DocumentCode :
697854
Title :
Simplifying Gaussian mixture models via entropic quantization
Author :
Nielsen, Frank ; Garcia, Vincent ; Nock, Richard
Author_Institution :
LIX, Ecole Polytech., Palaiseau, France
fYear :
2009
fDate :
24-28 Aug. 2009
Firstpage :
2012
Lastpage :
2016
Abstract :
Mixture models are a crucial statistical modeling tool at the heart of many challenging applications in computer vision, machine learning, and text classification among others. In this paper, we describe a novel and efficient algorithm for simplifying Gaussian mixture models using a generalization of the celebrated k-means quantization algorithm tailored to relative entropy in statistical distribution spaces. Our algorithm extends easily to arbitrary mixture of exponential families. The proposed method is shown to compare favourably well with the state-of-the-art unscented transform clustering algorithm both in terms of time and quality performances.
Keywords :
Gaussian processes; image processing; mixture models; pattern clustering; transforms; Gaussian mixture models; computer vision; entropic quantization; exponential families; k-means quantization algorithm; machine learning; statistical modeling tool; text classification; unscented transform clustering algorithm; Clustering algorithms; Computational modeling; Entropy; Function approximation; Image segmentation; Signal processing algorithms;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Signal Processing Conference, 2009 17th European
Conference_Location :
Glasgow
Print_ISBN :
978-161-7388-76-7
Type :
conf
Filename :
7077426
Link To Document :
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