Image Degradation
Image degradation encompasses the various processes that reduce the quality of images, hindering their use in applications ranging from medical diagnosis to autonomous driving. Current research focuses on developing robust and efficient image restoration methods, often employing deep learning architectures like GANs, diffusion models, and transformers, to handle multiple degradation types simultaneously and adapt to unseen degradations. These advancements are crucial for improving the reliability and accuracy of image-based systems across numerous fields, particularly where image quality is critical for decision-making.
Papers
Turb-Seg-Res: A Segment-then-Restore Pipeline for Dynamic Videos with Atmospheric Turbulence
Ripon Kumar Saha, Dehao Qin, Nianyi Li, Jinwei Ye, Suren Jayasuriya
Bracketing Image Restoration and Enhancement with High-Low Frequency Decomposition
Genggeng Chen, Kexin Dai, Kangzhen Yang, Tao Hu, Xiangyu Chen, Yongqing Yang, Wei Dong, Peng Wu, Yanning Zhang, Qingsen Yan