多重退化图像的盲图像质量评价

Ehsanhosein Kalatehjari, F. Yaghmaee
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引用次数: 1

摘要

近年来,盲图像质量评估中最重要的问题之一是实现能够完全盲地预测失真图像质量的感知模型。这意味着模型应该在没有任何学习过程的情况下运行,并且尽可能少地了解它们的扭曲。以前的大多数方法都是测量单个退化图像的质量。单个降解依赖于很大程度的准确性,而它们不适合用于两个降解的组合。本文提出了一种评价模糊和去饱和复合退化的新方法。此外,研究还证明了自然图像具有规则的统计特征,因此提出的方法依赖于颜色特征。在存在失真的地方,这些特性可以被测量地修改。因此,我们提取了一些自然场景统计特征,这些特征可以在不进行任何训练的情况下预测图像质量分数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Blind image quality assessment of multi-degraded images
In recent years one of the most important problems in blind image quality assessment is to achieving perceptual model that can predict the quality of distorted images completely blind. It means the model should perform without any learning process and by as little knowledge about their distortion as possible. Most previously methods measure the quality of an image degraded by a single degradation. Single degradation relies on a great degree of accuracy while, they aren't appropriate to be performed for a combination of two degradations. In this paper a new method is proposed which is able to evaluate the degradation of combination of blur and desaturation. Moreover, it has proven that the natural images have regular statistical characteristics and thus, the proposed method relies on color characteristics. These characteristics are measurably modified where distortion exists. Thus we extract some natural scene statistic features which are enabling the prediction of the image quality score without any training process.
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