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Auteurs principaux: Wang, Wenzhuang, Zhao, Yifan, Ma, Mingcan, Liu, Ming, Jiang, Zhonglin, Chen, Yong, Li, Jia
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2509.01107
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author Wang, Wenzhuang
Zhao, Yifan
Ma, Mingcan
Liu, Ming
Jiang, Zhonglin
Chen, Yong
Li, Jia
author_facet Wang, Wenzhuang
Zhao, Yifan
Ma, Mingcan
Liu, Ming
Jiang, Zhonglin
Chen, Yong
Li, Jia
contents Layout-to-image (L2I) generation has exhibited promising results in natural domains, but suffers from limited generative fidelity and weak alignment with user-provided layouts when applied to degraded scenes (i.e., low-light, underwater). We primarily attribute these limitations to the "contextual illusion dilemma" in degraded conditions, where foreground instances are overwhelmed by context-dominant frequency distributions. Motivated by this, our paper proposes a new Frequency-Inspired Contextual Disentanglement Generative (FICGen) paradigm, which seeks to transfer frequency knowledge of degraded images into the latent diffusion space, thereby facilitating the rendering of degraded instances and their surroundings via contextual frequency-aware guidance. To be specific, FICGen consists of two major steps. Firstly, we introduce a learnable dual-query mechanism, each paired with a dedicated frequency resampler, to extract contextual frequency prototypes from pre-collected degraded exemplars in the training set. Secondly, a visual-frequency enhanced attention is employed to inject frequency prototypes into the degraded generation process. To alleviate the contextual illusion and attribute leakage, an instance coherence map is developed to regulate latent-space disentanglement between individual instances and their surroundings, coupled with an adaptive spatial-frequency aggregation module to reconstruct spatial-frequency mixed degraded representations. Extensive experiments on 5 benchmarks involving a variety of degraded scenarios-from severe low-light to mild blur-demonstrate that FICGen consistently surpasses existing L2I methods in terms of generative fidelity, alignment and downstream auxiliary trainability.
format Preprint
id arxiv_https___arxiv_org_abs_2509_01107
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publishDate 2025
record_format arxiv
spellingShingle FICGen: Frequency-Inspired Contextual Disentanglement for Layout-driven Degraded Image Generation
Wang, Wenzhuang
Zhao, Yifan
Ma, Mingcan
Liu, Ming
Jiang, Zhonglin
Chen, Yong
Li, Jia
Computer Vision and Pattern Recognition
Layout-to-image (L2I) generation has exhibited promising results in natural domains, but suffers from limited generative fidelity and weak alignment with user-provided layouts when applied to degraded scenes (i.e., low-light, underwater). We primarily attribute these limitations to the "contextual illusion dilemma" in degraded conditions, where foreground instances are overwhelmed by context-dominant frequency distributions. Motivated by this, our paper proposes a new Frequency-Inspired Contextual Disentanglement Generative (FICGen) paradigm, which seeks to transfer frequency knowledge of degraded images into the latent diffusion space, thereby facilitating the rendering of degraded instances and their surroundings via contextual frequency-aware guidance. To be specific, FICGen consists of two major steps. Firstly, we introduce a learnable dual-query mechanism, each paired with a dedicated frequency resampler, to extract contextual frequency prototypes from pre-collected degraded exemplars in the training set. Secondly, a visual-frequency enhanced attention is employed to inject frequency prototypes into the degraded generation process. To alleviate the contextual illusion and attribute leakage, an instance coherence map is developed to regulate latent-space disentanglement between individual instances and their surroundings, coupled with an adaptive spatial-frequency aggregation module to reconstruct spatial-frequency mixed degraded representations. Extensive experiments on 5 benchmarks involving a variety of degraded scenarios-from severe low-light to mild blur-demonstrate that FICGen consistently surpasses existing L2I methods in terms of generative fidelity, alignment and downstream auxiliary trainability.
title FICGen: Frequency-Inspired Contextual Disentanglement for Layout-driven Degraded Image Generation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2509.01107