The statistical regularities of natural images, referred to as natural scene statistics, play an important role in no-reference image quality assessment. However, it has been widely acknowledged that screen content images (SCIs), which are typically computer generated, do not hold such statistics. Here we make the first attempt to learn the statistics of SCIs, based upon which the quality of SCIs can be effectively determined. The underlying mechanism of the proposed approach is based upon the wild assumption that the SCIs, which are not physically acquired, still obey certain statistics that could be understood in a learning fashion. We empirically show that the statistics deviation could be effectively leveraged in quality assessment, and the proposed method is superior when evaluated in different settings. Extensive experimental results demonstrate the Deep Feature Statistics based SCI Quality Assessment (DFSS-IQA) model delivers promising performance compared with existing NR-IQA models and shows a high generalization capability in the cross-dataset settings. The implementation of our method is publicly available at https://github.com/Baoliang93/DFSS-IQA.
翻译:自然图像(称为自然场景统计)的统计规律性在不参考图像质量评估中起着重要作用,然而,人们广泛承认,通常由计算机生成的屏幕内容图像(SCI)并不具有这种统计数据。我们首先尝试了解SIC统计数据,在此基础上可以有效地确定SIC质量。拟议方法的基本机制是基于一种狂妄的假设,即没有实际获得的SIC仍然遵守某些可以学习的方式理解的统计数据。我们从经验上表明,在质量评估中可以有效地利用统计数据的偏差,在评估不同环境时,拟议的方法比较优异。广泛的实验结果显示基于SCI质量评估的深地貌统计模型(DFSS-IQA)与现有的NR-IQA模型相比表现良好,并显示交叉数据设置环境中的高度普遍化能力。我们的方法的实施在https://github.com/Baoliang93/DFSS-IQA中公开提供。