No-reference Image Quality Assessment Based on Structural and Luminance Information.

MMM 2016: Proceedings, Part I, of the 22nd International Conference on MultiMedia Modeling - Volume 9516(2016)

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摘要
Research on no-reference image quality assessment IQA aims to develop a computational model simulating the human perception of image quality accurately and automatically without any prior information about the reference clean image signals. In this paper, we introduce a novel no-reference IQA metric, based on the analysis of structural degradation and luminance changes. Since the human visual system HVS is highly sensitive to structural distortion, we encode the image structural information as the local binary pattern LBP distribution. Besides, image quality is also affected by luminance changes, which cannot be captured properly by LBP threshold mechanism. Hence, the distribution of normalized luminance magnitudes is also included in the proposed IQA metric. Extensive experiments conducted on two large public image databases have demonstrated the effectiveness and robustness of the proposed metric in comparison with the relevant state-of-the-art metrics.
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关键词
Image quality assessment, Blind image quality assessment, No-reference, Human vision system (HVS), Local binary pattern (LBP), Structural distortion
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