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Compressive Tracking via Weighted Classification Boosted by Feature Selection

机译:通过特征选择增强的加权分类进行压缩跟踪

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摘要

The drifting problem of object tracking is efficiently alleviated in our research. In this paper, an advanced compressive tracking algorithm based on a weighted classifier boosted by feature selection is proposed. The compressed features with high discrimination are selected from the target information of previous and current frames by a discrimination evaluating strategy. These discriminating features are used to train a weighted classifier, which is composed of two sub-classifiers based on previous and current samples bags. Finally, the weighted classifier is used to tell the target object from the background. Experimental results show that the performance in terms of accuracy and robustness hugely improves in tracking via the proposed classification method.
机译:在我们的研究中有效地减轻了对象跟踪的漂移问题。提出了一种基于特征选择提升的加权分类器的高级压缩跟踪算法。通过判别评估策略从先前和当前帧的目标信息中选择具有高判别力的压缩特征。这些区分功能用于训练加权分类器,该加权分类器由基于先前和当前样本包的两个子分类器组成。最后,加权分类器用于从背景中分辨目标对象。实验结果表明,通过提出的分类方法,在准确性和鲁棒性方面的性能大大提高。

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