As a highly ill-posed issue, single image super-resolution (SISR) has been widely investigated in recent years. The main task of SISR is to recover the information loss caused by the degradation procedure. According to the Nyquist sampling theory, the degradation leads to aliasing effect and makes it hard to restore the correct textures from low-resolution (LR) images. In practice, there are correlations and self-similarities among the adjacent patches in the natural images. This paper considers the self-similarity and proposes a hierarchical image super-resolution network (HSRNet) to suppress the influence of aliasing. We consider the SISR issue in the optimization perspective, and propose an iterative solution pattern based on the half-quadratic splitting (HQS) method. To explore the texture with local image prior, we design a hierarchical exploration block (HEB) and progressive increase the receptive field. Furthermore, multi-level spatial attention (MSA) is devised to obtain the relations of adjacent feature and enhance the high-frequency information, which acts as a crucial role for visual experience. Experimental result shows HSRNet achieves better quantitative and visual performance than other works, and remits the aliasing more effectively.
翻译:作为高度不良的问题,近年来对单一图像超级分辨率(SISR)进行了广泛调查,其主要任务是恢复降解程序造成的信息损失。根据Nyquist抽样理论,降解会导致别名效应,使从低分辨率(LR)图像中恢复正确质谱变得困难。在实践中,自然图像相邻的相邻部分之间有相互关系和自异之处。本文考虑了自我相似性,并提议建立一个高等级图像超级分辨率网络(HSRNet)以抑制别名的影响。我们从优化角度考虑SISR问题,并根据半赤道分裂(HQS)方法提出迭接式解决方案模式。要用当地图像来探索正确的质谱,我们设计一个等级勘探区(HEB)并逐步增加可接受域。此外,多层次的空间关注(MSA)旨在获取相邻特征的关系,并强化高频信息(HSRNet),作为视觉体验的关键作用。实验结果显示HSRNet在质量和视觉方面比其他工作更出色地展示了质量和视觉表现。