Zero-Shot Industrial Anomaly Segmentation with Image-Aware Prompt Generation
Park, SoYoung, Lee, Hyewon, Choi, Mingyu, Han, Seunghoon, Lee, Jong-Ryul, Lim, Sungsu, Kim, Tae-Ho
–arXiv.org Artificial Intelligence
Anomaly segmentation is essential for industrial quality, maintenance, and stability. Existing text-guided zero-shot anomaly segmentation models are effective but rely on fixed prompts, limiting adaptability in diverse industrial scenarios. This highlights the need for flexible, context-aware prompting strategies. We propose Image-Aware Prompt Anomaly Segmentation (IAP-AS), which enhances anomaly segmentation by generating dynamic, context-aware prompts using an image tagging model and a large language model (LLM). IAP-AS extracts object attributes from images to generate context-aware prompts, improving adaptability and generalization in dynamic and unstructured industrial environments. In our experiments, IAP-AS improves the F1-max metric by up to 10%, demonstrating superior adaptability and generalization.
arXiv.org Artificial Intelligence
Apr-21-2025