PAMPAS: real-valued graphical models for computer vision
- 4 November 2003
- conference paper
- Published by Institute of Electrical and Electronics Engineers (IEEE)
Abstract
Probabilistic models have been adopted for many computer vision applications, however inference in highdimensional spaces remains problematic. As the statespace of a model grows, the dependencies between the dimensions lead to an exponential growth in computation when performing inference. Many common computer vision problems naturally map onto the graphical model framework; the representation is a graph where each node contains a portion of the state-space and there is an edge between two nodes only if they are not independent conditional on the other nodes in the graph. When this graph is sparsely connected, belief propagation algorithms can turn an exponential inference computation into one which is linear in the size of the graph. However belief propagation is only applicable when the variables in the nodes are discrete-valued or jointly represented by a single multivariate Gaussian distribution, and this rules out many computer vision applications. This paper combines belief propagation with ideas from particle filtering; the resulting algorithm performs inference on graphs containing both cycles and continuousvalued latent variables with general conditional probability distributions. Such graphical models have wide applicability in the computer vision domain and we test the algorithm on example problems of low-level edge linking and locating jointed structures in clutter.Keywords
This publication has 12 references indexed in Scilit:
- Nonparametric belief propagationPublished by Institute of Electrical and Electronics Engineers (IEEE) ,2003
- JetStream: probabilistic contour extraction with particlesPublished by Institute of Electrical and Electronics Engineers (IEEE) ,2002
- Human tracking with mixtures of treesPublished by Institute of Electrical and Electronics Engineers (IEEE) ,2002
- Efficient matching of pictorial structuresPublished by Institute of Electrical and Electronics Engineers (IEEE) ,2002
- Transformed hidden Markov models: estimating mixture models of images and inferring spatial transformations in video sequencesPublished by Institute of Electrical and Electronics Engineers (IEEE) ,2002
- Sequential Monte Carlo Methods in PracticePublished by Springer Nature ,2001
- The Curve Indicator Random Field: Curve Organization Via Edge CorrelationPublished by Springer Nature ,2000
- CONDENSATION—Conditional Density Propagation for Visual TrackingInternational Journal of Computer Vision, 1998
- Stochastic Completion Fields: A Neural Model of Illusory Contour Shape and SalienceNeural Computation, 1997
- Stochastic Relaxation, Gibbs Distributions, and the Bayesian Restoration of ImagesPublished by Institute of Electrical and Electronics Engineers (IEEE) ,1984