Nonparametric Belief Propagation and Facial Appearance Estimation
Author(s)
Sudderth, Erik B.; Ihler, Alexander T.; Freeman, William T.; Willsky, Alan S.
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In many applications of graphical models  arising in computer vision, the hidden variables of interest are most  naturally specified by continuous, non-Gaussian distributions.  There exist inference algorithms for discrete approximations to  these continuous distributions, but for the high-dimensional  variables typically of interest, discrete inference becomes  infeasible. Stochastic methods such as particle filters  provide an appealing alternative. However, existing techniques fail  to exploit the rich structure of the graphical models describing  many vision problems. Drawing on ideas from regularized particle  filters and belief propagation (BP), this paper develops a  nonparametric belief propagation (NBP) algorithm applicable to  general graphs. Each NBP iteration uses an efficient sampling procedure  to update kernel-based approximations to the true, continuous  likelihoods. The algorithm can accomodate an extremely broad class of  potential functions, including nonparametric representations. Thus, NBP  extends particle filtering methods to the more general vision  problems that graphical models can describe. We apply the NBP  algorithm to infer component interrelationships in a parts-based face  model, allowing location and reconstruction of occluded features.
Date issued
2002-12-01Other identifiers
AIM-2002-020
Series/Report no.
AIM-2002-020
Keywords
AI, graphical model, belief propagation, nonparametric inference, vision