中国科学院机构知识库网格
Chinese Academy of Sciences Institutional Repositories Grid
Patches-based Markov random field model for multiple object tracking under occlusion

文献类型:期刊论文

作者Mingjun Wu; Xianrong Peng; Qiheng Zhang; Rujin Zhao
刊名Signal Processing
出版日期2010
卷号90期号:5页码:1518-1529
通讯作者Mingjun Wu
中文摘要In multiple object tracking, it is challenging to maintain the correct tracks of objects in the presence of occlusions. The paper proposes a new method to this problem, building on the patch representation of object appearance. We formulate multiple object tracking as classification tasks which competitively use the appearance models of the interacting objects. To obtain the optimal configuration of classification, a patches-based MAP-MRF decision framework is presented to make a global inference based on local spatial information existing between adjacent patches and the maximum a posteriori solution is evaluated exactly with graph cuts. As a result, accurate object identification is achieved. Extensive experiments on several difficult sequences validate that the proposed method is effective in dealing with multiple object occlusion, and comparative results show that our method outperforms the previous methods. [All rights reserved Elsevier].
英文摘要In multiple object tracking, it is challenging to maintain the correct tracks of objects in the presence of occlusions. The paper proposes a new method to this problem, building on the patch representation of object appearance. We formulate multiple object tracking as classification tasks which competitively use the appearance models of the interacting objects. To obtain the optimal configuration of classification, a patches-based MAP-MRF decision framework is presented to make a global inference based on local spatial information existing between adjacent patches and the maximum a posteriori solution is evaluated exactly with graph cuts. As a result, accurate object identification is achieved. Extensive experiments on several difficult sequences validate that the proposed method is effective in dealing with multiple object occlusion, and comparative results show that our method outperforms the previous methods. [All rights reserved Elsevier].
语种英语
源URL[http://ir.ioe.ac.cn/handle/181551/5015]  
专题光电技术研究所_光电探测与信号处理研究室(五室)
作者单位中国科学院光电技术研究所
推荐引用方式
GB/T 7714
Mingjun Wu,Xianrong Peng,Qiheng Zhang,et al. Patches-based Markov random field model for multiple object tracking under occlusion[J]. Signal Processing,2010,90(5):1518-1529.
APA Mingjun Wu,Xianrong Peng,Qiheng Zhang,&Rujin Zhao.(2010).Patches-based Markov random field model for multiple object tracking under occlusion.Signal Processing,90(5),1518-1529.
MLA Mingjun Wu,et al."Patches-based Markov random field model for multiple object tracking under occlusion".Signal Processing 90.5(2010):1518-1529.

入库方式: OAI收割

来源:光电技术研究所

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