Lightweight Single Image Super-Resolution via Efficient Mixture of Transformers and Convolutional Networks
Luyang Xiao,
Xiangyu Liao,
Chao Ren
Abstract:In this paper, we propose a Local Global Union Network (LGUN), which effectively combines the strengths of Transformers and Convolutional Networks to develop a lightweight and high-performance network suitable for Single Image Super-Resolution (SISR). Specifically, we make use of the advantages of Transformers to provide input-adaptation weighting and global context interaction. We also make use of the advantages of Convolutional Networks to include spatial inductive biases and local connectivity. In the shall… Show more
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