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Robust Visual Tracking Using Dynamic Classifier Selection with Sparse Representation of Label Noise

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arxiv 1903.07801 v1 pith:N5M47KT4 submitted 2019-03-19 cs.CV

Robust Visual Tracking Using Dynamic Classifier Selection with Sparse Representation of Label Noise

classification cs.CV
keywords classifierlabelstrackingmethodsproposedselectionvisualchanges
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recently a category of tracking methods based on "tracking-by-detection" is widely used in visual tracking problem. Most of these methods update the classifier online using the samples generated by the tracker to handle the appearance changes. However, the self-updating scheme makes these methods suffer from drifting problem because of the incorrect labels of weak classifiers in training samples. In this paper, we split the class labels into true labels and noise labels and model them by sparse representation. A novel dynamic classifier selection method, robust to noisy training data, is proposed. Moreover, we apply the proposed classifier selection algorithm to visual tracking by integrating a part based online boosting framework. We have evaluated our proposed method on 12 challenging sequences involving severe occlusions, significant illumination changes and large pose variations. Both the qualitative and quantitative evaluations demonstrate that our approach tracks objects accurately and robustly and outperforms state-of-the-art trackers.

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