Deep Unfolding
Deep unfolding leverages the strengths of both model-based and data-driven approaches by unfolding iterative optimization algorithms into deep neural networks. Current research focuses on applying this technique to diverse inverse problems, including image and video reconstruction, hyperspectral imaging, and robotic manipulation, often employing architectures based on Alternating Direction Method of Multipliers (ADMM) or proximal gradient descent. This approach offers improved interpretability and efficiency compared to purely data-driven methods, leading to advancements in various fields ranging from medical imaging to computer vision and beyond.
Papers
Unfolding Once is Enough: A Deployment-Friendly Transformer Unit for Super-Resolution
Yong Liu, Hang Dong, Boyang Liang, Songwei Liu, Qingji Dong, Kai Chen, Fangmin Chen, Lean Fu, Fei Wang
Dual Degradation-Inspired Deep Unfolding Network for Low-Light Image Enhancement
Huake Wang, Xingsong Hou, Xiaoyang Yan