旋转等变任意尺度图像超分辨率。

IF 18.6
Qi Xie, Jiahong Fu, Zongben Xu, Deyu Meng
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引用次数: 0

摘要

任意尺度图像超分辨率(ASISR)是近年来计算机视觉领域的一个热门课题,其目的是实现低分辨率输入图像的任意尺度高分辨率恢复。该任务通过两个基本模块,即基于深度网络的编码器和隐式神经表示(INR)模块,将图像表示为连续隐式函数来实现。尽管取得了显著的进展,但这种高度病态设置的一个关键挑战是,许多常见的几何图案,如重复纹理、边缘或形状,在低分辨率图像中严重扭曲和变形,自然导致在高分辨率恢复中出现意想不到的伪影。因此,在ASISR网络中嵌入旋转等方差是必要的,因为已经广泛证明,这种增强可以使恢复忠实地保持输入图像下几何图案的原始方向和结构完整性。基于此,本研究尝试构建一种旋转等变ASISR方法。具体来说,我们精心设计了INR和编码器模块的基本架构,结合了超越传统ASISR网络的固有旋转等方差能力。通过这种改进,ASISR网络第一次实现了从输入到输出端到端的旋转等方差。我们还提供了一个坚实的理论分析来评估其固有的等方差误差,证明了其嵌入这种等方差结构的固有性质。在模拟和真实数据集上进行的实验证明了该方法的优越性。我们还验证了所提出的框架可以很容易地以即插即用的方式集成到当前的ASISR方法中,以进一步提高其性能。我们的代码可在https://github.com/XieQi2015/Equivariant-ASISR上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rotation Equivariant Arbitrary-scale Image Super-Resolution.

The arbitrary-scale image super-resolution (ASISR), a recent popular topic in computer vision, aims to achieve arbitrary-scale high-resolution recoveries from a low-resolution input image. This task is realized by representing the image as a continuous implicit function through two fundamental modules, a deep-network-based encoder and an implicit neural representation (INR) module. Despite achieving notable progress, a crucial challenge of such a highly ill-posed setting is that many common geometric patterns, such as repetitive textures, edges, or shapes, are seriously warped and deformed in the low-resolution images, naturally leading to unexpected artifacts appearing in their high-resolution recoveries. Embedding rotation equivariance into the ASISR network is thus necessary, as it has been widely demonstrated that this enhancement enables the recovery to faithfully maintain the original orientations and structural integrity of geometric patterns underlying the input image. Motivated by this, we make efforts to construct a rotation equivariant ASISR method in this study. Specifically, we elaborately redesign the basic architectures of INR and encoder modules, incorporating intrinsic rotation equivariance capabilities beyond those of conventional ASISR networks. Through such amelioration, the ASISR network can, for the first time, be implemented with end-to-end rotational equivariance maintained from input to output. We also provide a solid theoretical analysis to evaluate its intrinsic equivariance error, demonstrating its inherent nature of embedding such an equivariance structure. The superiority of the proposed method is substantiated by experiments conducted on both simulated and real datasets. We also validate that the proposed framework can be readily integrated into current ASISR methods in a plug & play manner to further enhance their performance. Our code is available at https://github.com/XieQi2015/Equivariant-ASISR.

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