@InProceedings{pmlr-v139-deecke21a, author = "Deecke, Lucas and Ruff, Lukas and Vandermeulen, Robert A. and Bilen, Hakan", editor = "Meila, Marina and Zhang, Tong", title = "Transfer-Based Semantic Anomaly Detection", booktitle = "Proceedings of the 38th International Conference on Machine Learning", pages = "2546--2558", year = "2021", volume = "139", series = "Proceedings of Machine Learning Research", month = "18--24 Jul", publisher = "PMLR", pdf = "http://proceedings.mlr.press/v139/deecke21a/deecke21a.pdf", url = "https://proceedings.mlr.press/v139/deecke21a.html", abstract = "Detecting semantic anomalies is challenging due to the countless ways in which they may appear in real-world data. While enhancing the robustness of networks may be sufficient for modeling simplistic anomalies, there is no good known way of preparing models for all potential and unseen anomalies that can potentially occur, such as the appearance of new object classes. In this paper, we show that a previously overlooked strategy for anomaly detection (AD) is to introduce an explicit inductive bias toward representations transferred over from some large and varied semantic task. We rigorously verify our hypothesis in controlled trials that utilize intervention, and show that it gives rise to surprisingly effective auxiliary objectives that outperform previous AD paradigms." }