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UniVAD: A Training-free Unified Model for Few-shot Visual Anomaly Detection

Authors

Zhaopeng Gu, Bingke Zhu, Guibo Zhu, Yingying Chen, Ming Tang, Jinqiao Wang

CVPR-2025direct anomaly

Score

23

Tags

anomaly detectionvisual anomaly

Methods

Few-shot

Links

Paper PagearXiv AbstractarXiv PDF

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