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MultiADS: Defect-aware Supervision for Multi-type Anomaly Detection and Segmentation in Zero-Shot Learning

Authors

Ylli Sadikaj, Hongkuan Zhou, Lavdim Halilaj, Stefan Schmid, Steffen Staab, Claudia Plant

ICCV-2025direct anomaly

Score

13

Tags

anomaly detection

Methods

CLIPFew-shotZero-shot

Datasets

MVTecMVTec-ADVisAReal-IADMPDD

Links

Paper PagearXiv AbstractarXiv PDF

Cite

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