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A Survey on Industrial Anomalies Synthesis

Abstract

This paper comprehensively reviews anomaly synthesis methodologies. Existing surveys focus on limited techniques, missing an overall field view and understanding method interconnections. In contrast, our study offers a unified review, covering about 40 representative methods across Hand-crafted, Distribution-hypothesis-based, Generative models (GM)-based, and Vision-language models (VLM)-based synthesis. We introduce the first industrial anomaly synthesis (IAS) taxonomy. Prior works lack formal classification or use simplistic taxonomies, hampering structured comparisons and trend identification. Our taxonomy provides a fine-grained framework reflecting methodological progress and practical implications, grounding future research. Furthermore, we explore cross-modality synthesis and large-scale VLM. Previous surveys overlooked multimodal data and VLM in anomaly synthesis, limiting insights into their advantages. Our survey analyzes their integration, benefits, challenges, and prospects, offering a roadmap to boost IAS with multimodal learning. More resources are available atthis https URL.

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@article{xu2025_2502.16412,
  title={ A Survey on Industrial Anomalies Synthesis },
  author={ Xichen Xu and Yanshu Wang and Yawen Huang and Jiaqi Liu and Xiaoning Lei and Guoyang Xie and Guannan Jiang and Zhichao Lu },
  journal={arXiv preprint arXiv:2502.16412},
  year={ 2025 }
}
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