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A Unified Stochastic Model for Detecting and Tracking Faces
The University of Victoria, Victoria, British Columbia, Canada May 09-May 11
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/CRV.2005.12The 2nd Canadian Conference on Comput ...
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Sachin Gangaputra, The Johns Hopkins University, Baltimore, MD
Donald Geman, The Johns Hopkins University, Baltimore, MD
We propose merging face detection and face tracking into a single probabilistic framework. The motivation stems from a broader project in algorithmic modeling, centered on the design and analysis of the online computational process in visual recognition. Detection is represented as a tree-structured graphical network in which likelihoods are assigned to each history or "trace" of processing, thereby introducing a new probabilistic component into coarse-to-fine search strategies. When embedded within a temporal Markov framework, the resulting tracking system yields encouraging results.
Citation:
Sachin Gangaputra, Donald Geman, "A Unified Stochastic Model for Detecting and Tracking Faces," crv, pp.306-313, The 2nd Canadian Conference on Computer and Robot Vision (CRV'05), 2005
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