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ViCoS Lab

Authors

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

Links

  •   GitHub repository
  •   External link

ObjectCore - Efficient Few-shot Logical Anomaly Detection using Object Representations

Matic Fučka, Vitjan Zavrtanik and Danijel Skočaj
IEEE / CVF Winter Conference on Applications of Computer Vision (WACV), 2026,

Anomaly Detection is an important problem in industrial processes. Two new subfields have recently emerged: logical anomaly detection and few-shot anomaly detection. The combined task, few-shot logical anomaly detection, has proven exceptionally difficult and highly important for industrial processes. Few-shot methods use suboptimal representations to model composition information necessary for detecting logical anomalies, and previous full-shot methods require a large training set. To solve both problems, we propose ObjectCore, a few-shot logical anomaly detection model that captures the composition information from only a few images without any category-specific information. The composition information of an image is modelled as a collection of object representations. Logical anomalies are detected using bipartite matching between object representations in the test image and object representations in the most similar support image. ObjectCore significantly improves over state-of-the-art methods on two standard benchmarks for few-shot logical anomaly detection, MVTec LOCO and CAD-SD, attaining an image-level AUROC of 80.8% and 96.5%, respectively, in the 4-shot setting. Code

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