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arxiv: 0905.2463 · v2 · submitted 2009-05-15 · 💻 cs.CV · cs.MM

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Generalized Kernel-based Visual Tracking

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classification 💻 cs.CV cs.MM
keywords classificationobjecttrackingbuildingkernel-basedmodelrepresentationrobust
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In this work we generalize the plain MS trackers and attempt to overcome standard mean shift trackers' two limitations. It is well known that modeling and maintaining a representation of a target object is an important component of a successful visual tracker. However, little work has been done on building a robust template model for kernel-based MS tracking. In contrast to building a template from a single frame, we train a robust object representation model from a large amount of data. Tracking is viewed as a binary classification problem, and a discriminative classification rule is learned to distinguish between the object and background. We adopt a support vector machine (SVM) for training. The tracker is then implemented by maximizing the classification score. An iterative optimization scheme very similar to MS is derived for this purpose.

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