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DeSRA: Detect and Delete the Artifacts of GAN-based Real-World Super-Resolution Models
Liangbin Xie1,2,3; Xintao Wang3; Xiangyu Chen1,2,4; Gen Li5; Ying Shan3; Jiantao Zhou1; Chao Dong2,4
2023-04
Conference Name2023 International Conference on Machine Learning
Conference DateJuly 23-29, 2023
Conference PlaceHawaii
PublisherML Research Press
Abstract

Image super-resolution (SR) with generative adversarial networks (GAN) has achieved great success in restoring realistic details. However, it is notorious that GAN-based SR models will inevitably produce unpleasant and undesirable artifacts, especially in practical scenarios. Previous works typically suppress artifacts with an extra loss penalty in the training phase. They only work for in-distribution artifact types generated during training. When applied in real-world scenarios, we observe that those improved methods still generate obviously annoying artifacts during inference. In this paper, we analyze the cause and characteristics of the GAN artifacts produced in unseen test data without ground-truths. We then develop a novel method, namely, DeSRA, to Detect and then “Delete” those SR Artifacts in practice. Specifically, we propose to measure a relative local variance distance from MSE-SR results and GAN-SR results, and locate the problematic areas based on the above distance and semantic-aware thresholds. After detecting the artifact regions, we develop a finetune procedure to improve GAN-based SR models with a few samples, so that they can deal with similar types of artifacts in more unseen real data. Equipped with our DeSRA, we can successfully eliminate artifacts from inference and improve the ability of SR models to be applied in real-world scenarios. The code will be available at https: //github.com/TencentARC/DeSRA.

Scopus ID2-s2.0-85174384916
Citation statistics
Document TypeConference paper
CollectionTHE STATE KEY LABORATORY OF INTERNET OF THINGS FOR SMART CITY (UNIVERSITY OF MACAU)
Faculty of Science and Technology
Corresponding AuthorChao Dong
Affiliation1.State Key Laboratory of Internet of Things for Smart City, University of Macau
2.Shenzhen Key Lab of Computer Vision and Pattern Recognition, Shenzhen Institute of Advanced Technology, Chinese Academy of Sciences
3.ARC Lab, Tencent PCG
4.Shanghai Artificial Intelligence Laboratory
5.Platform Technologies, Tencent Online Video
First Author AffilicationUniversity of Macau
Recommended Citation
GB/T 7714
Liangbin Xie,Xintao Wang,Xiangyu Chen,et al. DeSRA: Detect and Delete the Artifacts of GAN-based Real-World Super-Resolution Models[C]:ML Research Press, 2023.
APA Liangbin Xie., Xintao Wang., Xiangyu Chen., Gen Li., Ying Shan., Jiantao Zhou., & Chao Dong (2023). DeSRA: Detect and Delete the Artifacts of GAN-based Real-World Super-Resolution Models. .
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