Analysis of moving object detection and tracking in video surveillance system

In real world application, video security is becoming more important now-a-days due to the happening of unwanted events in our surroundings. Moving object detection is a challenging task in low resolution video, variable lightening conditions and in crowed area due to the limitation of pattern recognition techniques and itlooses many important details in the visual appearance of the moving object. In this paper we propose a review on unusual event detection in video surveillance system. Video surveillance system might be used for enhancing the security in various organizations, academic institutions and many more areas.

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