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一种基于Mean Shift和Kalman预测的带宽自适应跟踪算法
引用本文:王文江,黄山,张洪斌.一种基于Mean Shift和Kalman预测的带宽自适应跟踪算法[J].计算机工程与科学,2013,35(5):87-92.
作者姓名:王文江  黄山  张洪斌
作者单位:四川大学电气信息学院;四川大学计算机学院
摘    要:Mean Shift算法是视觉监控领域广泛应用的经典目标跟踪方法,但对于速度过快或尺度变化大的目标的跟踪存在较大的缺陷。针对这一问题,提出了一种基于Mean Shift和Kalman方法预测的带宽自适应跟踪算法。该算法提出以Kalman预测目标在下帧中的位置作为Mean Shift迭代初始位置,以高效锁定各类运动目标;同时采用增量试探法自动调节带宽以适应目标的尺度变化。通过对行人和车辆等不同监控对象的实验表明,该跟踪算法具有良好的鲁棒性。

关 键 词:Mean  Shift  目标跟踪  卡尔曼预测  增量试探

Bandwidth-adaptive tracking algorithm based on Mean Shift and Kalman prediction
WANG Wen-jiang,HUANG Shan,ZHANG Hong-bin.Bandwidth-adaptive tracking algorithm based on Mean Shift and Kalman prediction[J].Computer Engineering & Science,2013,35(5):87-92.
Authors:WANG Wen-jiang  HUANG Shan  ZHANG Hong-bin
Affiliation:2 ( 1.College of Electrical Engineering and Information , Sichuan University , Chengdu 610065 ; 2.College of Computer Science , Sichuan University , Chengdu 610065 , China )
Abstract:As a widely used traditional tracking technique in visual surveillance , Mean Shift algorithm has a deficiency in handling moving targets with high speed or large scale change.In order to sove this problem , a bandwidth-adaptive tracking algorithm based on Mean Shift and Kalman prediction was proposed.The algorithm uses Kalman filter to predict the positions of fast moving objects in the successive frame , which are as the initial positions for Mean Shift iteration.Bandwidth trials is utilized to adjust the bandwidth automatically for targets'scale change.The experimental results of pedestrians and vehicle tracking show that our algorithm is effective and robust.
Keywords:Mean Shift  object tracking  Kalman prediction  bandwidth trials
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