DocumentCode :
3078832
Title :
Expectation-maximization framework for rock textures segmentation
Author :
Lotfy, Hewayda ; Elmaghraby, Adel ; Kantardzic, Mehmed ; Hadizadeh, Jafar
Author_Institution :
Dept. of Comput. Sci. & Eng., Louisville Univ., KY
fYear :
2004
fDate :
Sept. 29 2004-Oct. 1 2004
Firstpage :
625
Lastpage :
634
Abstract :
Image clustering can be viewed as a segmentation problem in which small image patches are grouped together based on their features. Rock texture segmentation is a challenging task since the texture is often nonhomogeneous. In this contribution, the new EM (expectation-maximization) rock textures segmentation framework EMRT is proposed. EMRT has two phases, in the first phase the image is divided into small patches then color and texture features are extracted for each patch. We perform EM clustering of the features and then map the clusters back to the image domain to construct segmented image or subimages. The cost function of EM clustering is based on maximum-likelihood (ML) estimation to fit the feature data to a Gaussian mixture model (GMM). In the second phase we use edge detection techniques and morphological operations on each subimage for refinement to define the final segments. A qualitative comparison of EMRT with the traditional approaches such as fuzzy C-mean, and Kmeans on a database of rock images is presented. We proved that the EMRT provides the highest quality segmentation compared with the other approaches
Keywords :
Gaussian processes; feature extraction; image colour analysis; image segmentation; image texture; maximum likelihood estimation; optimisation; pattern clustering; rocks; Gaussian mixture model; Kmean; color feature extraction; edge detection technique; expectation-maximization framework; fuzzy C-mean; image clustering; maximum-likelihood estimation; morphological operation; rock image database; rock texture segmentation; segmentation problem; texture feature extraction; Cost function; Data mining; Feature extraction; Image databases; Image edge detection; Image segmentation; Maximum likelihood detection; Maximum likelihood estimation; Morphological operations; Spatial databases;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Machine Learning for Signal Processing, 2004. Proceedings of the 2004 14th IEEE Signal Processing Society Workshop
Conference_Location :
Sao Luis
ISSN :
1551-2541
Print_ISBN :
0-7803-8608-4
Type :
conf
DOI :
10.1109/MLSP.2004.1423026
Filename :
1423026
Link To Document :
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