IEEE Trans Image Process. 2021;30:5463-5476. doi: 10.1109/TIP.2021.3084750. Epub 2021 Jun 9.
In this paper, we quest the capability of transferring the quality of natural scene images to the images that are not acquired by optical cameras (e.g., screen content images, SCIs), rooted in the widely accepted view that the human visual system has adapted and evolved through the perception of natural environment. Here, we develop the first unsupervised domain adaptation based no reference quality assessment method for SCIs, leveraging rich subjective ratings of the natural images (NIs). In general, it is a non-trivial task to directly transfer the quality prediction model from NIs to a new type of content (i.e., SCIs) that holds dramatically different statistical characteristics. Inspired by the transferability of pair-wise relationship, the proposed quality measure operates based on the philosophy of improving the transferability and discriminability simultaneously. In particular, we introduce three types of losses which complementarily and explicitly regularize the feature space of ranking in a progressive manner. Regarding feature discriminatory capability enhancement, we propose a center based loss to rectify the classifier and improve its prediction capability not only for source domain (NI) but also the target domain (SCI). For feature discrepancy minimization, the maximum mean discrepancy (MMD) is imposed on the extracted ranking features of NIs and SCIs. Furthermore, to further enhance the feature diversity, we introduce the correlation penalization between different feature dimensions, leading to the features with lower rank and higher diversity. Experiments show that our method can achieve higher performance on different source-target settings based on a light-weight convolution neural network. The proposed method also sheds light on learning quality assessment measures for unseen application-specific content without the cumbersome and costing subjective evaluations.
在本文中,我们探究了将自然场景图像的质量转移到非光学相机获取的图像(例如,屏幕内容图像,SCIs)的能力,这是基于这样一种广泛接受的观点,即人类视觉系统已经通过对自然环境的感知而适应和进化。在这里,我们开发了第一个基于无参考的自然图像(NIs)丰富主观评分的屏幕内容图像(SCIs)的无监督域自适应质量评估方法。一般来说,直接将质量预测模型从 NIs 转移到具有明显不同统计特征的新类型的内容(即 SCIs)是一项具有挑战性的任务。受成对关系可转移性的启发,所提出的质量度量基于同时提高可转移性和可区分性的原理。特别是,我们引入了三种类型的损失,它们以互补且显式的方式逐步规范排序的特征空间。关于特征区分能力增强,我们提出了一种基于中心的损失,以纠正分类器并提高其预测能力,不仅针对源域(NI),而且针对目标域(SCI)。关于特征差异最小化,最大均值差异(MMD)被施加到提取的 NIs 和 SCIs 的排序特征上。此外,为了进一步增强特征多样性,我们引入了不同特征维度之间的相关性惩罚,导致具有较低排名和更高多样性的特征。实验表明,我们的方法可以在基于轻量级卷积神经网络的不同源-目标设置下实现更高的性能。该方法还为学习特定于未见应用的内容的质量评估指标提供了启示,而无需繁琐且昂贵的主观评估。