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arxiv_cv 85% Match Research Paper Computer vision researchers,Image processing engineers,Developers of multimedia applications 6 days ago

DPMambaIR: All-in-One Image Restoration via Degradation-Aware Prompt State Space Model

computer-vision › diffusion-models
📄 Abstract

Abstract: All-in-One image restoration aims to address multiple image degradation problems using a single model, offering a more practical and versatile solution compared to designing dedicated models for each degradation type. Existing approaches typically rely on Degradation-specific models or coarse-grained degradation prompts to guide image restoration. However, they lack fine-grained modeling of degradation information and face limitations in balancing multi-task conflicts. To overcome these limitations, we propose DPMambaIR, a novel All-in-One image restoration framework that introduces a fine-grained degradation extractor and a Degradation-Aware Prompt State Space Model (DP-SSM). The DP-SSM leverages the fine-grained degradation features captured by the extractor as dynamic prompts, which are then incorporated into the state space modeling process. This enhances the model's adaptability to diverse degradation types, while a complementary High-Frequency Enhancement Block (HEB) recovers local high-frequency details. Extensive experiments on a mixed dataset containing seven degradation types show that DPMambaIR achieves the best performance, with 27.69dB and 0.893 in PSNR and SSIM, respectively. These results highlight the potential and superiority of DPMambaIR as a unified solution for All-in-One image restoration.
Authors (6)
Zhanwen Liu
Sai Zhou
Yuchao Dai
Yang Wang
Yisheng An
Xiangmo Zhao
Submitted
April 24, 2025
arXiv Category
cs.CV
arXiv PDF

Key Contributions

Proposes DPMambaIR, an All-in-One image restoration framework using a fine-grained degradation extractor and a Degradation-Aware Prompt State Space Model (DP-SSM). This approach enhances adaptability to diverse degradations by using dynamic prompts derived from fine-grained features, complemented by a High-Frequency Enhancement Block.

Business Value

Provides a versatile and efficient solution for improving image quality across various applications, reducing the need for specialized models and simplifying workflows.