One-to-Normal: Anomaly Personalization for Few-shot Anomaly Detection

Neural Information Processing Systems 

Traditional Anomaly Detection (AD) methods have predominantly relied on unsupervised learning from extensive normal data. Recent AD methods have evolved with the advent of large pre-trained vision-language models, enhancing few-shot anomaly detection capabilities.