Author_Institution :
VIPS Lab., Xidian Univ., Xi´an, China
Abstract :
Universal blind image quality assessment (IQA) metrics that can work for various distortions are of great importance for image processing systems, because neither ground truths are available nor the distortion types are aware all the time in practice. Existing state-of-the-art universal blind IQA algorithms are developed based on natural scene statistics (NSS). Although NSS-based metrics obtained promising performance, they have some limitations: 1) they use either the Gaussian scale mixture model or generalized Gaussian density to predict the nonGaussian marginal distribution of wavelet, Gabor, or discrete cosine transform coefficients. The prediction error makes the extracted features unable to reflect the change in nonGaussianity (NG) accurately. The existing algorithms use the joint statistical model and structural similarity to model the local dependency (LD). Although this LD essentially encodes the information redundancy in natural images, these models do not use information divergence to measure the LD. Although the exponential decay characteristic (EDC) represents the property of natural images that large/small wavelet coefficient magnitudes tend to be persistent across scales, which is highly correlated with image degradations, it has not been applied to the universal blind IQA metrics; and 2) all the universal blind IQA metrics use the same similarity measure for different features for learning the universal blind IQA metrics, though these features have different properties. To address the aforementioned problems, we propose to construct new universal blind quality indicators using all the three types of NSS, i.e., the NG, LD, and EDC, and incorporating the heterogeneous property of multiple kernel learning (MKL). By analyzing how different distortions affect these statistical properties, we present two universal blind quality assessment models, NSS global scheme and NSS two-step scheme. In the proposed metrics: 1) we exploit the NG of natural images usi- g the original marginal distribution of wavelet coefficients; 2) we measure correlations between wavelet coefficients using mutual information defined in information theory; 3) we use features of EDC in universal blind image quality prediction directly; and 4) we introduce MKL to measure the similarity of different features using different kernels. Thorough experimental results on the Laboratory for Image and Video Engineering database II and the Tampere Image Database2008 demonstrate that both metrics are in remarkably high consistency with the human perception, and overwhelm representative universal blind algorithms as well as some standard full reference quality indexes for various types of distortions.
Keywords :
Gaussian distribution; Gaussian processes; correlation methods; discrete cosine transforms; feature extraction; image coding; learning (artificial intelligence); statistical analysis; wavelet transforms; EDC; Gabor transform coefficient; Gaussian scale mixture model; Laboratory for Image and Video Engineering database II; MKL; NSS global scheme; NSS two-step scheme; Tampere Image Database2008; correlation measurement; discrete cosine transform coefficient; distortion types; exponential decay characteristic; feature extraction; generalized Gaussian density; image processing systems; information redundancy; information theory; joint statistical model; local dependency; multiple kernel learning; natural scene statistics; nonGaussian marginal distribution prediction; statistical properties; structural similarity measurement; universal blind IQA algorithms; universal blind image quality assessment metrics; universal blind image quality prediction; wavelet transform coefficient; Feature extraction; Image coding; Image quality; Measurement; Mutual information; Transform coding; Wavelet transforms; Exponential decay characteristic (EDC); image quality assessment (IQA); multiple kernel learning (MKL); natural scene statistics (NSS);