We present a novel approach for controllable, region-specific style editing driven by textual prompts. Building upon the state-space style alignment framework introduced by \emph{StyleMamba}, our method integrates a semantic segmentation model into the style transfer pipeline. This allows users to selectively apply text-driven style changes to specific segments (e.g., ``turn the building into a cyberpunk tower'') while leaving other regions (e.g., ``people'' or ``trees'') unchanged. By incorporating region-wise condition vectors and a region-specific directional loss, our method achieves high-fidelity transformations that respect both semantic boundaries and user-driven style descriptions. Extensive experiments demonstrate that our approach can flexibly handle complex scene stylizations in real-world scenarios, improving control and quality over purely global style transfer methods.
@article{arxiv.2503.16129,
title = {Controllable Segmentation-Based Text-Guided Style Editing},
author = {Jingwen Li and Aravind Chandrasekar and Mariana Rocha and Chao Li and Yuqing Chen},
journal= {arXiv preprint arXiv:2503.16129},
year = {2025}
}
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arXiv admin note: This paper has been withdrawn by arXiv due to disputed and unverifiable authorship and affiliation