SRFormer: Permuted Self-Attention for Single Image Super-Resolution
Nankai University · Waseda Bioscience Research Institute in Singapore
Abstract
Previous works have shown that increasing the window size for Transformer-based image super-resolution models (e.g., SwinIR) can significantly improve the model performance but the computation overhead is also considerable. In this paper, we present SRFormer, a simple but novel method that can enjoy the benefit of large window self-attention but introduces even less computational burden. The core of our SRFormer is the permuted self-attention (PSA), which strikes an appropriate balance between the channel and spatial information for self-attention. Our PSA is simple and can be easily applied to existing super-resolution networks based on window self-attention. Without any bells and whistles, we show that our…
Citation impact
- FWCI
- 34.36
- Percentile
- 100%
- References
- 0
Authors
6Topics & keywords
- Computer science
- Computation
- Window (computing)
- Overhead (engineering)
- Superresolution
- Simple (philosophy)
- Image resolution
- Code (set theory)
- Sustainable cities and communities