论文标题

用于超高分辨率图像恢复的全局本地逐步生成网络

Global-Local Stepwise Generative Network for Ultra High-Resolution Image Restoration

论文作者

Feng, Xin, Ji, Haobo, Pei, Wenjie, Chen, Fanglin, Lu, Guangming

论文摘要

虽然对图像背景恢复的研究已从定期降级图像的规模恢复中取得了显着的进步,但由于计算复杂性和记忆使用情况的爆炸爆炸以及注释数据的不足,恢复超高分辨率(例如4K)图像仍然是一项极具挑战性的任务。在本文中,我们提出了一种用于超高分辨率图像恢复的新型模型,该模型称为全局逐步生成网络(GLSGN),该模型采用涉及四个恢复途径的逐步恢复策略:三个局部途径和一项全球途径。本地途径着重于以局部但高分辨率的图像贴片进行细粒度进行图像恢复,而全局途径则在比例缩减但完整的图像上执行图像恢复,以在全球视图中为局部途径提供线索,包括语义和噪声模式。为了平滑这四个途径之间的相互协作,我们的GLSGN旨在确保在低级内容,感知注意力,恢复强度和高级语义方面的四个方面的跨道路一致性。作为这项工作的另一个主要贡献,我们还介绍了迄今为止的第一个超高分辨率数据集,以拆除反射和降雨的删除,其中包括4,670个现实世界和合成图像。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,删除图像雨条和图像脱掩,表明我们的GLSGN始终胜过最先进的方法。

While the research on image background restoration from regular size of degraded images has achieved remarkable progress, restoring ultra high-resolution (e.g., 4K) images remains an extremely challenging task due to the explosion of computational complexity and memory usage, as well as the deficiency of annotated data. In this paper we present a novel model for ultra high-resolution image restoration, referred to as the Global-Local Stepwise Generative Network (GLSGN), which employs a stepwise restoring strategy involving four restoring pathways: three local pathways and one global pathway. The local pathways focus on conducting image restoration in a fine-grained manner over local but high-resolution image patches, while the global pathway performs image restoration coarsely on the scale-down but intact image to provide cues for the local pathways in a global view including semantics and noise patterns. To smooth the mutual collaboration between these four pathways, our GLSGN is designed to ensure the inter-pathway consistency in four aspects in terms of low-level content, perceptual attention, restoring intensity and high-level semantics, respectively. As another major contribution of this work, we also introduce the first ultra high-resolution dataset to date for both reflection removal and rain streak removal, comprising 4,670 real-world and synthetic images. Extensive experiments across three typical tasks for image background restoration, including image reflection removal, image rain streak removal and image dehazing, show that our GLSGN consistently outperforms state-of-the-art methods.

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