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ReMP-AD: Retrieval-enhanced Multi-modal Prompt Fusion for Few-Shot Industrial Visual Anomaly Detection

Authors

Hongchi Ma, Guanglei Yang, Debin Zhao, Yanli Ji, Wangmeng Zuo

ICCV-2025direct anomaly

Score

24

Tags

anomaly detectionvisual anomaly

Methods

Few-shot

Links

Paper Page

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