Unsupervised Anomaly Detection
Unsupervised anomaly detection aims to identify unusual data points without relying on labeled examples, focusing on learning the characteristics of normal data to distinguish deviations. Current research emphasizes developing robust models using architectures like autoencoders, diffusion probabilistic models, and graph neural networks, often incorporating techniques such as test-time adaptation, knowledge distillation, and generative adversarial networks to improve accuracy and efficiency. This field is crucial for various applications, including medical image analysis, industrial quality control, and cybersecurity, where detecting rare events is critical but labeled data is scarce or expensive to obtain. The development of more efficient and interpretable methods remains a key focus.
Papers
Adapted-MoE: Mixture of Experts with Test-Time Adaption for Anomaly Detection
Tianwu Lei, Silin Chen, Bohan Wang, Zhengkai Jiang, Ningmu Zou
A Novel Representation of Periodic Pattern and Its Application to Untrained Anomaly Detection
Peng Ye, Chengyu Tao, Juan Du
Memoryless Multimodal Anomaly Detection via Student-Teacher Network and Signed Distance Learning
Zhongbin Sun, Xiaolong Li, Yiran Li, Yue Ma
Attention-Guided Perturbation for Unsupervised Image Anomaly Detection
Tingfeng Huang, Yuxuan Cheng, Jingbo Xia, Rui Yu, Yuxuan Cai, Jinhai Xiang, Xinwei He, Xiang Bai
Impact of Inaccurate Contamination Ratio on Robust Unsupervised Anomaly Detection
Jordan F. Masakuna, DJeff Kanda Nkashama, Arian Soltani, Marc Frappier, Pierre-Martin Tardif, Froduald Kabanza