DocumentCode :
1310859
Title :
Variational Region-Based Segmentation Using Multiple Texture Statistics
Author :
Karoui, Imen ; Fablet, Ronan ; Boucher, Jean-Marc ; Augustin, Jean-Marie
Author_Institution :
UMR CNRS Lab., Telecom Bretagne, Brest, France
Volume :
19
Issue :
12
fYear :
2010
Firstpage :
3146
Lastpage :
3156
Abstract :
This paper investigates variational region-level criterion for supervised and unsupervised texture-based image segmentation. The focus is given to the demonstration of the effectiveness and robustness of this region-based formulation compared to most common variational approaches. The main contributions of this global criterion are twofold. First, the proposed methods circumvent a major problem related to classical texture based segmentation approaches. Existing methods, even if they use different and various texture features, are mainly stated as the optimization of a criterion evaluating punctual pixel likelihoods or similarity measure computed within a local neighborhood. These approaches require sufficient dissimilarity between the considered texture features. An additional limitation is the choice of the neighborhood size and shape. These two parameters and especially the neighborhood size significantly influence the classification performances: the neighborhood must be large enough to capture texture structures and small enough to guarantee segmentation accuracy. These parameters are often set experimentally. These limitations are mitigated with the proposed variational methods stated at the region-level. It resorts to an energy criterion defined on image where regions are characterized by nonparametric distributions of their responses to a set of filters. In the supervised case, the segmentation algorithm consists in the minimization of a similarity measure between region-level statistics and texture prototypes and a boundary based functional that imposes smoothness and regularity on region boundaries. In the unsupervised case, the data-driven term involves the maximization of the dissimilarity between regions. The proposed similarity measure is generic and permits optimally fusing various types of texture features. It is defined as a weighted sum of Kullback-Leibler divergences between feature distributions. The optimization of the proposed variational crite- - ria is carried out using a level-set formulation. The effectiveness and the robustness of this formulation at region-level, compared to classical active contour methods, are evaluated for various Brodatz and natural images.
Keywords :
image segmentation; image texture; minimisation; set theory; statistical analysis; Brodatz images; Kullback-Leibler divergences; classical active contour methods; feature distributions; level-set formulation; minimization; multiple texture statistics; natural images; neighborhood shape; neighborhood size; punctual pixel likelihoods; similarity measure; supervised texture-based image segmentation; texture features; texture structures; unsupervised texture-based image segmentation; variational region-based segmentation; Entropy; Equations; Histograms; Image segmentation; Level set; Supervised learning; Active regions; level sets; nonparametric distributions; supervised and unsupervised segmentation; texture similarity measure; Algorithms; Data Interpretation, Statistical; Image Processing, Computer-Assisted; Pattern Recognition, Automated;
fLanguage :
English
Journal_Title :
Image Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1057-7149
Type :
jour
DOI :
10.1109/TIP.2010.2071290
Filename :
5560828
Link To Document :
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