Image restoration and enhancement is a process of improving the image quality by removing degradations, such as noise, blur, and resolution degradation. Deep learning (DL) has recently been applied to image restoration and enhancement. Due to its ill-posed property, plenty of works have explored priors to facilitate training deep neural networks (DNNs). However, the importance of priors has not been systematically studied and analyzed by far in the research community. Therefore, this paper serves as the first study that provides a comprehensive overview of recent advancements of priors for deep image restoration and enhancement. Our work covers five primary contents: (1) A theoretical analysis of priors for deep image restoration and enhancement; (2) A hierarchical and structural taxonomy of priors commonly used in the DL-based methods; (3) An insightful discussion on each prior regarding its principle, potential, and applications; (4) A summary of crucial problems by highlighting the potential future directions to spark more research in the community; (5) An open-source repository that provides a taxonomy of all mentioned works and code links.
翻译:图像的恢复和增强是通过消除噪音、模糊和分辨率退化等降解而提高图像质量的一个过程。最近对图像的恢复和增强应用了深层次学习(DL),由于这些深层次的特性,许多作品都探讨了促进深层神经网络培训的前科;然而,研究界迄今尚未系统研究和分析前科的重要性。因此,本文件是第一份全面概述深层图像恢复和增强前科的最新进展的研究。我们的工作包括五个主要内容:(1) 对前科进行理论分析,以便深刻恢复和增强图像;(2) 对以前在DL方法中常用的前科进行分级和结构分类;(3) 就其原则、潜力和应用进行深入细致的讨论;(4) 通过强调今后在社区开展更多研究的潜在方向,总结关键问题;(5) 一个开放源存储库,提供所有上述作品和代码链接的分类。