基矛P—N跟踪器的自适应粒子滤波算法
Serf-adapted particle filter based on P-N tracker
薛亚阳 1李晋惠 2肖锋1
作者信息
- 1. 西安工业大学计算机科学与工程学院,陕西西安710032
- 2. 西安工业大学理学院,陕西西安710032
- 折叠
摘要
针对粒子滤波(Particle filter)算法的粒子衰退和计算量过大问题,提出一种将P—N跟踪器与粒子滤波算法结合的目标跟踪方法。首先构造P—N跟踪器,利用跟踪器来确定目标区域范围并输出置信度,以此作为对目标物体定位的依据;在滤波过程中,依据跟踪器结果来进行粒子重采样过程,完成了对抽样粒子集的自适应调节,提高了粒子数量,有效降低了粒子数量。从而达到了抑制粒子衰退和动态调整计算量的目的。实验证明将该方法应用于实时摄像头采集视频跟踪。与传统粒子滤波算法比。在抗粒子衰退与减少粒子数量方面有明显改善。
Abstract
To solve the problem of degeneracy phenomenon and huge computational cost (which decided by the number of the particle)in particle filter, a new solution that combines the P-N tracker with particle filter is proposed. The proposal chooses an appropriate strategy dynamically in the resample step according to the different output of the P-N tracker, such as different range and number of the resample. Thus the degeneracy phenomenon is reduced effectively and the computational is adjusted dynamically. The result of the experiment of on-line tracking used combined mechanism shows the method is better in processing speed and computational than the traditional particle method.
关键词
目标跟踪/粒子滤波/重采样/P-N跟踪器Key words
object tracking/particle filter/resample/P-N tracker引用本文复制引用
基金项目
陕西省教育厅自然科学基金(2010JK592)
出版年
2011