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
Iterative Soft Shrinkage Learning for Efficient Image Super-Resolution
Jiamian Wang, Huan Wang, Yulun Zhang, Yun Fu, Zhiqiang Tao
Resolution Enhancement Processing on Low Quality Images Using Swin Transformer Based on Interval Dense Connection Strategy
Rui-Yang Ju, Chih-Chia Chen, Jen-Shiun Chiang, Yu-Shian Lin, Wei-Han Chen, Chun-Tse Chien
Learning Non-Local Spatial-Angular Correlation for Light Field Image Super-Resolution
Zhengyu Liang, Yingqian Wang, Longguang Wang, Jungang Yang, Shilin Zhou, Yulan Guo
Continuous Remote Sensing Image Super-Resolution based on Context Interaction in Implicit Function Space
Keyan Chen, Wenyuan Li, Sen Lei, Jianqi Chen, Xiaolong Jiang, Zhengxia Zou, Zhenwei Shi