Diffusion-Inspired Synthetic Restoration (DISYRE) improves Unsupervised Anomaly Detection in medical images by replacing Gaussian noise with synthetic anomalies.
Decision Tree Outlier Regressor (DTOR) provides rule-based explanations for anomalies, enhancing interpretability in anomaly detection models.
Diffusion models are adapted for unsupervised anomaly detection in medical images through synthetic anomaly corruption, leading to improved performance.
Explaining outliers occurrence is crucial in various domains, and the Decision Tree Outlier Regressor (DTOR) provides rule-based explanations for individual data points by estimating anomaly scores.
Homomorphic encryption enables privacy-preserving anomaly detection on IoT data without decryption.