We present the first generative approach to photomosaic creation. Traditional photomosaic methods rely on a large number of tile images and color-based matching, which limits both diversity and structural consistency. Our generative photomosaic framework synthesizes tile images using diffusion-based generation conditioned on reference images. A low-frequency conditioned diffusion mechanism aligns global structure while preserving prompt-driven details. This generative formulation enables photomosaic composition that is both semantically expressive and structurally coherent, effectively overcoming the fundamental limitations of matching-based approaches. By leveraging few-shot personalized diffusion, our model is able to produce user-specific or stylistically consistent tiles without requiring an extensive collection of images.
@article{arxiv.2604.06989,
title = {Generative Phomosaic with Structure-Aligned and Personalized Diffusion},
author = {Jaeyoung Chung and Hyunjin Son and Kyoung Mu Lee},
journal= {arXiv preprint arXiv:2604.06989},
year = {2026}
}