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Main Authors: Li, Pu, Li, Huafeng, Zhang, Yafei, Wang, Wen, Dong, Neng, Wen, Jie
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.16967
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author Li, Pu
Li, Huafeng
Zhang, Yafei
Wang, Wen
Dong, Neng
Wen, Jie
author_facet Li, Pu
Li, Huafeng
Zhang, Yafei
Wang, Wen
Dong, Neng
Wen, Jie
contents In open-world settings, thermal infrared (TIR) image degradations continuously emerge and evolve, while most existing all-in-one restoration methods are built on a closed-set assumption and struggle to continually adapt to novel degradations. To address this, we propose ECMRNet, an Expandable, Compressible, and Mineable Restoration Network for open-world TIR restoration from a continual learning perspective. Conceptually, ECMRNet unifies continual degradation learning as an "expand-compress-mine" closed-loop process, enabling sustained adaptation to new degradations with controllable evolution. Structurally, ECMRNet decomposes intermediate representations into group-isolated subspaces, and achieves strict parameter isolation and fast adaptation to new degradations by freezing historical groups and isomorphically expanding new ones. To curb model growth as tasks accumulate, we present Structural Entropy Pruning, which identifies and removes redundant channel groups via two-dimensional structural entropy minimization, achieving information contribution-driven adaptive compression. Moreover, we design a Sub-degradation Knowledge Mining Module that dynamically retrieves and recombines transferable components from historical representations to improve restoration under compound degradations. Experimental results demonstrate that ECMRNet achieves superior overall performance across diverse single and compound degradations while using fewer parameters and lower computational cost. The source code is available at https://github.com/Kust-lp/ECMRNet.
format Preprint
id arxiv_https___arxiv_org_abs_2605_16967
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Expandable, Compressible, Mineable: Open-World Thermal Image Restoration
Li, Pu
Li, Huafeng
Zhang, Yafei
Wang, Wen
Dong, Neng
Wen, Jie
Computer Vision and Pattern Recognition
In open-world settings, thermal infrared (TIR) image degradations continuously emerge and evolve, while most existing all-in-one restoration methods are built on a closed-set assumption and struggle to continually adapt to novel degradations. To address this, we propose ECMRNet, an Expandable, Compressible, and Mineable Restoration Network for open-world TIR restoration from a continual learning perspective. Conceptually, ECMRNet unifies continual degradation learning as an "expand-compress-mine" closed-loop process, enabling sustained adaptation to new degradations with controllable evolution. Structurally, ECMRNet decomposes intermediate representations into group-isolated subspaces, and achieves strict parameter isolation and fast adaptation to new degradations by freezing historical groups and isomorphically expanding new ones. To curb model growth as tasks accumulate, we present Structural Entropy Pruning, which identifies and removes redundant channel groups via two-dimensional structural entropy minimization, achieving information contribution-driven adaptive compression. Moreover, we design a Sub-degradation Knowledge Mining Module that dynamically retrieves and recombines transferable components from historical representations to improve restoration under compound degradations. Experimental results demonstrate that ECMRNet achieves superior overall performance across diverse single and compound degradations while using fewer parameters and lower computational cost. The source code is available at https://github.com/Kust-lp/ECMRNet.
title Expandable, Compressible, Mineable: Open-World Thermal Image Restoration
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2605.16967