An imaging-inspired no-reference underwater color image quality assessment metric

作者:Wang, Yan; Li, Na; Li, Zongying; Gu, Zhaorui; Zheng, Haiyong*; Zheng, Bing; Sun, Mengnan
来源:Computers & Electrical Engineering, 2018, 70: 904-913.
DOI:10.1016/j.compeleceng.2017.12.006

摘要

Underwater color image quality assessment (IQA) plays an important role in analysis and applications of underwater imaging as well as image processing algorithms. This paper presents a new metric inspired by the imaging analysis on underwater absorption and scattering characteristics, dubbed the CCF. This metric is feature-weighted with a combination of colorfulness index, contrast index and fog density index, which can quantify the color loss caused by absorption, the blurring caused by forward scattering and the foggy caused by backward scattering, respectively. Then multiple linear regression is used to calculate three weighted coefficients. A new underwater image database is built to illustrate the performance of the proposed metric. Experimental results show a strong correlation between the proposed metric and mean opinion score (MOS). The proposed CCF metric outperforms many of the leading atmospheric IQA metrics, and it can effectively assess the performance of underwater image enhancement and image restoration methods.