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Anomalous Samples for Few-Shot Anomaly Detection

Published: July 31, 2025 | arXiv ID: 2507.23712v1

By: Aymane Abdali , Bartosz Boguslawski , Lucas Drumetz and more

Potential Business Impact:

Teaches computers to find bad things with few examples.

Business Areas:
A/B Testing Data and Analytics

Several anomaly detection and classification methods rely on large amounts of non-anomalous or "normal" samples under the assump- tion that anomalous data is typically harder to acquire. This hypothesis becomes questionable in Few-Shot settings, where as little as one anno- tated sample can make a significant difference. In this paper, we tackle the question of utilizing anomalous samples in training a model for bi- nary anomaly classification. We propose a methodology that incorporates anomalous samples in a multi-score anomaly detection score leveraging recent Zero-Shot and memory-based techniques. We compare the utility of anomalous samples to that of regular samples and study the benefits and limitations of each. In addition, we propose an augmentation-based validation technique to optimize the aggregation of the different anomaly scores and demonstrate its effectiveness on popular industrial anomaly detection datasets.

Page Count
14 pages

Category
Computer Science:
Machine Learning (CS)