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Toward Real-World Super-Resolution via Adaptive Downsampling Models

Toward Real-World Super-Resolution via Adaptive Downsampling Models

8 September 2021
Sanghyun Son
Jaeha Kim
Wei-Sheng Lai
Ming-Husan Yang
Kyoung Mu Lee
ArXivPDFHTML

Papers citing "Toward Real-World Super-Resolution via Adaptive Downsampling Models"

7 / 7 papers shown
Title
Infrared Image Super-Resolution: Systematic Review, and Future Trends
Infrared Image Super-Resolution: Systematic Review, and Future Trends
Y. Huang
Tomo Miyazaki
Xiao-Fang Liu
S. Omachi
SupR
83
10
0
21 Feb 2025
Overcoming Distribution Mismatch in Quantizing Image Super-Resolution
  Networks
Overcoming Distribution Mismatch in Quantizing Image Super-Resolution Networks
Chee Hong
Kyoung Mu Lee
SupR
MQ
11
1
0
25 Jul 2023
Criteria Comparative Learning for Real-scene Image Super-Resolution
Criteria Comparative Learning for Real-scene Image Super-Resolution
Yukai Shi
Hao Li
Senyang Zhang
Zhi Yang
Xiao Wang
SupR
11
14
0
26 Jul 2022
Toward Real-world Image Super-resolution via Hardware-based Adaptive
  Degradation Models
Toward Real-world Image Super-resolution via Hardware-based Adaptive Degradation Models
Rui Ma
Johnathan Czernik
Xian Du
20
0
0
20 Oct 2021
Deep Unfolding Network for Image Super-Resolution
Deep Unfolding Network for Image Super-Resolution
K. Zhang
Luc Van Gool
Radu Timofte
SupR
108
535
0
23 Mar 2020
Unsupervised Learning for Real-World Super-Resolution
Unsupervised Learning for Real-World Super-Resolution
Andreas Lugmayr
Martin Danelljan
Radu Timofte
SSL
SupR
127
167
0
20 Sep 2019
Real-Time Single Image and Video Super-Resolution Using an Efficient
  Sub-Pixel Convolutional Neural Network
Real-Time Single Image and Video Super-Resolution Using an Efficient Sub-Pixel Convolutional Neural Network
Wenzhe Shi
Jose Caballero
Ferenc Huszár
J. Totz
Andrew P. Aitken
Rob Bishop
Daniel Rueckert
Zehan Wang
SupR
183
5,138
0
16 Sep 2016
1