Home
Scholarly Works
EM algorithm for bounded generalized t mixture...
Journal article

EM algorithm for bounded generalized t mixture model with an application to image segmentation

Abstract

This paper develops an EM-type algorithm for fitting the bounded generalized t mixture (BGTM) model. Due to heavy tails, high kurtosis and bounded nature, the BGTM model provides a flexible and suitable model for many computer vision and pattern recognition problems. We develop a feasible expectation conditional maximization (ECME) algorithm for computing the maximum likelihood estimates of model parameters via selection mechanism. To validate the effectiveness of the proposed methodology, we conduct experiments on both simulated data and real natural images. The obtained results demonstrate that the model and the estimation algorithm outperforms its sub-models in terms of both accuracy and computational efficiency.

Authors

Mahdavi A; Balakrishnan N; Jamalizadeh A

Journal

Computational and Applied Mathematics, Vol. 44, No. 2,

Publisher

Springer Nature

Publication Date

February 1, 2025

DOI

10.1007/s40314-024-03050-5

ISSN

2238-3603

Contact the Experts team