inria-00548591, version 1
High dimensional data clustering
Charles Bouveyron
1, 2Stéphane Girard
2Cordelia Schmid
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.
- 1: LEAR (IMAG-INRIA Rhône-Alpes / GRAVIR)
- CNRS : FR71 – CNRS : UMR5527 – INRIA – Université Joseph Fourier - Grenoble I – Institut National Polytechnique de Grenoble (INPG)
- 2: Laboratoire de Modélisation et Calcul (LMC - IMAG)
- CNRS : UMR5523 – Université Joseph Fourier - Grenoble I – Institut National Polytechnique de Grenoble (INPG)
- Domain : Computer Science/Computer Vision and Pattern Recognition
- inria-00548591, version 1
- http://hal.inria.fr/inria-00548591
- oai:hal.inria.fr:inria-00548591
- From: Team Lear
- Submitted for:
- Submitted on: Thursday, 6 January 2011 09:21:10
- Updated on: Thursday, 6 January 2011 09:36:07






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