Improved Generative Models for Continuous Image Features through Tree-structured
Non-parametric Distributions
Abstract
Density estimation arises in a wide range of vision problems and methods which
can deal with high dimensional image features are of great importance. While in
principle a non-parametric distribution can be estimated for the full feature
distribution using Parzen windows technique, the amount of data to make these
estimates accurate is usually either unattainable or unmanageable.
Consequently, most modelers resort to parametric models such as mixtures of
Gaussians (or other more complicated parametric forms) or make independence
assumptions about the features. Such assumptions could be detrimental to
the performance of vision systems since realistically, image features
have neither a simple
parametric form, nor are they independent.
In this paper, we revive non-parametric models for image feature distributions
by finding the best tree-structured graphical model (using the Chow-Liu algorithm)
for our data, and estimating non-parametric distributions over the
one- and two-node marginals necessary to define the graph. This procedure
has the appealing property that, if the tree-structured model represents the
true conditional independence relations for the features, then our estimated
joint distribution converges rapidly to the true distribution of the data.
Even when this is not true, it converges to the best possible tree-structured
model for the original distribution. We illustrate the effectiveness of this
technique on simulated data and a real-world plankton classification problem.
BiBTex Entry
@techreport{mattar-tree-techrep06,
title={Improved Generative Models for Continuous Image Features through Tree-structured
Non-parametric Distributions},
author = {Marwan A. Mattar and Erik G. Learned-Miller},
institution = {Department of Computer Science, University of Massachusetts Amherst},
number = {UM-CS-2006-057},
year = {2006}
}