AIM 2019 Challenge on Constrained Super-Resolution: Methods and Results
Kai Zhang
Shuhang Gu
Radu Timofte
Zheng Hui
Xiumei Wang
Xinbo Gao
Dongliang Xiong
Shuai Liu
Ruipeng Gang
Nan Nan
LI
Xueyi Zou
Ning Kang
Zhan-Han Wang
Hang Xu
Chaofeng Wang
Zheng Li
Linlin Wang
Jun Shi
Wenyu Sun
Zhiqiang Lang
Jiangtao Nie
Wei Wei
Lei Zhang
Y. Niu
Peijin Zhuo
Xiangzhen Kong
Long Sun
Wenhao Wang

Abstract
This paper reviews the AIM 2019 challenge on constrained example-based single image super-resolution with focus on proposed solutions and results. The challenge had 3 tracks. Taking the three main aspects (i.e., number of parameters, inference/running time, fidelity (PSNR)) of MSRResNet as the baseline, Track 1 aims to reduce the amount of parameters while being constrained to maintain or improve the running time and the PSNR result, Tracks 2 and 3 aim to optimize running time and PSNR result with constrain of the other two aspects, respectively. Each track had an average of 64 registered participants, and 12 teams submitted the final results. They gauge the state-of-the-art in single image super-resolution.
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