Blind Image Quality Assessment Using Natural Scene Statistics in the Gradient Domain

AMS '14 Proceedings of the 2014 8th Asia Modelling Symposium(2014)

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摘要
An efficient, general-purpose, blind/no-reference image quality assessment (NR-IQA) algorithm based on natural image statistics in the gradient domain is proposed in this letter. We call it REFIINGS (REFerrenceless Image Integrity Notator using Gradient Statistics). The gradient of an image describes its geometric features which can be easily captured by the human visual system (HVS). In the literature, gradient-relevant methods have gotten big success in full-reference (FR) IQA and reduced-reference (RR) IQA. Inspired by these, we extend it to NR-IQA. REFIINGS utilizes the parameters of generalized Laplace distribution as part of its features, and the parameters are directly computed using given formulas which avoid parameters estimation. REFIINGS is computationally quite efficient which makes it an attractive option for the use in real-time blind assessment of visual quality. When tested on the benchmark image database, our method is quite promising.
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关键词
natural image statistics,benchmark image database,refiings,gradient domain,statistics,human visual system,geometric features,nr-iqa algorithm,visual databases,generalized laplace distribution,image quality assessment, gradient domain, natural scene statistics, no reference, generalized laplace distribution,full-reference iqa,reduced-reference iqa,natural scene statistics,blind image quality assessment,visual quality real-time blind assessment,feature extraction,no reference,gradient methods,image quality assessment,fr iqa,referenceless image integrity notator using gradient statistics,hvs,rr iqa,nonlinear distortion,image quality,histograms,entropy,visualization,transform coding
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