上下文信息在基于颜色的粒子滤波跟踪中的应用

Jingjing Xiao, M. Oussalah
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引用次数: 0

摘要

基于颜色的粒子滤波已经成为一种很有吸引力的目标跟踪方法。由于目标可能会发生快速而显著的外观变化,因此模板(即目标的尺度、颜色分布直方图)也需要更新。传统的不学习上下文信息的更新可能意味着扭曲模型和失去目标的高风险。本文提出了一种利用环境信息更新跟踪器尺度和参考外观模型的新算法,用于视频序列中的目标跟踪。该方法利用已有的基于颜色的粒子滤波跟踪方法,根据匹配分数区分前景和背景粒子。研究了一种导致估计收缩和发散的漫游现象。建议的解决方案使用公开可用的基准数据集进行测试,其中与六个最先进的跟踪器进行了比较。结果表明了该方法的可行性,为进一步研究复杂跟踪问题奠定了基础。
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On the use of contextual information for robust colour-based particle filter tracking
Color-based particle filters have emerged as an appealing method for targets tracking. As the target may undergo rapid and significant appearance changes, the template (i.e. scale of the target, color distribution histogram) also needs to be updated. Traditional updates without learning contextual information may imply a high risk of distorting the model and losing the target. In this paper, a new algorithm utilizing the environmental information to update both the scale of the tracker and the reference appearance model for the purpose of object tracking in video sequences has been put forward. The proposal makes use of the well-established color-based particle filter tracking while differentiating the foreground and background particles according to their matching score. A roaming phenomenon that yields the estimation to shrink and diverge is investigated. The proposed solution is tested using publicly available benchmark datasets where a comparison with six state-of-the-art trackers has been carried out. The results demonstrate the feasibility of the proposal and lie down foundations for further research of complex tracking problems.
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