会议专题

Object Tracking Algorithm Based on Combination of Dynamic Template Matching and Kalman Filter

The moving object detection is a prerequisite and difficult point to realize tracking in the video tracking system. In order to detect moving object effectively, an object tracking algorithm is proposed based on combination of dynamic template matching and Kalman filter. First, get the area of the moving object by using inter-frame difference method and extract the SIFT feature points. Then, find the location of the candidate object that is most matched with the object template in the search area by Kalman filter and match it with the object template in the current frame. Finally, the feature points loss rate will serve as the limited threshold, and we update template according to dynamic template updating strategy. By the number of the frames of the targets matching failures we determine whether the moving target is disappeared. Several experiments of the object tracking show that the approach is accurate and fast, and it has a better robust performance during the attitude changing, the size changing and the shelter instance.

dynamic template update Kalman filter extraction of feature points SIFT inter-frame difference

Bin Zheng Xiangyang Xu Yaping Dai Yuanyuan Lu

School of Automation Beijing Institute of Technology Beijing, China

国际会议

2012 4th International Conference on Intelligent Human-Machine Systems and Cybernetics 第4届智能人机系统与控制论国际会议 IHMSC 2012

南昌

英文

496-499

2012-08-26(万方平台首次上网日期,不代表论文的发表时间)