Efficient kernel density estimation using the fast gauss transform with applications to color modeling and tracking

TitleEfficient kernel density estimation using the fast gauss transform with applications to color modeling and tracking
Publication TypeJournal Articles
Year of Publication2003
AuthorsElgammal A, Duraiswami R, Davis LS
JournalPattern Analysis and Machine Intelligence, IEEE Transactions on
Volume25
Issue11
Pagination1499 - 1504
Date Published2003/11//
ISBN Number0162-8828
Keywordsalgorithms;, Color, Computer, density, estimation;, fast, function;, Gauss, image, Kernel, modeling;, segmentation;, tracking;, transform;, transforms;, VISION, vision;
Abstract

Many vision algorithms depend on the estimation of a probability density function from observations. Kernel density estimation techniques are quite general and powerful methods for this problem, but have a significant disadvantage in that they are computationally intensive. In this paper, we explore the use of kernel density estimation with the fast Gauss transform (FGT) for problems in vision. The FGT allows the summation of a mixture of ill Gaussians at N evaluation points in O(M+N) time, as opposed to O(MN) time for a naive evaluation and can be used to considerably speed up kernel density estimation. We present applications of the technique to problems from image segmentation and tracking and show that the algorithm allows application of advanced statistical techniques to solve practical vision problems in real-time with today's computers.

DOI10.1109/TPAMI.2003.1240123