Super Resolution
Super-resolution (SR) aims to enhance the resolution of images or other data, improving detail and clarity from lower-resolution inputs. Current research focuses on developing efficient and effective SR models, employing various architectures such as convolutional neural networks, transformers, and diffusion models, often incorporating techniques like self-supervised learning and multi-scale processing to improve performance and reduce computational cost. These advancements have significant implications across diverse fields, including medical imaging (improving diagnostic accuracy), remote sensing (enhancing spatial detail), and computer vision (improving the quality of generated images and videos). The development of robust and efficient SR methods is crucial for numerous applications where high-resolution data is desirable but acquisition is costly or impractical.
Papers
SuperBench: A Super-Resolution Benchmark Dataset for Scientific Machine Learning
Pu Ren, N. Benjamin Erichson, Shashank Subramanian, Omer San, Zarija Lukic, Michael W. Mahoney
Real-World Video for Zoom Enhancement based on Spatio-Temporal Coupling
Zhiling Guo, Yinqiang Zheng, Haoran Zhang, Xiaodan Shi, Zekun Cai, Ryosuke Shibasaki, Jinyue Yan
Crafting Training Degradation Distribution for the Accuracy-Generalization Trade-off in Real-World Super-Resolution
Ruofan Zhang, Jinjin Gu, Haoyu Chen, Chao Dong, Yulun Zhang, Wenming Yang
Convolutional neural network based on sparse graph attention mechanism for MRI super-resolution
Xin Hua, Zhijiang Du, Hongjian Yu, Jixin Maa
USIM-DAL: Uncertainty-aware Statistical Image Modeling-based Dense Active Learning for Super-resolution
Vikrant Rangnekar, Uddeshya Upadhyay, Zeynep Akata, Biplab Banerjee
Super-Resolution of License Plate Images Using Attention Modules and Sub-Pixel Convolution Layers
Valfride Nascimento, Rayson Laroca, Jorge de A. Lambert, William Robson Schwartz, David Menotti