Probabilistic Tracking with Exemplars in a Metric Space

作者:Kentaro Toyama, Andrew Blake

摘要

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.

论文关键词:probabilistic tracking, exemplar-based tracking

论文评审过程:

论文官网地址:https://doi.org/10.1023/A:1014899027014