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StyMam: A Mamba-Based Generator for Artistic Style Transfer

About

Image style transfer aims to integrate the visual patterns of a specific artistic style into a content image while preserving its content structure. Existing methods mainly rely on the generative adversarial network (GAN) or stable diffusion (SD). GAN-based approaches using CNNs or Transformers struggle to jointly capture local and global dependencies, leading to artifacts and disharmonious patterns. SD-based methods reduce such issues but often fail to preserve content structures and suffer from slow inference. To address these issues, we revisit GAN and propose a mamba-based generator, termed as StyMam, to produce high-quality stylized images without introducing artifacts and disharmonious patterns. Specifically, we introduce a mamba-based generator with a residual dual-path strip scanning mechanism and a channel-reweighted spatial attention module. The former efficiently captures local texture features, while the latter models global dependencies. Finally, extensive qualitative and quantitative experiments demonstrate that the proposed method outperforms state-of-the-art algorithms in both quality and speed.

Zhou Hong, Ning Dong, Yicheng Di, Xiaolong Xu, Rongsheng Hu, Yihua Shao, Run Ling, Yun Wang, Juqin Wang, Zhanjie Zhang, Ao Ma• 2026

Related benchmarks

TaskDatasetResultRank
Artistic Style TransferWikiArt Van Gogh
FID93.8
8
Artistic Style TransferWikiArt Ukiyoe
FID91.73
8
Artistic Style TransferWikiArt Cezanne
FID129
8
Artistic Style TransferWikiArt Gauguin
FID143.1
8
Artistic Style TransferWikiArt Peploe
FID157.2
8
Artistic Style TransferGeneral Content Images
Inference Time (s)0.0295
8
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