Multi-Scale Multi-Stage Single Image Super-Resolution Reconstruction Algorithm Based on Transformer

Wei Wang, Yinfang Zhu, D. Ding, Jing Li, Yuxiang Luo
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Abstract

In this paper, creatively combining Transformer with image super-resolution reconstruction, we proposes a multi-scale multi-stage single image super-resolution reconstruction algorithm based on Transformer (MSTN). The algorithm uses Transformer as a feature sharing module, thus it realizes network parameter sharing, dynamically focuses on the correlation between feature information of adjacent stages, and then extracts the high-frequency texture information embedded in the current stage features from the feature information learned in the previous stage, which achieves a coarse-to-fine enhancement of image reconstruction. Experiments show that our method can not only per-form better image super-resolution reconstruction compared with other advanced methods, but also reduce the network parameters to a great extent.
基于变压器的多尺度多阶段单图像超分辨率重建算法
本文创造性地将Transformer与图像超分辨率重建相结合,提出了一种基于Transformer的多尺度多阶段单图像超分辨率重建算法(MSTN)。该算法采用Transformer作为特征共享模块,实现网络参数共享,动态关注相邻阶段特征信息之间的相关性,然后从前一阶段学习到的特征信息中提取嵌入在当前阶段特征中的高频纹理信息,实现图像重建的从粗到精增强。实验表明,与其他先进的方法相比,该方法不仅可以实现更好的图像超分辨率重建,而且可以在很大程度上减少网络参数。
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