CVAIMay 14, 2025

Few-Shot Anomaly-Driven Generation for Anomaly Classification and Segmentation

arXiv:2505.09263v17 citationsh-index: 11Has Code
Originality Incremental advance
AI Analysis

This work addresses the scarcity of anomaly samples for industrial inspection, but it is incremental as it builds upon existing methods like DRAEM and DesTSeg.

The paper tackles the problem of anomaly detection in industrial inspection by proposing a few-shot anomaly-driven generation method to synthesize realistic anomalies, which improves model performance; for example, it achieved a 5.8% and 1.5% improvement in AU-PR for segmentation tasks on DRAEM and DesTSeg models, respectively.

Anomaly detection is a practical and challenging task due to the scarcity of anomaly samples in industrial inspection. Some existing anomaly detection methods address this issue by synthesizing anomalies with noise or external data. However, there is always a large semantic gap between synthetic and real-world anomalies, resulting in weak performance in anomaly detection. To solve the problem, we propose a few-shot Anomaly-driven Generation (AnoGen) method, which guides the diffusion model to generate realistic and diverse anomalies with only a few real anomalies, thereby benefiting training anomaly detection models. Specifically, our work is divided into three stages. In the first stage, we learn the anomaly distribution based on a few given real anomalies and inject the learned knowledge into an embedding. In the second stage, we use the embedding and given bounding boxes to guide the diffusion model to generate realistic and diverse anomalies on specific objects (or textures). In the final stage, we propose a weakly-supervised anomaly detection method to train a more powerful model with generated anomalies. Our method builds upon DRAEM and DesTSeg as the foundation model and conducts experiments on the commonly used industrial anomaly detection dataset, MVTec. The experiments demonstrate that our generated anomalies effectively improve the model performance of both anomaly classification and segmentation tasks simultaneously, \eg, DRAEM and DseTSeg achieved a 5.8\% and 1.5\% improvement in AU-PR metric on segmentation task, respectively. The code and generated anomalous data are available at https://github.com/gaobb/AnoGen.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes