Reduced-Reference Image Quality Assessment Using Divisive Normalization-Based Image Representation

Qiang Li, Zhou Wang
2009 IEEE Journal on Selected Topics in Signal Processing  
Reduced-reference image quality assessment (RRIQA) methods estimate image quality degradations with partial information about the "perfect-quality" reference image. In this paper, we propose an RRIQA algorithm based on a divisive normalization image representation. Divisive normalization has been recognized as a successful approach to model the perceptual sensitivity of biological vision. It also provides a useful image representation that significantly improves statistical independence for
more » ... ral images. By using a Gaussian scale mixture statistical model of image wavelet coefficients, we compute a divisive normalization transformation (DNT) for images and evaluate the quality of a distorted image by comparing a set of reduced-reference statistical features extracted from DNT-domain representations of the reference and distorted images, respectively. This leads to a generic or general-purpose RRIQA method, in which no assumption is made about the types of distortions occurring in the image being evaluated. The proposed algorithm is cross-validated using two publicly-accessible subject-rated image databases (the UT-Austin LIVE database and the Cornell-VCL A57 database) and demonstrates good performance across a wide range of image distortions. Index Terms-Divisive normalization, image quality assessment, reduced-reference image quality assessment (RRIQA), perceptual image representation, statistical image modeling.
doi:10.1109/jstsp.2009.2014497 fatcat:2m3qdjkhjfg3hlphhux5numhq4