DocumentCode :
258008
Title :
Generalized Gaussian mixture Conditional Random Field model for image labeling
Author :
Arani, Maryam N. ; Xiao-Ping Zhang
Author_Institution :
Dept. of Electr. & Comput. Eng., Ryerson Univ. Toronto, Toronto, ON, Canada
fYear :
2014
fDate :
3-5 Dec. 2014
Firstpage :
1068
Lastpage :
1072
Abstract :
This paper proposes new potential functions for Conditional Random Fields (CRF) in image labeling framework based on generalized Gaussian mixture Modeling (GGMM) of the potential functions. Laplacian mixture potential functions have previously been applied to CRF. However, Laplacian potentials fail to capture data characteristics where data fluctuations happen very smoothly; so that they even give rise to induction of atypical results due to erroneous modeling of data. Having an additional shape manipulation parameter, generalized Gaussian mixtures (GGM) can model data characteristics and fluctuations precisely. In this paper, we propose to deploy GGM in the CRF framework to formulate the potential functions. Expectation maximization (EM) technique is used to estimate GGM parameters. Belief propagation and stochastic gradient descent algorithms are utilized for CRF inference and training, respectively. We show that proposed GGM feature functions effectively improve labeling accuracy of nature images in comparison with Laplacian mixtures. Qualitative labeling results show that the proposed framework performs well particularly for labeling simple even backgrounds where the Laplacian counterparts impose irregular outcomes. That is, despite Laplacian mixtures, GGM-based feature functions can correctly model smooth image color and texture variations.
Keywords :
Gaussian processes; belief maintenance; expectation-maximisation algorithm; feature extraction; gradient methods; image colour analysis; image texture; inference mechanisms; mixture models; random processes; CRF inference; EM technique; GGM feature function; GGM parameter estimation; GGMM; Laplacian mixture potential functions; belief propagation; data characteristics; data fluctuation; expectation maximization technique; generalized Gaussian mixture conditional random field model; image labeling; image texture variations; qualitative labeling; shape manipulation parameter; smooth image color variations; stochastic gradient descent algorithm; Computational modeling; Data models; Image segmentation; Labeling; Laplace equations; Shape; Training; Conditional Random Fields; Generalized Gaussian Mixtures; Image labeling;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Signal and Information Processing (GlobalSIP), 2014 IEEE Global Conference on
Conference_Location :
Atlanta, GA
Type :
conf
DOI :
10.1109/GlobalSIP.2014.7032285
Filename :
7032285
Link To Document :
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