Event Recognition in Parking Lot Surveillance System

This paper presents a novel event recognition framework in video surveillance system, particularly for parking lot environment. An event is represented by feature vector that contains dynamic information and the contextual information of the motion trajectory is incorporated into the recognition process. Experimental results have demonstrated great accuracy of the proposed event recognition algorithm.

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