• People
  • Research
  • Projects
  • Publications
  • Resources
ViCoS Lab

Authors

Matic Fučka, MSc
Matic Fučka, MSc
Vitjan Zavrtanik, PhD
Vitjan Zavrtanik, PhD
Danijel Skočaj, PhD
Danijel Skočaj, PhD

Links

  •   GitHub repository
  •   arXiv link

AnomalyVFM - Transforming Vision Foundation Models into Zero-Shot Anomaly Detectors

Matic Fučka, Vitjan Zavrtanik and Danijel Skočaj
IEEE / CVF Computer Vision and Pattern Recognition Conference (CVPR), 2026,

Zero-shot anomaly detection aims to detect and localise abnormal regions in the image without access to any in-domain training images. While recent approaches leverage vision–language models (VLMs), such as CLIP, to transfer high-level concept knowledge, methods based on purely vision foundation models (VFMs), like DINOv2, have lagged behind in performance. We argue that this gap stems from two practical issues: (i) limited diversity in existing auxiliary anomaly detection datasets and (ii) overly shallow VFM adaptation strategies. To address both challenges, we propose AnomalyVFM, a general and effective framework that turns any pretrained VFM into a strong zero-shot anomaly detector. Our approach combines a robust three-stage synthetic dataset generation scheme with a parameter-efficient adaptation mechanism, utilising low-rank feature adapters and a confidence-weighted pixel loss. Together, these components enable modern VFMs to substantially outperform current state-of-the-art methods. More specifically, with RADIO as a backbone, AnomalyVFM achieves an average image-level AUROC of 94.1% across 9 diverse datasets, surpassing previous methods by significant 3.3 percentage points. Project Page

Faculty of Computer and Information Science

Visual Cognitive Systems Laboratory

University of Ljubljana

Faculty of Computer and Information Science

Večna pot 113
SI-1000 Ljubljana
Slovenia
Tel.: +386 1 479 8245