计算机科学
镜头(地质)
对偶(语法数字)
计算机视觉
人工智能
不变(物理)
利用
降级(电信)
过程(计算)
光学
物理
电信
艺术
文学类
计算机安全
数学物理
操作系统
作者
Ruikang Xu,Mingde Yao,Zhiwei Xiong
标识
DOI:10.1109/cvpr52729.2023.00881
摘要
The asymmetric dual-lens configuration is commonly available on mobile devices nowadays, which naturally stores a pair of wide-angle and telephoto images of the same scene to support realistic super-resolution (SR). Even on the same device, however, the degradation for modeling realistic SR is image-specific due to the unknown acquisition process (e.g., tiny camera motion). In this paper, we propose a zero-shot solution for dual-lens SR (ZeDuSR), where only the dual-lens pair at test time is used to learn an image-specific SR model. As such, ZeDuSR adapts itself to the current scene without using external training data, and thus gets rid of generalization difficulty. However, there are two major challenges to achieving this goal: 1) dual-lens alignment while keeping the realistic degradation, and 2) effective usage of highly limited training data. To overcome these two challenges, we propose a degradation-invariant alignment method and a degradation-aware training strategy to fully exploit the information within a single dual-lens pair. Extensive experiments validate the superiority of Ze-DuSR over existing solutions on both synthesized and real-world dual-lens datasets. The implementation code is available at https://github.com/XrKang/ZeDuSR.
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