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Part-Based Visual Tracking via Online Weighted P-N Learning

机译:通过在线加权P-N学习的零件视觉跟踪

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摘要

We propose a novel part-based tracking algorithm using online weighted P-N learning. An online weighted P-N learning method is implemented via considering the weight of samples during classification, which improves the performance of classifier. We apply weighted P-N learning to track a part-based target model instead of whole target. In doing so, object is segmented into fragments and parts of them are selected as local feature blocks (LFBs). Then, the weighted P-N learning is employed to train classifier for each local feature block (LFB). Each LFB is tracked through the corresponding classifier, respectively. According to the tracking results of LFBs, object can be then located. During tracking process, to solve the issues of occlusion or pose change, we use a substitute strategy to dynamically update the set of LFB, which makes our tracker robust. Experimental results demonstrate that the proposed method outperforms the state-of-the-art trackers.
机译:我们提出了一种使用在线加权P-N学习的新型基于部分的跟踪算法。通过考虑分类期间样本的权重来实现在线加权P-N学习方法,这提高了分类器的性能。我们应用加权p-n学习以跟踪基于零件的目标模型而不是整个目标。在这样做时,对象被分段为片段,并且它们的一部分被选为本地特征块(LFB)。然后,用于为每个本地特征块(LFB)进行加权P-N学习。每个LFB分别通过相应的分类器跟踪。根据LFB的跟踪结果,可以位于对象。在跟踪过程中,要解决遮挡或姿势变化的问题,我们使用替代策略动态更新LFB集,使我们的跟踪器具有鲁棒。实验结果表明,所提出的方法优于最先进的跟踪器。

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