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Object tracking with sparse representation and annealed particle filter - Springer

机译:具有稀疏表示和退火粒子过滤器的对象跟踪-Springer

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摘要

Recently, the L1 tracker is proposed for robust visual tracking. However, L1 tracker is still in traditional particle filter framework. As we know, particle filters suffer from some problems such as sample impoverishment. In this paper, we propose a new visual tracking algorithm, sparse representation based annealed particle filter, to further improve the performance of L1 tracker. As in L1 tracker, we find the tracking target at a new frame by sparsely representing each target candidate with both target and trivial templates. The sparsity is achieved by solving an (ell _{1})-regularized least squares problem. The candidate with the largest likelihood is taken as the tracking target. But different from L1 tracker, instead of tracking objects in the common particle filter framework, we solve the sparse representation problem in an annealed particle filter (APF) framework. In the APF framework, the sampling covariance and annealing factors are incorporated into the tracking process. The annealing strategy can achieve “smart sampling” to avoid generating invalid particles corresponding to infeasible targets. Both qualitative and quantitative evaluations on challenging video sequences are implemented to demonstrate the favorable performance in comparison with several other state-of-the-art tracking schemes.
机译:最近,L1跟踪器被提议用于健壮的视觉跟踪。但是,L1跟踪器仍处于传统的粒子过滤器框架中。众所周知,颗粒过滤器会遇到一些问题,例如样品贫乏。在本文中,我们提出了一种新的视觉跟踪算法,即基于稀疏表示的退火粒子滤波器,以进一步提高L1跟踪器的性能。就像在L1跟踪器中一样,我们通过用目标模板和平凡模板来稀疏地表示每个目标候选者,从而在新的帧中找到跟踪目标。稀疏度是通过解决(ell _ {1})正则化的最小二乘问题来实现的。以可能性最大的候选者作为跟踪目标。但是与L1跟踪器不同,我们不是在通用粒子过滤器框架中跟踪对象,而是解决了退火粒子过滤器(APF)框架中的稀疏表示问题。在APF框架中,将采样协方差和退火因子合并到跟踪过程中。退火策略可以实现“智能采样”,以避免生成与不可行目标相对应的无效粒子。与其他几种最新的跟踪方案相比,对具有挑战性的视频序列进行了定性和定量评估,以证明其良好的性能。

著录项

  • 来源
    《Signal, Image and Video Processing》 |2014年第6期|1059-1068|共10页
  • 作者单位

    1.School of Communication and Information Engineering Shanghai University Shanghai China 2.Institute of Smart City Shanghai University Shanghai China;

    1.School of Communication and Information Engineering Shanghai University Shanghai China 2.Institute of Smart City Shanghai University Shanghai China;

    1.School of Communication and Information Engineering Shanghai University Shanghai China 2.Institute of Smart City Shanghai University Shanghai China;

    2.Institute of Smart City Shanghai University Shanghai China 3.Department of Electrical Engineering University of Washington Seattle WA USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Visual tracking; Sparse representation; Annealed particle filter; $$ell _{1}$$; ℓ; 1; -Minimization;

    机译:视觉跟踪;稀疏表示;退火粒子过滤器;$$ ell _ {1} $$;ℓ;1;-最小化;

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