核心概念
The author explores the use of pre-trained models to improve image restoration by introducing a novel refinement module, PTG-RM, with PTG-SVE and PTG-CSA mechanisms. The approach focuses on formulating optimal operation ranges and attention strategies guided by pre-trained features.
摘要
The content delves into boosting image restoration using pre-trained models through a novel refinement module. Extensive experiments demonstrate significant improvements in various tasks like low-light enhancement, deraining, deblurring, and denoising. The study highlights the effectiveness of leveraging pre-trained features for enhancing restoration performance across different networks and architectures.
The research introduces a lightweight Pre-Train-Guided Refinement Module (PTG-RM) consisting of PTG-SVE and PTG-CSA components to refine restoration results. By distilling restoration-related information from pre-trained models, the proposed method significantly enhances restoration performance across multiple tasks.
Key points include:
- Introduction of a novel approach leveraging pre-trained models for image restoration enhancement.
- Proposal of a lightweight Pre-Train-Guided Refinement Module (PTG-RM) with two key components.
- Demonstration of improved performance in various restoration tasks through extensive experiments.
- Focus on formulating optimal operation ranges and attention strategies guided by pre-trained features.
The study showcases the potential of utilizing hidden information in pre-trained models to enhance image restoration performance significantly.
統計資料
MPRNet(CVPR2021)
MPRNet+Ours
Uformer(CVPR2022)
Uformer+Ours
Restormer(CVPR2022)
Restormer+Ours
39.6
39.8
40
40.2
40.4
引述
"We propose to learn an additional lightweight module called Pre-Train-Guided Refinement Module (PTG-RM) to refine restoration results."
"Our approach achieves better performance improvement for a given target model compared to other methods."
"The study showcases the potential of utilizing hidden information in pre-trained models to enhance image restoration performance significantly."