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Full-Reference Quality Assessment for Screen Content Images Based on the Concept of Global-Guidance and Local-Adjustment

机译:基于全球指导概念和本地调整的屏幕内容图像的全参考质量评估

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摘要

Benefiting from the development of multimedia communication terminals, the visual content presented to people on mobile devices is no longer a single form, but contains text, natural images, and other computer-generated graphics, which is called screen content images (SCIs). Inspired by the different visual stimuli that text and images bring to human eyes and the concept of global-guidance and local-adjustment, we design a novel full-reference image quality assessment (IQA) model using the structural features of the text, the perceptual features of pictures, and a score integration model (SPSIM) to evaluate SCIs quality. Firstly, we split the SCIs into textual and pictorial regions through a fully convolutional network (FCN) to conduct separate analyses. For textual regions, we take advantage of narrow edge extensions and high edge steps as structural features to compute the textual score. For pictorial regions, we extract the just noticeable difference (JND) features, which measure the human eye's ability to detect distortion as perceptual features to calculate the pictorial score. Finally, an innovative score integration method based on the global-guidance and local-adjustment is designed to better analyze the relationship between the above regional scores and the whole global SCIs score. Abundant experiments in SCIs databases have shown that the SPSIM model can achieve better consistency with the human eyes system (HVS) in predicting the visual quality of SCIs.
机译:受益于多媒体通信终端的发展,向移动设备上的人们呈现的视觉内容不再是单个形式,而是包含文本,自然图像和其他计算机生成的图形,其称为屏幕内容图像(SCI)。灵感来自不同的视觉刺激,文本和图像带来了人眼和全球指导概念和本地调整,我们使用文本的结构特征设计了一种新的全参考图像质量评估(IQA)模型,感知图片的特征,以及评分集成模型(SPSIM)来评估SCIS质量。首先,我们通过完全卷积的网络(FCN)将SCI分成文本和图形区域来进行单独的分析。对于文本区域,我们利用窄边延伸和高边级步骤作为结构特征以计算文本分数。对于图形区域,我们提取刚刚明显的差异(JND)功能,该特征测量人眼检测失真作为感知功能以计算图形分数的能力。最后,基于全球指导和本地调整的创新分数集成方法旨在更好地分析上述区域分数与整个全球SCI之间的关系。 SCIS数据库中的丰富实验表明,SPSIM模型可以通过预测SCI的视觉质量来实现与人眼系统(HV)更好的一致性。

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