CSA  >> Vol. 4 No. 8 (August 2014)


陈 勇:中石油长城钻探工程有限公司录井公司,盘锦;
何信华:Beijing Institute of Astronautical Systems Engineering, Beijing;

目标检测目标跟踪背景减除目标匹配Object Detection Object Tracking Background Subtraction Object Matching



In this paper, we propose a real-time mobile target detection and tracking algorithm for challenges of mobile target detection and tracking in sequential images. This algorithm based on the adaptive background modeling obtains background model and front-view images of mobile targets, which is the way to achieve target detection. Continuous matching and tracking of multiple mobile targets are realized through constructing position, size, shape and color distribution of the mobile targets, defining a global matching function for those targets, and associating their vitality characteristics. It is demonstrated by experiments that the algorithm presented in this paper, compared to the traditional methods of mobile target tracking, significantly reduces the computation time, improves adaptive feature to environments, achieves accurate detection and robust tracking of mobile targets in complex environments, and shows strong robustness to deformation and rotation of non-rigid targets.

胡绍华, 陈勇, 何信华, 沈志军. 实时目标跟踪研究[J]. 计算机科学与应用, 2014, 4(8): 158-168. http://dx.doi.org/10.12677/CSA.2014.48023


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