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AnomalyPainter: Vision-Language-Diffusion Synergy for Zero-Shot Realistic and Diverse Industrial Anomaly Synthesis

10 March 2025
Zhangyu Lai
Yilin Lu
Xinyang Li
Jianghang Lin
Yansong Qu
Liujuan Cao
Ming Li
Rongrong Ji
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Abstract

While existing anomaly synthesis methods have made remarkable progress, achieving both realism and diversity in synthesis remains a major obstacle. To address this, we propose AnomalyPainter, a zero-shot framework that breaks the diversity-realism trade-off dilemma through synergizing Vision Language Large Model (VLLM), Latent Diffusion Model (LDM), and our newly introduced texture library Tex-9K. Tex-9K is a professional texture library containing 75 categories and 8,792 texture assets crafted for diverse anomaly synthesis. Leveraging VLLM's general knowledge, reasonable anomaly text descriptions are generated for each industrial object and matched with relevant diverse textures from Tex-9K. These textures then guide the LDM via ControlNet to paint on normal images. Furthermore, we introduce Texture-Aware Latent Init to stabilize the natural-image-trained ControlNet for industrial images. Extensive experiments show that AnomalyPainter outperforms existing methods in realism, diversity, and generalization, achieving superior downstream performance.

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@article{lai2025_2503.07253,
  title={ AnomalyPainter: Vision-Language-Diffusion Synergy for Zero-Shot Realistic and Diverse Industrial Anomaly Synthesis },
  author={ Zhangyu Lai and Yilin Lu and Xinyang Li and Jianghang Lin and Yansong Qu and Liujuan Cao and Ming Li and Rongrong Ji },
  journal={arXiv preprint arXiv:2503.07253},
  year={ 2025 }
}
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