Image Quality Evaluation Based on Gradient, Visual Saliency, and Color Information

Hua-wen Chang, Xiao-Dong Bi, Cheng-Yang Du, Chang-Wei Mao, Ming-hui Wang
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引用次数: 2

Abstract

This paper proposes an image quality evaluation (IQE) metric by considering gradient, visual saliency, and color information. Visual saliency and gradient information are two types of effective features for quality evaluation research. Different regions within an image are not uniformly important for IQE. Visual saliency can find the most attractive regions to the human visual system in a given image. These attractive image regions are more strongly correlated with image quality results. In addition, the degradation of gradient information is related to the structure distortion which is a very important factor for image quality. However, the two types of features cannot accurately evaluate the color distortion of images. In order to evaluate chromatic distortion, this paper proposes the color similarity which is measured in the YIQ color space. The computation of the proposed method begins with the similarity calculation of local gradient information, visual saliency, and color information. Then, the final quality score is obtained by the standard deviation on each similarity component. The experimental results on five benchmark databases (i.e., CSIQ, IVC, LIVE, TID2013, and TID2008) show that the proposed IQE method performs better than other methods in the correlation with subjective quality judgment.
基于梯度、视觉显著性和颜色信息的图像质量评价
本文提出了一种考虑梯度、视觉显著性和颜色信息的图像质量评价(IQE)度量。视觉显著性和梯度信息是质量评价研究的两种有效特征。图像中的不同区域对IQE的重要性并不一致。视觉显著性可以在给定的图像中找到对人类视觉系统最具吸引力的区域。这些有吸引力的图像区域与图像质量结果的相关性更强。此外,梯度信息的退化与结构畸变有关,而结构畸变是影响图像质量的重要因素。然而,这两类特征并不能准确评价图像的色彩失真。为了评估色彩失真,本文提出了在YIQ色彩空间中测量的色彩相似度。该方法的计算从局部梯度信息、视觉显著性信息和颜色信息的相似度计算开始。然后,通过各相似分量的标准差得到最终的质量分数。在CSIQ、IVC、LIVE、TID2013和TID2008五个基准数据库上的实验结果表明,本文提出的IQE方法在与主观质量判断的相关性方面优于其他方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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