sign in
english version rss feed

inria-00548591, version 1

High dimensional data clustering

Charles Bouveyron () 12, Stéphane Girard () 2, Cordelia Schmid (Author to contact preferably) 1

17th International Conference on Computational Statistics (Compstat '06) (2006) 813--820

Abstract: Clustering in high-dimensional spaces is a recurrent problem in many domains, for example in object recognition. High-dimensional data usually live in different lowdimensional subspaces hidden in the original space. This paper presents a clustering approach which estimates the specific subspace and the intrinsic dimension of each class. Our approach adapts the Gaussian mixture model framework to high-dimensional data and estimates the parameters which best fit the data. We obtain a robust clustering method called High- Dimensional Data Clustering (HDDC). We apply HDDC to locate objects in natural images in a probabilistic framework. Experiments on a recently proposed database demonstrate the effectiveness of our clustering method for category localization.

  • Domain : Computer Science/Computer Vision and Pattern Recognition
 
  • inria-00548591, version 1
  • oai:hal.inria.fr:inria-00548591
  • From: 
  • Submitted for: 
  • Submitted on: Thursday, 6 January 2011 09:21:10
  • Updated on: Thursday, 6 January 2011 09:36:07
all articles on CCSd database...
all articles on CCSd database...
all articles on CCSd database...
all articles on CCSd database...
all articles on CCSd database...
all articles on CCSd database...
all articles on CCSd database...
all articles on CCSd database...
all articles on CCSd database...
all articles on CCSd database...
all articles on CCSd database...
all articles on CCSd database...
all articles on CCSd database...
all articles on CCSd database...
all articles on CCSd database...
all articles on CCSd database...
all articles on CCSd database...
all articles on CCSd database...
all articles on CCSd database...
all articles on CCSd database...