Fine-grained Anomaly Detection via Multi-task Self-Supervision
Computer Vision and Pattern Recognition
2022-03-18 v2
Abstract
Detecting anomalies using deep learning has become a major challenge over the last years, and is becoming increasingly promising in several fields. The introduction of self-supervised learning has greatly helped many methods including anomaly detection where simple geometric transformation recognition tasks are used. However these methods do not perform well on fine-grained problems since they lack finer features. By combining in a multi-task framework high-scale shape features oriented task with low-scale fine features oriented task, our method greatly improves fine-grained anomaly detection. It outperforms state-of-the-art with up to 31% relative error reduction measured with AUROC on various anomaly detection problems.
Cite
@article{arxiv.2104.09993,
title = {Fine-grained Anomaly Detection via Multi-task Self-Supervision},
author = {Loic Jezequel and Ngoc-Son Vu and Jean Beaudet and Aymeric Histace},
journal= {arXiv preprint arXiv:2104.09993},
year = {2022}
}