期刊文献+

基于时空约束和稀疏表示分类的目标跟踪算法 被引量:2

Visual object tracking via time-space constraints and sparse representation classification
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摘要 针对经典稀疏分类目标跟踪算法中目标模板和目标基的建模及更新方式效率低,跟踪性能不可靠等问题,提出一种新的目标跟踪算法,解释了时空约束原理,目标基、背景基、时序特征池的创建方法以及选择与抛弃两种基更新机制;该算法采用时序循环更新方式解决模板更新问题,结合稀疏表示分类和标准对冲实时计算目标坐标.相比其他几种经典目标跟踪算法,有效提高了在复杂背景下的目标跟踪性能. In order to solve template updating,basis construction and low efficiency problems in visual tracking tasks,a novel algorithm based on the space-time constrained and sparse representation classification is proposed.The details of space constraint,time constraint,both target and background basis construction methods,basis choosing,basis abandoning mechanisms and temporal feature pool construction methods are given.The temporal looping updating method is used to solve the template updating problem.The sparse representation classification method and normal hedge are combined for calculating target locations.The proposed tracking algorithm outperforms better than other state-of-art tracking algorithms in many difficult situations.
出处 《控制与决策》 EI CSCD 北大核心 2013年第9期1355-1360,共6页 Control and Decision
基金 国家自然科学基金项目(60974090) 教育部博士点基金项目(102063720090013) 中央高校基本科研业务费项目(GDJXS10170010)
关键词 目标跟踪 时空约束 稀疏表示分类 标准对冲 object tracking space-time constraints sparse representation classification normal hedge
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参考文献12

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