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No-Reference Image Quality Assessment Method Based on Visual Parameters

机译:基于视觉参数的无参考图像质量评估方法

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摘要

Recent studies on no-reference image quality assessment (NR-IQA) methods usually learn to evaluate the image quality by regressing from human subjective scores of the training samples. This study presented an NR-IQA method based on the basic image visual parameters without using human scored image databases in learning. We demonstrated that these features comprised the most basic characteristics for constructing an image and influencing the visual quality of an image. In this paper, the definitions, computational method, and relationships among these visual metrics were described. We subsequently proposed a no-reference assessment function, which was referred to as a visual parameter measurement index (VPMI), based on the integration of these visual metrics to assess image quality. It is established that the maximum of VPMI corresponds to the best quality of the color image. We verified this method using the popular assessment database—image quality assessment database (LIVE), and the results indicated that the proposed method matched better with the subjective assessment of human vision. Compared with other image quality assessment models, it is highly competitive. VPMI has low computational complexity, which makes it promising to implement in real-time image assessment systems.
机译:关于无参考图像质量评估(NR-IQA)方法的最新研究通常学会通过从训练样本的人类主观评分中回归来评估图像质量。这项研究提出了一种基于基本图像视觉参数的NR-IQA方法,无需在学习中使用人类评分的图像数据库。我们证明了这些功能是构成图像和影响图像视觉质量的最基本特征。在本文中,描述了这些视觉指标的定义,计算方法以及它们之间的关系。随后,我们基于这些视觉指标的集成来评估图像质量,提出了无参考评估功能,称为视觉参数测量指标(VPMI)。可以确定,VPMI的最大值对应于彩色图像的最佳质量。我们使用流行的评估数据库-图像质量评估数据库(LIVE)验证了该方法,结果表明该方法与人类视觉的主观评估更匹配。与其他图像质量评估模型相比,它具有很高的竞争力。 VPMI具有较低的计算复杂度,因此有望在实时图像评估系统中实现。

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