Achieving subjective and objective quality assessment of underwater images is of high significance in underwater visual perception and image/video processing. However, the development of underwater image quality assessment (UIQA) is limited for the lack of comprehensive human subjective user study with publicly available dataset and reliable objective UIQA metric. To address this issue, we establish a large-scale underwater image dataset, dubbed UID2021, for evaluating no-reference UIQA metrics. The constructed dataset contains 60 multiply degraded underwater images collected from various sources, covering six common underwater scenes (i.e. bluish scene, bluish-green scene, greenish scene, hazy scene, low-light scene, and turbid scene), and their corresponding 900 quality improved versions generated by employing fifteen state-of-the-art underwater image enhancement and restoration algorithms. Mean opinion scores (MOS) for UID2021 are also obtained by using the pair comparison sorting method with 52 observers. Both in-air NR-IQA and underwater-specific algorithms are tested on our constructed dataset to fairly compare the performance and analyze their strengths and weaknesses. Our proposed UID2021 dataset enables ones to evaluate NR UIQA algorithms comprehensively and paves the way for further research on UIQA. Our UID2021 will be a free download and utilized for research purposes at: https://github.com/Hou-Guojia/UID2021.
翻译:水下图像的主观和客观质量评估在水下视觉感知和图像/视频处理中具有非常重要的意义,然而,水下图像质量评估(UIQA)的制定有限,因为缺乏全面的人类主观用户研究,没有提供公开的数据集和可靠的客观的UIQA标准。为了解决这一问题,我们建立了一个大型水下图像数据集,称为UID2021, 用于评价UIQA指标的无参考参考值。构建的数据集包含从各种来源收集的60倍退化水下图像,涵盖六种共同的水下场(即:bluish现场、bluish-绿色现场、绿绿绿地场、Hazy现场、低光色场景和涡轮场),而且缺乏相应的900种质量改进版本,因为采用了15种最先进的水下图像增强和恢复算法。通过对52个观察者进行对等比较方法,也获得了UID21的暗中意见评分。在我们的建筑数据评估上测试了20种特定的水下算法,以比较其业绩并分析其强弱之处和弱之处。我们提出的UID20IA数据库用于全面研究。