Image defocus is inherent in the physics of image formation caused by the optical aberration of lenses, providing plentiful information on image quality. Unfortunately, existing quality enhancement approaches for compressed images neglect the inherent characteristic of defocus, resulting in inferior performance. This paper finds that in compressed images, significantly defocused regions have better compression quality, and two regions with different defocus values possess diverse texture patterns. These observations motivate our defocus-aware quality enhancement (DAQE) approach. Specifically, we propose a novel dynamic region-based deep learning architecture of the DAQE approach, which considers the regionwise defocus difference of compressed images in two aspects. (1) The DAQE approach employs fewer computational resources to enhance the quality of significantly defocused regions and more resources to enhance the quality of other regions; (2) The DAQE approach learns to separately enhance diverse texture patterns for regions with different defocus values, such that texture-specific enhancement can be achieved. Extensive experiments validate the superiority of our DAQE approach over state-of-the-art approaches in terms of quality enhancement and resource savings.
翻译:图像脱焦是透镜光学畸变引起的图像形成物理学所固有的,提供了关于图像质量的丰富信息; 不幸的是,现有压缩图像质量提高方法忽视了降低焦距的固有特征,导致业绩低下; 本文发现,在压缩图像中,显著减少重点的区域的压缩质量较高,而两个具有不同突出值的区域具有不同的纹理模式; 这些观测促使我们采取脱焦距质量提高(DAQE)方法。 具体地说,我们提出了一种基于DAQE方法具有活力的新动态的区域深层次学习结构,该方法认为压缩图像在两个方面在区域上不突出重点:(1) DAQE方法使用较少计算资源,以提高显著减少重点区域的质量,并增加资源,以提高其他区域的质量; (2) DAQE方法学会分别加强具有不同重点值的区域不同的纹理模式,从而实现针对具体纹理的增强。 广泛实验证实,我们的DAQE方法在质量提高质量和资源节约方面优于最新方法。</s>