Skip to content

Model-based hierarchical clustering with Bregman divergences and Fishers mixture model (MBHC-FMM)

Notifications You must be signed in to change notification settings

mhasnat/MBHC-FMM

Repository files navigation

MBHC-FMM

This reposity provides MATLAB implementation of: Model-based hierarchical clustering with Bregman divergences and Fishers mixture model (MBHC-FMM).

  • It performs clustering on the 3D directional data using the MBHC-FMM method. It has been applied to cluster image normals (3D unit vectors) to analyze depth image.

  • There are three demo files to demonstrate the above mentioned tasks.

Note: Four files: emsamp.m, vsamp.m, unitrand.m and house.m are added here for sampling observations from a specified vMF mixture model. Those files are taken from 'vmfmatlab' code, which is available online.

References:

[1] Hasnat et al., Model-based hierarchical clustering with Bregman divergences and Fishers mixture model: application to depth image analysis. Statistics and Computing, 1-20, 2015. pdf download

[2] Hasnat, M. A., Alata, O., & Trémeau, A. (2014, October). Model based clustering for 3D directional features: application to depth image analysis. In IEEE International Conference on Image Processing (ICIP), pp. 3768-3772, 2014. pdf download

[3] Hasnat et al., Hierarchical 3-D von Mises-Fisher Mixture Model, In 1st Workshop on Divergences and Divergence Learning (ICML-WDDL), 2013. pdf download

About

Model-based hierarchical clustering with Bregman divergences and Fishers mixture model (MBHC-FMM)

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

 
 
 

Languages