Title of article :
Combining object and feature dynamics in probabilistic tracking
Author/Authors :
Taycher، نويسنده , , Leonid and Fisher III، نويسنده , , John W. and Darrell، نويسنده , , Trevor، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2007
Pages :
18
From page :
243
To page :
260
Abstract :
Objects can exhibit different dynamics at different spatio-temporal scales, a property that is often exploited by visual tracking algorithms. A local dynamic model is typically used to extract image features that are then used as inputs to a system for tracking the object using a global dynamic model. Approximate local dynamics may be brittle—point trackers drift due to image noise and adaptive background models adapt to foreground objects that become stationary—and constraints from the global model can make them more robust. We propose a probabilistic framework for incorporating knowledge about global dynamics into the local feature extraction processes. A global tracking algorithm can be formulated as a generative model and used to predict feature values thereby influencing the observation process of the feature extractor, which in turn produces feature values that are used in high-level inference. We combine such models utilizing a multichain graphical model framework. We show the utility of our framework for improving feature tracking as well as shape and motion estimates in a batch factorization algorithm. We also propose an approximate filtering algorithm appropriate for online applications and demonstrate its application to tasks in background subtraction, structure from motion and articulated body tracking.
Keywords :
Probabilistic graphical models , Approximate models , Articulated body tracking , background subtraction , Shape from motion
Journal title :
Computer Vision and Image Understanding
Serial Year :
2007
Journal title :
Computer Vision and Image Understanding
Record number :
1695184
Link To Document :
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