This paper proposes a novel Attention-based Multi-Reference Super-resolution network (AMRSR) that, given a low-resolution image, learns to adaptively transfer the most similar texture from multiple reference images to the super-resolution output whilst maintaining spatial coherence. The use of multiple reference images together with attention-based sampling is demonstrated to achieve significantly improved performance over state-of-the-art reference super-resolution approaches on multiple benchmark datasets. Reference super-resolution approaches have recently been proposed to overcome the ill-posed problem of image super-resolution by providing additional information from a high-resolution reference image. Multi-reference super-resolution extends this approach by providing a more diverse pool of image features to overcome the inherent information deficit whilst maintaining memory efficiency. A novel hierarchical attention-based sampling approach is introduced to learn the similarity between low-resolution image features and multiple reference images based on a perceptual loss. Ablation demonstrates the contribution of both multi-reference and hierarchical attention-based sampling to overall performance. Perceptual and quantitative ground-truth evaluation demonstrates significant improvement in performance even when the reference images deviate significantly from the target image. The project website can be found at https://marcopesavento.github.io/AMRSR/
翻译:本文提出一个新的基于关注的多参考超分辨率网络(AMRSR),根据低分辨率图像,在保持空间一致性的同时,学会将最相似的纹理从多个参考图像随适应性地从多个参考图像转移到超分辨率输出,同时保持空间一致性。使用多个参考图像和基于关注的抽样,表明在多个基准数据集方面,与最先进的参考超分辨率方法相比,取得了显著的改进性能。参考超级分辨率方法最近被提出,通过提供高分辨率参考图像的额外信息,解决图像超分辨率的错误问题。多参考超级分辨率扩展了这一方法,提供了一个更多样化的图像特征库,以克服内在信息缺失,同时保持记忆效率。采用了新的基于关注的等级抽样方法,以学习低分辨率图像特征与基于感知损失的多参考图像之间的类似性。缩略图表明多参考和基于关注的等级抽样对总体性能的贡献。概念和定量地面结点评价表明,即使参考图像与目标图像明显偏离,其性能也有显著改善。项目网站可在 http://Asgimasto。