An opinion-unaware blind quality assessment algorithm for multiply distorted images

Image credit: Unsplash

Abstract

The blind image quality assessment algorithms produced every year are mostly “opinion-aware” (OA). It means that they require large numbers of subjective quality scores for regression model training. Subjective quality scores are not easily available, so people are eager to design an opinion-unaware (OU) algorithm which has free subjective quality scores. Besides, the OU algorithm has greater generalization capability than the OA algorithm. Therefore, we propose an OU algorithm based on a visual codebook for multiply distorted image quality assessment. Extensive experiments conducted on the three databases demonstrate that the proposed method is superior to the existing five OU methods in terms of the coherence with the human subjective rating. The MATLAB code is available at https://tonglewang.github.io.

Publication
In Eleventh International Conference on Signal Processing Systems
Click the Cite button above to demo the feature to enable visitors to import publication metadata into their reference management software.
Create your slides in Markdown - click the Slides button to check out the example.

Supplementary notes can be added here, including code, math, and images.

Tongle Wang
Tongle Wang
Employees at Mininglamp Technology

My research interests include image quality assessment, computing advertising and reinforcement learning.