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No-Reference Quality Assessment for Screen Content Images Based on Hybrid Region Features Fusion

机译:基于混合区域特征融合的屏幕内容图像无参考质量评估

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Research on screen content images (SCIs) attracts more attention as they are highly applied to image-and video-centric applications on mobile and other devices. It is important to develop an efficient image-quality assessment (IQA) method for SCIs because IQA can guide and optimize various image-processing methods for SCIs and improve user experience. In this paper, we propose a no-reference objective assessment model for SCIs including SCIs segmentation and the analysis of local and global perceptual feature representations. Since the human visual system is highly sensitive to sharp edges that are commonly encountered in SCIs, we utilize the variance of local standard deviation, which is a noise robust index to distinguish the sharp edge patches (SEPes) and non-SEPes of SCIs. For SEPes, we perform two kinds of feature extractions. First, the entropy and contrast features are extracted with a gray-level co-occurrence matrix, which are highly perceptive of microstructural change. Second, the local phase coherence is utilized to capture the loss in sharpness. Then, average pooling is adopted to fuse features obtained from all of the SEPes to represent the local features. We further combine local features with global features that are derived using the BRISQUE method as the hybrid region (HR)-based features. Finally, a regression module is learned using support vector regression to train the mapping function that maps HR-based features to subjective quality scores. Experimental results on the screen image-quality assessment database show that the proposed method can achieve better performance in visual-quality prediction for SCIs than the performance achieved by state-of-the-art methods.
机译:屏幕内容图像(SCI)的研究由于在移动设备和其他设备上以图像和视频为中心的应用而得到了高度的应用,因此吸引了更多的关注。开发有效的SCI图像质量评估(IQA)方法非常重要,因为IQA可以指导和优化SCI的各种图像处理方法并改善用户体验。在本文中,我们提出了一种针对SCI的无参考客观评估模型,包括SCI分割以及对局部和全局感知特征表示的分析。由于人类视觉系统对SCI中常见的尖锐边缘高度敏感,因此我们利用局部标准偏差的方差,这是一种抗噪指标,可以区分SCI的尖锐边缘斑块(SEPes)和非SEPes。对于SEP,我们执行两种特征提取。首先,利用灰度共现矩阵提取熵和对比度特征,该矩阵对微观结构的变化具有很高的感知力。其次,利用局部相位相干性来捕获清晰度损失。然后,采用平均池合并从所有SEP获得的特征以表示局部特征。我们进一步将使用BRISQUE方法派生的局部特征与全局特征相结合,作为基于混合区域(HR)的特征。最后,使用支持向量回归来学习回归模块,以训练将基于HR的特征映射到主观质量得分的映射函数。屏幕图像质量评估数据库上的实验结果表明,与通过最新方法获得的性能相比,该方法在SCI的视觉质量预测中可以获得更好的性能。

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