KADID-10k: A Large-scale Artificially Distorted IQA Database | IEEE Conference Publication | IEEE Xplore

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


Abstract:

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 b...Show More

Abstract:

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.
Date of Conference: 05-07 June 2019
Date Added to IEEE Xplore: 24 June 2019
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Conference Location: Berlin, Germany
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I. Introduction

Objective image quality assessment (IQA), i.e., to automatically estimate the perceptual quality of a distorted image, has been a long-standing research topic. Objective IQA methods are divided into three categories based on the availability of pristine reference images: full-reference IQA (FR-IQA), reduced-reference IQA (RR-IQA), and no-reference IQA (NR-IQA). To develop and evaluate these methods, a number of benchmark databases have been proposed, some of which are compared in Table I.

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