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arXiv 提交日期: 2026-01-28
📄 Abstract - TPGDiff: Hierarchical Triple-Prior Guided Diffusion for Image Restoration

All-in-one image restoration aims to address diverse degradation types using a single unified model. Existing methods typically rely on degradation priors to guide restoration, yet often struggle to reconstruct content in severely degraded regions. Although recent works leverage semantic information to facilitate content generation, integrating it into the shallow layers of diffusion models often disrupts spatial structures (\emph{e.g.}, blurring artifacts). To address this issue, we propose a Triple-Prior Guided Diffusion (TPGDiff) network for unified image restoration. TPGDiff incorporates degradation priors throughout the diffusion trajectory, while introducing structural priors into shallow layers and semantic priors into deep layers, enabling hierarchical and complementary prior guidance for image reconstruction. Specifically, we leverage multi-source structural cues as structural priors to capture fine-grained details and guide shallow layers representations. To complement this design, we further develop a distillation-driven semantic extractor that yields robust semantic priors, ensuring reliable high-level guidance at deep layers even under severe degradations. Furthermore, a degradation extractor is employed to learn degradation-aware priors, enabling stage-adaptive control of the diffusion process across all timesteps. Extensive experiments on both single- and multi-degradation benchmarks demonstrate that TPGDiff achieves superior performance and generalization across diverse restoration scenarios. Our project page is: this https URL.

顶级标签: computer vision model training systems
详细标签: image restoration diffusion models multi-prior guidance unified model degradation removal 或 搜索:

TPGDiff:用于图像修复的分层三重先验引导扩散模型 / TPGDiff: Hierarchical Triple-Prior Guided Diffusion for Image Restoration


1️⃣ 一句话总结

这篇论文提出了一个名为TPGDiff的统一图像修复模型,它通过巧妙地将结构、语义和退化三种先验信息分层引入扩散过程,有效解决了现有方法在严重退化区域内容重建上的难题,从而在各种修复场景下都取得了出色的效果。

源自 arXiv: 2601.20306