Litcius/Paper detail

Self-Trained Deep Ordinal Regression for End-to-End Video Anomaly Detection

Guansong Pang, Yan Cheng, Chunhua Shen, Anton van den Hengel, Xiao Bai

2020244 citationsDOI

Abstract

Video anomaly detection is of critical practical importance to a variety of real applications because it allows human attention to be focused on events that are likely to be of interest, in spite of an otherwise overwhelming volume of video. We show that applying self-trained deep ordinal regression to video anomaly detection overcomes two key limitations of existing methods, namely, 1) being highly dependent on manually labeled normal training data; and 2) sub-optimal feature learning. By formulating a surrogate two-class ordinal regression task we devise an end-to-end trainable video anomaly detection approach that enables joint representation learning and anomaly scoring without manually labeled normal/abnormal data. Experiments on eight real-world video scenes show that our proposed method outperforms state-of-the-art methods that require no labeled training data by a substantial margin, and enables easy and accurate localization of the identified anomalies. Furthermore, we demonstrate that our method offers effective human-in-the-loop anomaly detection which can be critical in applications where anomalies are rare and the false-negative cost is high.

Topics & Concepts

Computer scienceAnomaly detectionMargin (machine learning)Artificial intelligenceAnomaly (physics)Ordinal regressionFeature (linguistics)Pattern recognition (psychology)Task (project management)RegressionMachine learningRepresentation (politics)MathematicsStatisticsPhysicsPoliticsLawLinguisticsManagementPhilosophyCondensed matter physicsPolitical scienceEconomicsAnomaly Detection Techniques and ApplicationsNetwork Security and Intrusion DetectionArtificial Immune Systems Applications