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Incremental learning of temporally-coherent gaussian mixture models

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conference contribution
posted on 2005-01-01, 00:00 authored by Ognjen Arandjelovic, R Cipolla
In this paper we address the problem of learning Gaussian Mixture Models (GMMs) incrementally. Unlike previous approaches which universally assume that new data comes in blocks representable by GMMs which are then merged with the current model estimate, our method works for the case when novel data points arrive oneby- one, while requiring little additional memory. We keep only two GMMs in the memory and no historical data. The current fit is updated with the assumption that the number of components is fixed, which is increased (or reduced) when enough evidence for a new component is seen. This is deduced from the change from the oldest fit of the same complexity, termed the Historical GMM, the concept of which is central to our method. The performance of the proposed method is demonstrated qualitatively and quantitatively on several synthetic data sets and video sequences of faces acquired in realistic imaging conditions

History

Location

Oxford, England

Open access

  • Yes

Start date

2005-09-05

End date

2005-09-08

Language

eng

Publication classification

E1.1 Full written paper - refereed

Copyright notice

2005, BMVA

Editor/Contributor(s)

W Clocksin, A Fitzgibbon, P Torr

Title of proceedings

BMVC 2005 : Proceedings of the British Machine Conference 2005

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