[1]仇佳庆,窦立云,王进.基于跨模态注意力的多阶段图像风格迁移[J].智能系统学报,2026,21(3):751-762.[doi:10.11992/tis.202508011]
QIU Jiaqing,DOU Liyun,WANG Jin.Multistage image style transfer based on cross-modal attention[J].CAAI Transactions on Intelligent Systems,2026,21(3):751-762.[doi:10.11992/tis.202508011]
点击复制
《智能系统学报》[ISSN 1673-4785/CN 23-1538/TP] 卷:
21
期数:
2026年第3期
页码:
751-762
栏目:
学术论文—智能系统
出版日期:
2026-05-05
- Title:
-
Multistage image style transfer based on cross-modal attention
- 作者:
-
仇佳庆, 窦立云, 王进
-
南通大学 人工智能与计算机学院, 江苏 南通 226019
- Author(s):
-
QIU Jiaqing, DOU Liyun, WANG Jin
-
School of Artificial Intelligence and Computer Science, Nantong University, Nantong 226019, China
-
- 关键词:
-
图像风格迁移; 跨模态注意力; 自适应风格调节; 潜在扩散模型; 图像生成; 文本引导图像生成; 多模态生成; 艺术风格转换
- Keywords:
-
image style transfer; cross-modal attention; adaptive style modulation; latent diffusion model; image generation; text-guided image generation; multimodal generation; artistic style transfer
- 分类号:
-
TP391;TH212
- DOI:
-
10.11992/tis.202508011
- 文献标志码:
-
2026-3-25
- 摘要:
-
图像风格迁移(image style transfer, IST)的核心是融合图像内容与目标艺术风格,生成兼具语义合理性与视觉表现力的图像,广泛应用于艺术创作、个性化图像编辑等领域。现有方法处理高分辨率图像、复杂纹理及跨模态引导任务时,存在计算效率低、风格可控性弱、细节丢失、风格与内容脱节等问题。为此,本文提出基于潜在扩散模型的多阶段风格迁移框架 CAST-Diff(cross-modal attention and style-adaptive diffusion framework),采用解耦式协同设计,结合跨模态语义引导、自适应区域风格调节与潜空间扩散细化,通过跨模态注意力对齐图文特征,利用自适应模块控制区域风格强度,利用潜扩散模型完成去噪与细节重建。在 COCO、Flickr30k 数据集上与 StyleGAN-Diffusion、ControlNet 等主流方法对比表明,CAST-Diff 在风格一致性、细节保真度及视觉自然度上更优,能在复杂场景下保留图像结构与精细纹理,实现自然逼真的风格迁移,同时提升计算效率与泛化能力,为文本引导的高精度风格迁移提供可行方案。
- Abstract:
-
Image style transfer (IST) aims to fuse image content with a target artistic style to generate semantically rational and visually expressive images, and it has been widely applied in art creation, personalized image editing, and other fields. Existing methods suffer from low computational efficiency, weak style controllability, loss of details, and disconnection between style and content when handling high-resolution images, complex textures, and cross-modal guided tasks. To address these issues, this paper proposes CAST-Diff, a multistage image style transfer framework built on latent diffusion models. CAST-Diff follows a decoupled collaborative design that combines cross-modal semantic guidance, adaptive regional style regulation, and latent space diffusion refinement so that text and image features can be aligned through cross-modal attention, regional style strength can be adjusted by the adaptive module, and denoising together with detail reconstruction can be completed by the latent diffusion model. Experimental comparisons with mainstream methods such as StyleGAN-Diffusion and ControlNet on the COCO and Flickr30k datasets show that CAST-Diff performs better in style consistency, detail fidelity, and visual naturalness while preserving image structure and fine textures in complex scenes, producing more natural and realistic style transfer results, and improving computational efficiency as well as generalization ability. These advantages make CAST-Diff a practical solution for text-guided high-precision style transfer.
备注/Memo
收稿日期:2025-8-9。
基金项目:南通市自然科学基金面上项目(JC2025090).
作者简介:仇佳庆,硕士研究生,主要研究方向为多媒体、计算机视觉。E-mail:983576605@qq.com。;窦立云,讲师,博士,主要研究方向为图像处理、图像篡改,先后担任了ACMMM、CVPR、TMM和TKDE等国际顶会顶刊的审稿人。E-mail:liyun_dou@163.com。;王进,副教授,博士,中国计算机学会高级会员,南通市人工智能学会副理事长,主要研究方向为人工智能、计算机视觉,中国计算机学会(CCF)高级会员,南通市人工智能学会副理事长。发表学术论文40余篇,申请授权专利30余件。 E-mail:wj@ntu.edu.cn。
通讯作者:窦立云. E-mail:Liyun_dou@163.com
更新日期/Last Update:
1900-01-01