基于结构分析的屏幕内容图像质量盲评价方法

Guanghui Yue, Chunping Hou, Weisi Lin
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引用次数: 2

摘要

现有的屏幕内容图像盲评价器主要是基于学习的,需要大量具有人类意见分数的训练图像。然而,现有数据库的规模很小,而且大量生成人类意见评分既费时又费力。在这项研究中,我们提出了一种新的盲式质量评估器。具体而言,该方法首先计算变形图像与翻译图像在四个方向上的梯度相似度,以估计图像中最明显的结构畸变。考虑到边缘区域更容易被扭曲,然后计算尺度间梯度相似度作为加权图。最后,将梯度相似图与加权图相结合,推导出该方法。实验结果证明了该方法在公共SCI数据库上的有效性和有效性。
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Blind Quality Evaluator for Screen Content Images via Analysis of Structure
Existing blind evaluators for screen content images (SCIs) are mainly learning-based and require a number of training images with co-registered human opinion scores. However, the size of existing databases is small, and it is labor-, time-consuming and expensive to largely generate human opinion scores. In this study, we propose a novel blind quality evaluator without training. Specifically, the proposed method first calculates the gradient similarity between a distorted image and its translated versions in four directions to estimate the structural distortion, the most obvious distortion in SCIs. Given that the edge region is easier to be distorted, the inter-scale gradient similarity is then calculated as the weighting map. Finally, the proposed method is derived by incorporating the gradient similarity map with the weighting map. Experimental results demonstrate its effectiveness and efficiency on a public available SCI database.
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