基于多任务动态稀疏模型的鲁棒目标跟踪

Zhangjian Ji, Weiqiang Wang
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引用次数: 7

摘要

近年来,稀疏表示被广泛应用于一些生成式跟踪方法中,这些方法独立地学习每个粒子的表示,而不考虑每个粒子在时域内表示之间的相关性。本文将粒子滤波框架下的目标跟踪问题表述为一个多任务动态稀疏学习问题,我们称之为多任务动态稀疏跟踪(MTDST)。通过探索流行的稀疏性诱导的1,2混合规范,我们正则化了表示问题以增强联合稀疏性,并一起学习了粒子表示。同时,在跟踪模型中引入了创新稀疏项。与以往的方法相比,我们的方法挖掘了粒子之间的独立性和粒子表示在时域上的相关性,提高了跟踪性能。此外,由于最小二乘法对异常值具有鲁棒性,我们采用最小二乘法代替最小二乘法来计算似然概率。在更新方案中,我们在更新模板时消除了遮挡像素的影响。在几个具有挑战性的图像序列上的综合实验表明,该方法始终优于现有的最先进的方法。
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Robust object tracking via multi-task dynamic sparse model
Recently, sparse representation has been widely applied to some generative tracking methods, which learn the representation of each particle independently and do not consider the correlation between the representation of each particle in the time domain. In this paper, we formulate the object tracking in a particle filter framework as a multi-task dynamic sparse learning problem, which we denote as Multi-Task Dynamic Sparse Tracking(MTDST). By exploring the popular sparsity-inducing ℓ1, 2 mixed norms, we regularize the representation problem to enforce joint sparsity and learn the particle representations together. Meanwhile, we also introduce the innovation sparse term in the tracking model. As compared to previous methods, our method mines the independencies between particles and the correlation of particle representation in the time domain, which improves the tracking performance. In addition, because the loft least square is robust to the outliers, we adopt the loft least square to replace the least square to calculate the likelihood probability. In the updating scheme, we eliminate the influences of occlusion pixels when updating the templates. The comprehensive experiments on the several challenging image sequences demonstrate that the proposed method consistently outperforms the existing state-of-the-art methods.
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