HCT:用于超分辨率的cnn -变压器混合网络

Jiabin Zhang, Xiaoru Wang, Han Xia, Xiaolong Li
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引用次数: 0

摘要

最近,一些计算机视觉任务已经开始采用基于变压器的方法,并取得了很好的结果。在图像恢复中使用完全基于变压器的架构比现有的CNN方法获得了更好的性能,但现有的视觉变压器缺乏高分辨率图像的可扩展性,这意味着变压器在图像恢复任务中的利用率不足。我们提出了一种混合架构(HCT),使用CNN和变压器来提高图像恢复。HCT由变压器和CNN分支组成。通过对两个分支的充分整合,增强了网络参数共享和局部信息聚合的能力,同时也增强了网络对全局信息的整合能力,最终达到提高图像恢复效果的目的。我们提出的变压器分支采用了一种空间融合自适应注意力模型,该模型混合了局部和全局注意力,提高了图像恢复效果,同时降低了计算成本。大量实验表明,HCT在超分辨率任务中取得了令人满意的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HCT: Hybrid CNN-Transformer Networks for Super-Resolution
Recently, several computer vision tasks have begun to adopt transformer-based approaches with promising results. Using a completely transformer-based architecture in image recovery achieves better performance than the existing CNN approach, but the existing vision transformers lack the scalability for high-resolution images, which means that transformers are underutilized in image restoration tasks. We propose a hybrid architecture (HCT) that uses both CNN and transformer to improve image restoration. HCT consists of transformer and CNN branches. By fully integrating the two branches, we strengthen the network's ability of parameter sharing and local information aggregation, and also increase the network's ability to integrate global information, and finally achieve the purpose of improving the image recovery effect. Our proposed transformer branch uses a spatial fusion adaptive attention model that blends local and global attention improving image restoration while reducing computing costs. Extensive experiments show that HCT achieves competitive results in super-resolution tasks.
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