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HarmonPaint: Harmonized Training-Free Diffusion Inpainting

22 July 2025
Ying Li
Xinzhe Li
Yong Du
Yangyang Xu
Junyu Dong
Shengfeng He
    DiffM
ArXiv (abs)PDFHTMLGithub (24246★)
Main:8 Pages
21 Figures
Bibliography:2 Pages
5 Tables
Appendix:5 Pages
Abstract

Existing inpainting methods often require extensive retraining or fine-tuning to integrate new content seamlessly, yet they struggle to maintain coherence in both structure and style between inpainted regions and the surrounding background. Motivated by these limitations, we introduce HarmonPaint, a training-free inpainting framework that seamlessly integrates with the attention mechanisms of diffusion models to achieve high-quality, harmonized image inpainting without any form of training. By leveraging masking strategies within self-attention, HarmonPaint ensures structural fidelity without model retraining or fine-tuning. Additionally, we exploit intrinsic diffusion model properties to transfer style information from unmasked to masked regions, achieving a harmonious integration of styles. Extensive experiments demonstrate the effectiveness of HarmonPaint across diverse scenes and styles, validating its versatility and performance.

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