Computationally Efficient Super-Resolution Approach for Real-World Images

Author(s):  
Vishal Chudasama ◽  
Kalpesh Prajapati ◽  
Kishor Upla
IEEE Access ◽  
2021 ◽  
Vol 9 ◽  
pp. 35834-35845
Author(s):  
Limin Xia ◽  
Jiahui Zhu ◽  
Zhimin Yu

Author(s):  
Mohammad Saeed Rad ◽  
Thomas Yu ◽  
Claudiu Musat ◽  
Hazim Kemal Ekenel ◽  
Behzad Bozorgtabar ◽  
...  

IEEE Access ◽  
2021 ◽  
Vol 9 ◽  
pp. 121167-121183
Author(s):  
Chulhee Lee ◽  
J. Yoon ◽  
J. Kim ◽  
S. Park

Author(s):  
Wei Gao ◽  
Linjie Zhou ◽  
Lvfang Tao

View synthesis (VS) for light field images is a very time-consuming task due to the great quantity of involved pixels and intensive computations, which may prevent it from the practical three-dimensional real-time systems. In this article, we propose an acceleration approach for deep learning-based light field view synthesis, which can significantly reduce calculations by using compact-resolution (CR) representation and super-resolution (SR) techniques, as well as light-weight neural networks. The proposed architecture has three cascaded neural networks, including a CR network to generate the compact representation for original input views, a VS network to synthesize new views from down-scaled compact views, and a SR network to reconstruct high-quality views with full resolution. All these networks are jointly trained with the integrated losses of CR, VS, and SR networks. Moreover, due to the redundancy of deep neural networks, we use the efficient light-weight strategy to prune filters for simplification and inference acceleration. Experimental results demonstrate that the proposed method can greatly reduce the processing time and become much more computationally efficient with competitive image quality.


Author(s):  
Kalpesh Prajapati ◽  
Vishal Chudasama ◽  
Heena Patel ◽  
Kishor Upla ◽  
Kiran Raja ◽  
...  

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