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KADID-10k: A Large-scale Artificially Distorted IQA Database

机译:Kadid-10K:大规模人为扭曲的IQA数据库

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Current artificially distorted image quality assessment (IQA) databases are small in size and limited in content. Larger IQA databases that are diverse in content could benefit the development of deep learning for IQA. We create two datasets, the Konstanz Artificially Distorted Image quality Database (KADID-10k) and the Konstanz Artificially Distorted Image quality Set (KADIS-700k). The former contains 81 pristine images, each degraded by 25 distortions in 5 levels. The latter has 140,000 pristine images, with 5 degraded versions each, where the distortions are chosen randomly. We conduct a subjective IQA crowdsourcing study on KADID-10k to yield 30 degradation category ratings (DCRs) per image. We believe that the annotated set KADID-10k, together with the unlabelled set KADIS-700k, can enable the full potential of deep learning based IQA methods by means of weakly-supervised learning.
机译:当前人为扭曲的图像质量评估(IQA)数据库的大小小,内容的限制。内容多样化的较大的IQA数据库可以使IQA的深度学习的发展受益。我们创建了两个数据集,Konstanz人为扭曲的图像质量数据库(Kadid-10K)和Konstanz人为扭曲的图像质量集(Kadis-700K)。前者含有81个原始图像,每个图像在5个水平中达到25个扭曲。后者具有140,000个原始图像,每个版本有5个劣化版本,其中随机选择失真。我们对Kadid-10K进行主观IQA众包学习,每张图像产生30个降级类别评级(DCR)。我们认为,通过弱监督学习,注释的集合锁定锁定-10k可以实现基于深度学习的IQA方法的全部潜力。

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