Large-factor single image super-resolution based on back projection and residual block

Author(s):  
Jia Qi Geng ◽  
Dong Xiao Zhang*
Electronics ◽  
2019 ◽  
Vol 8 (3) ◽  
pp. 339
Author(s):  
Yan Liu ◽  
Guangrui Zhang ◽  
Hai Wang ◽  
Wei Zhao ◽  
Min Zhang ◽  
...  

In this paper, we propose an efficient multibranch residual network for single image super-resolution. Based on the idea of aggregated transformations, the split-transform-merge strategy is exploited to implement the multibranch architecture in an easy, extensible way. By this means, both the number of parameters and the time complexity are significantly reduced. In addition, to ensure the high-performance of super-resolution reconstruction, the residual block is modified and simplified with reference to the enhanced deep super-resolution network (EDSR) model. Moreover, our developed method possesses advantages of flexibility and extendibility, which are helpful to establish a specific network according to practical demands. Experimental results on both the Diverse 2K (DIV2K) and other standard datasets show that the proposed method can achieve a good performance in comparison with EDSR under the same number of convolution layers.


2021 ◽  
Vol 2021 ◽  
pp. 1-13
Author(s):  
Kai Huang ◽  
Wenhao Wang ◽  
Cheng Pang ◽  
Rushi Lan ◽  
Ji Li ◽  
...  

Convolution neural networks facilitate the significant process of single image super-resolution (SISR). However, most of the existing CNN-based models suffer from numerous parameters and excessively deeper structures. Moreover, these models relying on in-depth features commonly ignore the hints of low-level features, resulting in poor performance. This paper demonstrates an intriguing network for SISR with cascading and residual connections (CASR), which alleviates these problems by extracting features in a small net called head module via the strategies based on the depthwise separable convolution and deformable convolution. Moreover, we also include a cascading residual block (CAS-Block) for the upsampling process, which benefits the gradient propagation and feature learning while easing the model training. Extensive experiments conducted on four benchmark datasets demonstrate that the proposed method is superior to the latest SISR methods in terms of quantitative indicators and realistic visual effects.


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