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基于在线学习和结构约束的目标跟踪算法
引用本文:王守超,李小霞.基于在线学习和结构约束的目标跟踪算法[J].计算机工程,2012,38(18):140-143.
作者姓名:王守超  李小霞
作者单位:西南科技大学信息工程学院,四川绵阳,621010
基金项目:国家自然科学基金资助项目“单目高精度大型物体彩色三维数字化测量原理研究”
摘    要:为在复杂环境中对目标进行长期的精确跟踪,提出一种基于在线学习和结构约束的目标检测和跟踪算法。采用改进的光流法对特定目标进行自适应跟踪,实时目标检测采用非层次结构在线学习随机蕨丛分类器。用基于结构约束的非监督学习法精确确定目标位置,以适应目标的形态变化。实验结果表明,该算法能够适应目标的基本形态变化,在目标出现尺寸变化、旋转、部分遮挡或短暂消失时都能稳定精确地跟踪目标。

关 键 词:随机蕨丛  结构约束  光流法  在线学习  目标跟踪  前向-后向误差
收稿时间:2011-11-21
修稿时间:2012-01-12

Target Tracking Algorithm Based on Online Learning and Construction Constraint
WANG Shou-chao , LI Xiao-xia.Target Tracking Algorithm Based on Online Learning and Construction Constraint[J].Computer Engineering,2012,38(18):140-143.
Authors:WANG Shou-chao  LI Xiao-xia
Affiliation:(School of Information Engineering,Southwest University of Science and Technology,Mianyang 621010,China)
Abstract:In order to accurately track target during a long term in complex environment,this paper presents an algorithm combining detecting and tracking based on online learning and construction constraint.Improved optical flow method is used to adaptively track specific target.The nonhierarchical structure online learning random ferns classifier is used as real time target detecting method.In order to adapt target shape variation,unsupervised learning method based on construction constraint is used to accurately determine the target position.Experimental results show that this algorithm can adapt to the basic target shape variations and track the target steadily when the targets change in size,rotate,shelter partly or disappear in a short term.
Keywords:random ferns brake  construction constraint  optical flow method  online learning  target tracking  forward-backward error
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