This paper describes computer vision algorithms for detection, identification, and tracking of moving objects in a video file. The problem of multiple object tracking can be divided into two parts; detecting moving objects in each frame and associating the detections corresponding to the same object over time. The detection of moving objects uses a background subtraction algorithm based on Gaussian mixture models. The motion of each track is estimated by a Kalman filter. The video tracking algorithm was successfully tested using the BIWI walking pedestrians datasets [. The experimental results show that system can operate in real time and successfully detect, track and identify multiple targets in the presence of partial occlusion.
History
Start page
218
End page
225
Total pages
8
Outlet
Proceedings of 2014 International Forum on Materials Processing Technology, IFMPT 2014 and 2014 International Conference on Sensors, Instrument and Information Technology, ICSIIT 2014