Publication | Closed Access
Detection of Abnormal Visual Events via Global Optical Flow Orientation Histogram
171
Citations
38
References
2014
Year
Event CameraEngineeringMachine LearningVideo ProcessingAbnormal EventsVideo SurveillanceImage Sequence AnalysisImage AnalysisData SciencePattern RecognitionDetection AlgorithmVideo Content AnalysisMachine VisionVideo UnderstandingDeep LearningComputer VisionOptical Flow OrientationMotion DetectionEye TrackingAbnormal Visual EventsMotion Analysis
The aim of this paper is to detect abnormal events in video streams, a challenging but important subject in video surveillance. We propose a novel algorithm to address this problem. The algorithm is based on an image descriptor and a nonlinear classification method. We introduce a histogram of optical flow orientation as a descriptor encoding the moving information of each video frame. The nonlinear one-class support vector machine classification algorithm, following a learning period characterizing the normal behavior of training frames, detects abnormal events in the current frame. Further, a fast version of the detection algorithm is designed by fusing the optical flow computation with a background subtraction step. We finally apply the method to detect abnormal events on several benchmark data sets, and show promising results.
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