Image Super Resolution
Image super-resolution (SR) aims to enhance the resolution of low-resolution images, improving their visual quality and detail. Current research heavily focuses on leveraging deep learning models, particularly diffusion models and transformers, often incorporating techniques like attention mechanisms and multi-scale feature extraction to achieve efficient and high-quality results. These advancements are driving improvements in various applications, including broadcast video enhancement, remote sensing image analysis, and medical imaging, where high-resolution images are crucial for accurate interpretation and analysis. Furthermore, research is actively exploring methods to improve the efficiency and robustness of SR models, particularly for deployment on resource-constrained devices.
Papers
Taming Diffusion Prior for Image Super-Resolution with Domain Shift SDEs
Qinpeng Cui, Yixuan Liu, Xinyi Zhang, Qiqi Bao, Zhongdao Wang, Qingmin Liao, Li Wang, Tian Lu, Emad Barsoum
Study of Subjective and Objective Quality in Super-Resolution Enhanced Broadcast Images on a Novel SR-IQA Dataset
Yongrok Kim, Junha Shin, Juhyun Lee, Hyunsuk Ko
GRFormer: Grouped Residual Self-Attention for Lightweight Single Image Super-Resolution
Yuzhen Li, Zehang Deng, Yuxin Cao, Lihua Liu
One Step Diffusion-based Super-Resolution with Time-Aware Distillation
Xiao He, Huaao Tang, Zhijun Tu, Junchao Zhang, Kun Cheng, Hanting Chen, Yong Guo, Mingrui Zhu, Nannan Wang, Xinbo Gao, Jie Hu