Adaptive visual target tracking algorithm based on classified-patch kernel particle filter

被引:0
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作者
Guangnan Zhang
Jinlong Yang
Weixing Wang
Yu Hen Hu
Jianjun Liu
机构
[1] Chang’an University,College of Information Engineering
[2] Baoji University of Arts and Science,School of Computer Science and Technology
[3] Jiangnan University,School of Internet of Things Engineering
[4] University of Wisconsin–Madison,Department of Electrical and Computer Engineering
关键词
Visual target tracking; K-singular value decomposition; Sparse coding; Dictionary learning; Particle filter;
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学科分类号
摘要
We propose a high-performance visual target tracking (VTT) algorithm based on classified-patch kernel particle filter (CKPF). Novel features of this VTT algorithm include sparse representations of the target template using the label-consistent K-singular value decomposition (LC-KSVD) algorithm; Gaussian kernel density particle filter to facilitate candidate template generation and likelihood matching score evaluation; and an occlusion detection method using sparse coefficient histogram (ASCH). Experimental results validate superior performance of the proposed tracking algorithm over state-of-the-art visual target tracking algorithms in scenarios that include occlusion, background clutter, illumination change, target rotation, and scale changes.
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