All-in-One Image Restoration (AiOIR) aims to recover high-quality images from diverse degradations within a unified framework. However, existing methods often fail to explicitly model degradation types and struggle to adapt their restoration behavior to complex or mixed degradations. To address these issues, we propose ClusIR, a Cluster-Guided Image Restoration framework that explicitly models degradation semantics through learnable clustering and propagates cluster-aware cues across spatial and frequency domains for adaptive restoration. Specifically, ClusIR comprises two key components: a Probabilistic Cluster-Guided Routing Mechanism (PCGRM) and a Degradation-Aware Frequency Modulation Module (DAFMM). The proposed PCGRM disentangles degradation recognition from expert activation, enabling discriminative degradation perception and stable expert routing. Meanwhile, DAFMM leverages the cluster-guided priors to perform adaptive frequency decomposition and targeted modulation, collaboratively refining structural and textural representations for higher restoration fidelity. The cluster-guided synergy seamlessly bridges semantic cues with frequency-domain modulation, empowering ClusIR to attain remarkable restoration results across a wide range of degradations. Extensive experiments on diverse benchmarks validate that ClusIR reaches competitive performance under several scenarios.
翻译:一体化图像复原旨在通过统一框架从多种退化类型中恢复高质量图像。然而,现有方法往往未能显式建模退化类型,且难以针对复杂或混合退化自适应调整复原行为。为解决这些问题,本文提出ClusIR,一种聚类引导的图像复原框架,它通过可学习的聚类显式建模退化语义,并在空间域与频域间传播聚类感知线索以实现自适应复原。具体而言,ClusIR包含两个核心组件:概率聚类引导路由机制与退化感知频率调制模块。所提出的概率聚类引导路由机制将退化识别与专家激活解耦,实现判别性退化感知与稳定的专家路由;同时,退化感知频率调制模块利用聚类引导先验进行自适应频率分解与针对性调制,协同优化结构与纹理表征以提升复原保真度。这种聚类引导的协同机制无缝衔接语义线索与频域调制,使ClusIR能够在广泛退化类型上取得显著的复原效果。在多类基准数据集上的大量实验验证了ClusIR在多种场景下均达到具有竞争力的性能。