To support the application scenarios where high-resolution (HR) images are urgently needed, various single image super-resolution (SISR) algorithms are developed. However, SISR is an ill-posed inverse problem, which may bring artifacts like texture shift, blur, etc. to the reconstructed images, thus it is necessary to evaluate the quality of super-resolution images (SRIs). Note that most existing image quality assessment (IQA) methods were developed for synthetically distorted images, which may not work for SRIs since their distortions are more diverse and complicated. Therefore, in this paper, we propose a no-reference deep-learning image quality assessment method based on frequency maps because the artifacts caused by SISR algorithms are quite sensitive to frequency information. Specifically, we first obtain the high-frequency map (HM) and low-frequency map (LM) of SRI by using Sobel operator and piecewise smooth image approximation. Then, a two-stream network is employed to extract the quality-aware features of both frequency maps. Finally, the features are regressed into a single quality value using fully connected layers. The experimental results show that our method outperforms all compared IQA models on the selected three super-resolution quality assessment (SRQA) databases.
翻译:为了支持迫切需要高分辨率图像的应用情景,开发了各种单一图像超分辨率算法。然而,SISSR是一个错误的反向问题,可能给重建后的图像带来纹理转换、模糊等艺术品,因此有必要评估超分辨率图像的质量。请注意,大多数现有图像质量评估方法是为合成扭曲图像开发的,这些图像可能无法为SRI工作,因为它们的扭曲更加多样化和复杂。因此,我们在本文件中提议了一个基于频率图的不参考深学习图像质量评估方法,因为SISSR算法造成的工艺品对频率信息非常敏感。具体地说,我们首先通过使用Sobel 操作器和简洁图像近似,获得SRI高频地图和低频地图的质量。然后,使用双流网络来提取两个频率地图的质量认知特征。最后,我们根据频率地图提出了一种不参考深度的深学习图像质量评估方法,因为SISR算法对频率信息非常敏感。具体地说,我们首先通过使用SBel操作器操作器和平滑动图像近近,获得高频图像。然后,使用双流网络网络来提取两个频率地图的质量特征特征特征特征特征。最后,利用完全连接层进行单一质量评估。实验结果显示为单一质量评估。在I质量模型上的所有模型。试验结果显示。相对于高级质量模型显示。