A STATISTICAL FRAMEWORK FOR POSITIVE DATA CLUSTERING WITH FEATURE SELECTION : APPLICATION TO OBJECT DETECTIONReport as inadecuate




A STATISTICAL FRAMEWORK FOR POSITIVE DATA CLUSTERING WITH FEATURE SELECTION : APPLICATION TO OBJECT DETECTION - Download this document for free, or read online. Document in PDF available to download.

1 CIISE - Concordia Institute for Information Systems Engineering 2 GeoStat - Geometry and Statistics in acquisition data Inria Bordeaux - Sud-Ouest

Abstract : In this paper, we concern ourselves with the problem of simultaneous positive data clustering and feature selection. We propose a statistical framework based on finite mixture models of generalized inverted Dirichlet GID distributions. The GID offers a more practical and flexible alternative to the inverted Dirichlet which has a very restrictive covariance structure. For learning the parameters of the resulting mixture, we propose an approach based on minimum message length MML criterion. We use synthetic data and real data generated from a challenging application that concerns objects detection to demonstrate the feasibility and advantages of the proposed method.





Author: Mohamed Al Mashrgy - Nizar Bouguila - K. Daoudi -

Source: https://hal.archives-ouvertes.fr/



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