Image Restoration
Image restoration aims to recover high-quality images from degraded versions, addressing issues like noise, blur, and missing data. Current research emphasizes developing universal models capable of handling multiple degradation types simultaneously, often employing diffusion models, transformers, and plug-and-play architectures alongside techniques like low-rank adaptation and multi-expert selection to improve efficiency and performance. These advancements are significant for various applications, including medical imaging, remote sensing, and enhancing the quality of digital photos and videos, driving improvements in both image fidelity and perceptual quality.
Papers
C$^3$DG: Conditional Domain Generalization for Hyperspectral Imagery Classification with Convergence and Constrained-risk Theories
Zhe Gao, Bin Pan, Zhenwei Shi
Diff-Restorer: Unleashing Visual Prompts for Diffusion-based Universal Image Restoration
Yuhong Zhang, Hengsheng Zhang, Xinning Chai, Zhengxue Cheng, Rong Xie, Li Song, Wenjun Zhang
MRIR: Integrating Multimodal Insights for Diffusion-based Realistic Image Restoration
Yuhong Zhang, Hengsheng Zhang, Xinning Chai, Rong Xie, Li Song, Wenjun Zhang
DaLPSR: Leverage Degradation-Aligned Language Prompt for Real-World Image Super-Resolution
Aiwen Jiang, Zhi Wei, Long Peng, Feiqiang Liu, Wenbo Li, Mingwen Wang
Exploring Test-Time Adaptation for Object Detection in Continually Changing Environments
Shilei Cao, Yan Liu, Juepeng Zheng, Weijia Li, Runmin Dong, Haohuan Fu