jointly dispatched to process the degraded image. Such novel image restoration pipeline handles different types of severe weather scenes effectively and efficiently. It also enjoys the benefit of coordinate boosting in which the whole network outperforms each expert trained without coordination. Extensive experiments demonstrate that the presented manner outperforms the state-of-the-art single-task methods on image quality and has better inference efficiency. Furthermore, we have collected the first real-world winter scenes dataset to evaluate winter image restoration methods, which contains various hazy and snowy images snapped in winter. Both the dataset and source code will be publicly available.
翻译:清除雨水、雾和从图像中降雪等恶劣天气条件是一个具有挑战性的问题。虽然目前针对特定条件的恢复算法取得了令人印象深刻的进展,但是它不够灵活,不足以应对各种退化类型。我们提议建立一个高效和紧凑的图像恢复网络,名为DAN-Net(Degradation-Adapative神经网络),以解决这一问题,该网络由多个紧凑的专家网络组成,并配有适应性门形神经元组成。一个单一的专家网络高效地处理恶劣冬季景点的具体退化问题,依靠紧凑架构和三个新构件。根据专家混合战略,丹网从每个输入图像中捕获退化信息,以适应性的方式调整特定任务专家网络的产出,以消除各种不利的冬季气候气候条件。具体地说,它采用一个轻巧的适应性神经网络来估计输入图像的注意图示,同时将不同任务特定专家的专家联合派遣处理退化的图像。这种新图像修复管道有效和高效地处理不同种类的恶劣天气景象。它还得益于协调的提升整个网络的退化信息,每个网络超越了真实的冬季图像源,没有经过训练的冬季数据质量。 将用更精确的方法来公开地展示。