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Object tracking based on locality-constrained linear coding joint sparse representation appearance model

机译:基于局域约束线性编码联合稀疏表示外观模型的目标跟踪

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Focusing on the robust object tracking, we propose an algorithm combining discriminative model with generative model. In the discriminative model, we exploit the prior visual information to learn an over-complete dictionary, and use the locality constrained linear (LLC) coding to represent the object. Then use the linear SVM classifier to separate the foreground from the background to implement object tracking. In the generative model, we propose a sparse generative model to partition the object into patches and take the occlusion factor into account to construct object templates. Then use the particle filter to evaluate the target position. Finally joint the two models to acquire final tracking result. In addition, in order to handle the object appearance variation caused by occlusion, fast motion, illumination change and background clutter, we make a simple yet effective update scheme. Both qualitative and quantitative evaluations on challenging image sequences demonstrate that the proposed algorithm performs favorably against several state-of-the-art methods.
机译:针对鲁棒的目标跟踪,我们提出了一种将判别模型与生成模型相结合的算法。在判别模型中,我们利用先验的视觉信息来学习一个过于完整的字典,并使用局部约束线性(LLC)编码来表示对象。然后使用线性SVM分类器将前景与背景分开以实现对象跟踪。在生成模型中,我们提出了一种稀疏的生成模型,将对象划分为补丁,并考虑遮挡因子来构造对象模板。然后使用粒子过滤器评估目标位置。最后将这两个模型结合起来以获得最终的跟踪结果。另外,为了处理由于遮挡,快速运动,照明变化和背景混乱而引起的物体外观变化,我们制定了一种简单而有效的更新方案。对具有挑战性的图像序列进行定性和定量评估都表明,所提出的算法在对抗几种最新技术方面表现出色。

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