No-reference noisy image quality assessment incorporating features of entropy, gradient, and kurtosis
Heng YAO, Ben MA, Mian ZOU, Dong XU, Jincao YAO
No-reference noisy image quality assessment incorporating features of entropy, gradient, and kurtosis
Noise is the most common type of image distortion affecting human visual perception. In this paper, we propose a no-reference image quality assessment (IQA) method for noisy images incorporating the features of entropy, gradient, and kurtosis. Specifically, image noise estimation is conducted in the discrete cosine transform domain based on skewness invariance. In the principal component analysis domain, kurtosis feature is obtained by statistically counting the significant differences between images with and without noise. In addition, both the consistency between the entropy and kurtosis features and the subjective scores are improved by combining them with the gradient coefficient. Support vector regression is applied to map all extracted features into an integrated scoring system. The proposed method is evaluated in three mainstream databases (i.e., LIVE, TID2013, and CSIQ), and the results demonstrate the superiority of the proposed method according to the Pearson linear correlation coefficient which is the most significant indicator in IQA.
Noisy image quality assessment / Noise estimation / Kurtosis / Human visual system / Support vector regression
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