论文标题
深层掩盖生成网络:叠加图像的背景修复的统一框架
Deep-Masking Generative Network: A Unified Framework for Background Restoration from Superimposed Images
论文作者
论文摘要
从包含嘈杂层的叠加图像中恢复干净的背景是图像恢复的经典任务类别的常见症结,例如图像反射删除,图像驱动和图像飞行。这些任务通常是由于图像中噪声层的多样化和复杂的外观模式而单独制定和解决的。在这项工作中,我们介绍了深层掩蔽生成网络(DMGN),该网络是从叠加图像中恢复背景的统一框架,并且能够应对不同类型的噪声。我们提出的DMGN遵循了一个粗到精细的生成过程:首先并行生成粗糙的背景图像和噪声图像,然后进一步利用噪声图像来完善背景图像以获得更高质量的背景图像。特别是,我们将新颖的残留深层掩蔽单元设计为我们DMGN的核心操作单元,以增强有效信息并通过学习控球掩模来控制信息流以控制信息流。通过迭代使用此残留的深层掩蔽单元,我们提出的DMGN能够逐渐生成高质量的背景图像和嘈杂的图像。此外,我们提出了一种两管齐的策略,以有效利用生成的噪声图像作为对比的线索来促进背景图像的完善。跨三个典型的图像背景修复任务进行的广泛实验,包括删除图像反射,雨牛排的去除和图像脱掩,表明我们的DMGN始终优于专门为每个任务设计的最先进方法。
Restoring the clean background from the superimposed images containing a noisy layer is the common crux of a classical category of tasks on image restoration such as image reflection removal, image deraining and image dehazing. These tasks are typically formulated and tackled individually due to the diverse and complicated appearance patterns of noise layers within the image. In this work we present the Deep-Masking Generative Network (DMGN), which is a unified framework for background restoration from the superimposed images and is able to cope with different types of noise. Our proposed DMGN follows a coarse-to-fine generative process: a coarse background image and a noise image are first generated in parallel, then the noise image is further leveraged to refine the background image to achieve a higher-quality background image. In particular, we design the novel Residual Deep-Masking Cell as the core operating unit for our DMGN to enhance the effective information and suppress the negative information during image generation via learning a gating mask to control the information flow. By iteratively employing this Residual Deep-Masking Cell, our proposed DMGN is able to generate both high-quality background image and noisy image progressively. Furthermore, we propose a two-pronged strategy to effectively leverage the generated noise image as contrasting cues to facilitate the refinement of the background image. Extensive experiments across three typical tasks for image background restoration, including image reflection removal, image rain steak removal and image dehazing, show that our DMGN consistently outperforms state-of-the-art methods specifically designed for each single task.