arXiv Open Access 2026

MegaStyle: Constructing Diverse and Scalable Style Dataset via Consistent Text-to-Image Style Mapping

Junyao Gao Sibo Liu Jiaxing Li Yanan Sun Yuanpeng Tu +4 lainnya
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Abstrak

In this paper, we introduce MegaStyle, a novel and scalable data curation pipeline that constructs an intra-style consistent, inter-style diverse and high-quality style dataset. We achieve this by leveraging the consistent text-to-image style mapping capability of current large generative models, which can generate images in the same style from a given style description. Building on this foundation, we curate a diverse and balanced prompt gallery with 170K style prompts and 400K content prompts, and generate a large-scale style dataset MegaStyle-1.4M via content-style prompt combinations. With MegaStyle-1.4M, we propose style-supervised contrastive learning to fine-tune a style encoder MegaStyle-Encoder for extracting expressive, style-specific representations, and we also train a FLUX-based style transfer model MegaStyle-FLUX. Extensive experiments demonstrate the importance of maintaining intra-style consistency, inter-style diversity and high-quality for style dataset, as well as the effectiveness of the proposed MegaStyle-1.4M. Moreover, when trained on MegaStyle-1.4M, MegaStyle-Encoder and MegaStyle-FLUX provide reliable style similarity measurement and generalizable style transfer, making a significant contribution to the style transfer community. More results are available at our project website https://jeoyal.github.io/MegaStyle/.

Topik & Kata Kunci

Penulis (9)

J

Junyao Gao

S

Sibo Liu

J

Jiaxing Li

Y

Yanan Sun

Y

Yuanpeng Tu

F

Fei Shen

W

Weidong Zhang

C

Cairong Zhao

J

Jun Zhang

Format Sitasi

Gao, J., Liu, S., Li, J., Sun, Y., Tu, Y., Shen, F. et al. (2026). MegaStyle: Constructing Diverse and Scalable Style Dataset via Consistent Text-to-Image Style Mapping. https://arxiv.org/abs/2604.08364

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Tahun Terbit
2026
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en
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arXiv
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Open Access ✓