论文标题

DAQE:通过利用Defocus的固有特征来增强压缩图像的质量

DAQE: Enhancing the Quality of Compressed Images by Exploiting the Inherent Characteristic of Defocus

论文作者

Xing, Qunliang, Xu, Mai, Deng, Xin, Guo, Yichen

论文摘要

图像散焦是由镜片的光学畸变引起的图像形成物理学固有的,提供了有关图像质量的大量信息。不幸的是,压缩图像的现有质量增强方法忽略了defocus的固有特征,从而导致性能较低。本文发现,在压缩图像中,明显的散落区域具有更好的压缩质量,并且两个具有不同散焦值的区域具有多种纹理模式。这些观察激发了我们的散发性质量增强(DAQE)方法。具体而言,我们提出了一种基于DAQE方法的基于新型动态区域的深度学习体系结构,该体系结构在两个方面考虑了压缩图像的区域散焦差异。 (1)DAQE方法采用更少的计算资源来提高散落区域和更多资源的质量,以提高其他地区的质量; (2)DAQE方法学会了分别增强具有不同散焦值的区域的各种纹理模式,从而可以实现特定于纹理的增强。广泛的实验验证了我们DAQE方法优于最先进的方法,从质量增强和资源节省方面。

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.

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