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Multi-Prompt Style Interpolation for Fine-Grained Artistic Control

20 March 2025
Lei Chen
Hao Li
Yuyao Zhang
Chong Li
Kai Wen
    AI4CE
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Abstract

Text-driven image style transfer has seen remarkable progress with methods leveraging cross-modal embeddings for fast, high-quality stylization. However, most existing pipelines assume a \emph{single} textual style prompt, limiting the range of artistic control and expressiveness. In this paper, we propose a novel \emph{multi-prompt style interpolation} framework that extends the recently introduced \textbf{StyleMamba} approach. Our method supports blending or interpolating among multiple textual prompts (eg, ``cubism,'' ``impressionism,'' and ``cartoon''), allowing the creation of nuanced or hybrid artistic styles within a \emph{single} image. We introduce a \textit{Multi-Prompt Embedding Mixer} combined with \textit{Adaptive Blending Weights} to enable fine-grained control over the spatial and semantic influence of each style. Further, we propose a \emph{Hierarchical Masked Directional Loss} to refine region-specific style consistency. Experiments and user studies confirm our approach outperforms single-prompt baselines and naive linear combinations of styles, achieving superior style fidelity, text-image alignment, and artistic flexibility, all while maintaining the computational efficiency offered by the state-space formulation.

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@article{chen2025_2503.16133,
  title={ Multi-Prompt Style Interpolation for Fine-Grained Artistic Control },
  author={ Lei Chen and Hao Li and Yuxin Zhang and Chao Li and Kai Wen },
  journal={arXiv preprint arXiv:2503.16133},
  year={ 2025 }
}
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