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Probabilistic Tracking in a Metric Space (2001)

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by Kentaro Toyama , Andrew Blake
Venue:in ICCV
Citations:152 - 3 self
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BibTeX

@INPROCEEDINGS{Toyama01probabilistictracking,
    author = {Kentaro Toyama and Andrew Blake},
    title = {Probabilistic Tracking in a Metric Space},
    booktitle = {in ICCV},
    year = {2001},
    pages = {50--59}
}

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Abstract

A new, exemplar-based, probabilistic paradigm for visual tracking is presented. Probabilistic mechanisms are attractive because they handle fusion of information, especially temporal fusion, in a principled manner. Exemplars are selected representatives of raw training data, used here to represent probabilistic mixture distributions of object configurations. Their use avoids tedious hand-construction of object models and problems with changes of topology. Using exemplars in place of a parameterized model poses several challenges, addressed here with what we call the "Metric Mixture" (M # ) approach. The M # model has several valuable properties. Principally, it provides alternatives to standard learning algorithms by allowing the use of metrics that are not embedded in a vector space. Secondly, it uses a noise model that is learned from training data. Lastly, it eliminates any need for an assumption of probabilistic pixelwise independence. Experiments demonstrate the effectiveness of the M # model in two domains: tracking walking people using chamfer distances on binary edge images and tracking mouth movements by means of a shuffle distance. 1

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