There is an increasing consensus that the design and optimization of low light image enhancement methods need to be fully driven by perceptual quality. With numerous approaches proposed to enhance low-light images, much less work has been dedicated to quality assessment and quality optimization of low-light enhancement. In this paper, to close the gap between enhancement and assessment, we propose a loop enhancement framework that produces a clear picture of how the enhancement of low-light images could be optimized towards better visual quality. In particular, we create a large-scale database for QUality assessment Of The Enhanced LOw-Light Image (QUOTE-LOL), which serves as the foundation in studying and developing objective quality assessment measures. The objective quality assessment measure plays a critical bridging role between visual quality and enhancement and is further incorporated in the optimization in learning the enhancement model towards perceptual optimally. Finally, we iteratively perform the enhancement and optimization tasks, enhancing the low-light images continuously. The superiority of the proposed scheme is validated based on various low-light scenes. The database as well as the code will be available.
翻译:人们日益一致认为,低光图像增强方法的设计和优化需要完全受感知质量的驱动。由于提出了许多提高低光图像的方法,因此用于低光增强质量评估和质量优化的工作要少得多。在本文件中,为了缩小增强与评估之间的差距,我们提议了一个环形增强框架,清楚说明如何优化低光图像的增强工作,以提高视觉质量。特别是,我们建立了一个大型数据库,用于对增强的LOw-Light图像进行质量评估(QUOTE-LOL),作为研究和制定客观质量评估措施的基础。客观质量评估措施在视觉质量质量与增强质量之间起着重要的桥梁作用,并进一步被纳入优化的提升模型,使之达到最佳的理念。最后,我们反复地执行增强和优化低光图像的任务,不断提升低光图像。拟议方案的优越性在各种低光场上得到验证。数据库和代码也将可供使用。