In this paper, we address the well-known image quality assessment problem but in contrast from existing approaches that predict image quality independently for every images, we propose to jointly model different images depicting the same content to improve the precision of quality estimation. This proposal is motivated by the idea that multiple distorted images can provide information to disambiguate image features related to content and quality. To this aim, we combine the feature representations from the different images to estimate a pseudo-reference that we use to enhance score prediction. Our experiments show that at test-time, our method successfully combines the features from multiple images depicting the same new content, improving estimation quality.
翻译:在本文中,我们解决了众所周知的图像质量评估问题,但与现有的方法预测独立于每个图像的图像质量不同,我们建议共同建模不同图像,描述相同内容,以提高质量评估的准确性。这个建议的动机是多个扭曲的图像可以提供信息来区分与内容和质量相关的图像特征。为此,我们组合不同图像的特征表示来估计伪参考,我们用它来增强分数预测。我们的实验表明,在测试时,我们的方法成功地结合了描述相同新内容的多个图像的特征,提高了估计质量。