CVNov 27, 2014

A statistical reduced-reference method for color image quality assessment

arXiv:1411.7655v115 citations
Originality Incremental advance
AI Analysis

This work addresses the under-explored issue of color in reduced-reference image quality assessment for applications in image processing and computer vision, representing an incremental improvement.

The authors tackled the problem of color image quality assessment by proposing a reduced-reference method based on natural scene statistics and multivariate generalized Gaussian distribution, achieving good consistency with human visual perception on the TID 2008 benchmark and FRTV Phase I validation process.

Although color is a fundamental feature of human visual perception, it has been largely unexplored in the reduced-reference (RR) image quality assessment (IQA) schemes. In this paper, we propose a natural scene statistic (NSS) method, which efficiently uses this information. It is based on the statistical deviation between the steerable pyramid coefficients of the reference color image and the degraded one. We propose and analyze the multivariate generalized Gaussian distribution (MGGD) to model the underlying statistics. In order to quantify the degradation, we develop and evaluate two measures based respectively on the Geodesic distance between two MGGDs and on the closed-form of the Kullback Leibler divergence. We performed an extensive evaluation of both metrics in various color spaces (RGB, HSV, CIELAB and YCrCb) using the TID 2008 benchmark and the FRTV Phase I validation process. Experimental results demonstrate the effectiveness of the proposed framework to achieve a good consistency with human visual perception. Furthermore, the best configuration is obtained with CIELAB color space associated to KLD deviation measure.

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