BMVC IndexSteerable Filters from Erlang FunctionsComputer Vision: TechniqueControllability and Observability: Tools for Kalman Filter Design

A Method for Dynamic Clustering of Data
View the PDF File

A. J. Abrantes, J. S. Marques

INESC
R. Alves Redol
9
1000 Lisboa
Portugal

Contact: jsm@inesc.pt

Abstract

This paper describes a method for the segmentation of dynamic data. It extends well known algorithms developed in the context of static clustering (e.g., the c-means algorithm, Kohonen maps, elastic nets and fuzzy c-means). The work is based on an unified framework for constrained clustering recently proposed by the authors. This framework is extended by using a motion model for the clusters which includes global and local evolution of the data centroids. A noise model is also proposed to increase the robustness of the dynamic clustering algorithm with respect to outliers.

Keywords: Clustering, Dynamic Data Analysis, Video Segmentation
Search the full conference index by: Title Author Keyword 
View the full paper as:  PDF 
BMVC IndexSteerable Filters from Erlang FunctionsComputer Vision: TechniqueControllability and Observability: Tools for Kalman Filter Design

This page created by John N. Carter on 09/10/98