Title :
Unsupervised selection of a finite Dirichlet mixture model: an MML-based approach
Author :
Bouguila, Nizar ; Ziou, Djemel
Author_Institution :
Concordia Inst. for Inf. Syst. Eng., Concordia Univ., Montreal, Que.
Abstract :
This paper proposes an unsupervised algorithm for learning a finite Dirichlet mixture model. An important part of the unsupervised learning problem is determining the number of clusters which best describe the data. We extend the minimum message length (MML) principle to determine the number of clusters in the case of Dirichlet mixtures. Parameter estimation is done by the expectation-maximization algorithm. The resulting method is validated for one-dimensional and multidimensional data. For the one-dimensional data, the experiments concern artificial and real SAP image histograms. The validation for multidimensional data involves synthetic data and two real applications: shadow detection in images and summarization of texture image databases for efficient retrieval. A comparison with results obtained for other selection criteria is provided
Keywords :
expectation-maximisation algorithm; image retrieval; image texture; unsupervised learning; visual databases; MML principle; expectation-maximization algorithm; finite Dirichlet mixture model; minimum message length; real SAP image histogram; texture image database; unsupervised learning; unsupervised selection; Biological system modeling; Clustering algorithms; Expectation-maximization algorithms; Gaussian processes; Histograms; Multidimensional systems; Parameter estimation; Pattern recognition; Probability; Unsupervised learning; Dirichlet mixture; EM; Finite mixture models; MML; SAR images; shadow modeling; texture summarization.;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
DOI :
10.1109/TKDE.2006.133