2003 IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR '03) - Volume 2
Practical Non-parametric Density Estimation on a Transformation Group for Vision
Madison, Wisconsin
June 18-June 20
ISBN: 0-7695-1900-8
It is now common practice in machine vision to define the variability in an object?s appearance in a factored manner, as a combination of shape and texture transformations. In this context, we present a simple and practical method for estimating non-parametric probability densities over a group of linear shape deformations. Samples drawn from such a distribution do not lie in a Euclidean space, and standard kernel density estimates may perform poorly. While variable kernel estimators may mitigate this problem to some extent, the geometry of the underlying configuration space ultimately demands a kernel which accommodates its group structure. In this perspective, we propose a suitable invariant estimator on the linear group of non-singular matrices with positive determinant. We illustrate this approach by modeling image transformations in digit recognition problems, and present results showing the superiority of our estimator to comparable Euclidean estimators in this domain.
Citation:
Erik G. Miller, Christophe Chefd?hotel, "Practical Non-parametric Density Estimation on a Transformation Group for Vision," cvpr, vol. 2, pp.114, 2003 IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR '03) - Volume 2, 2003
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