Article ID Journal Published Year Pages File Type
527879 Computer Vision and Image Understanding 2011 11 Pages PDF
Abstract

Compared to other anomalous video event detection approaches that analyze object trajectories only, we propose a context-aware method to detect anomalies. By tracking all moving objects in the video, three different levels of spatiotemporal contexts are considered, i.e., point anomaly of a video object, sequential anomaly of an object trajectory, and co-occurrence anomaly of multiple video objects. A hierarchical data mining approach is proposed. At each level, frequency-based analysis is performed to automatically discover regular rules of normal events. Events deviating from these rules are identified as anomalies. The proposed method is computationally efficient and can infer complex rules. Experiments on real traffic video validate that the detected video anomalies are hazardous or illegal according to traffic regulations.

Research highlights► We define anomalous video event considering spatiotemporal context. ► We apply frequency-based data mining techniques to detect video anomaly. ► Anomalous event is detected from single object behaviors with arbitrary time length. ► Anomalous event is also detected for co-occurrence of multiple objects.

Related Topics
Physical Sciences and Engineering Computer Science Computer Vision and Pattern Recognition
Authors
, , , ,