Guided Image Restoration via Simultaneous Feature and Image Guided Fusion
Xinyi Liu, Qian Zhao, Jie Liang, Hui Zeng, Deyu Meng, Lei Zhang

TL;DR
This paper introduces SFIGF, a novel deep learning framework that combines feature-level and image-level guided fusion inspired by the guided filter mechanism to improve various guided image restoration tasks.
Contribution
The paper proposes a unified SFIGF network that integrates feature and image guided fusion using GF-inspired modules, effectively balancing contextual and textual detail preservation.
Findings
SFIGF outperforms existing methods on multiple GIR tasks.
The method effectively preserves both contextual and fine details.
Experimental results demonstrate broad applicability and improved performance.
Abstract
Guided image restoration (GIR), such as guided depth map super-resolution and pan-sharpening, aims to enhance a target image using guidance information from another image of the same scene. Currently, joint image filtering-inspired deep learning-based methods represent the state-of-the-art for GIR tasks. Those methods either deal with GIR in an end-to-end way by elaborately designing filtering-oriented deep neural network (DNN) modules, focusing on the feature-level fusion of inputs; or explicitly making use of the traditional joint filtering mechanism by parameterizing filtering coefficients with DNNs, working on image-level fusion. The former ones are good at recovering contextual information but tend to lose fine-grained details, while the latter ones can better retain textual information but might lead to content distortions. In this work, to inherit the advantages of both…
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Taxonomy
TopicsImage Processing Techniques and Applications · Advanced Image Processing Techniques · Advanced Image Fusion Techniques
