DocumentCode
758998
Title
Minimal Stochastic Complexity Image Partitioning With Unknown Noise Model
Author
Delyon, Guillaume ; Galland, Frederic ; Refregier, Philippe
Author_Institution
CNRS, Phys. & lmag Process. Group, Marseille
Volume
15
Issue
10
fYear
2006
Firstpage
3207
Lastpage
3212
Abstract
We present a generalization of a new statistical technique of image partitioning into homogeneous regions to cases where the family of the probability laws of the gray-level fluctuations is a priori unknown. For that purpose, the probability laws are described with step functions whose parameters are estimated. This approach is based on a polygonal grid which can have an arbitrary topology and whose number of regions and regularity of its boundaries are obtained by minimizing the stochastic complexity of the image. We demonstrate that efficient homogeneous image partitioning can be obtained when no parametric model of the probability laws of the gray levels is used and that this approach leads to a criterion without parameter to be tuned by the user. The efficiency of this technique is compared to a statistical parametric technique on a synthetic image and is compared to a standard unsupervised segmentation method on real optical images
Keywords
image segmentation; optical images; stochastic processes; gray-level fluctuations; homogeneous image partitioning; minimal stochastic complexity image partitioning; optical images; polygonal grid; standard unsupervised segmentation method; statistical parametric technique; step functions; stochastic image complexity; synthetic image; unknown noise model; Fluctuations; Image processing; Image segmentation; Markov random fields; Merging; Nonlinear optics; Parameter estimation; Probability; Stochastic processes; Stochastic resonance; Active contours; image partitioning; minimum description length principle; stochastic complexity;
fLanguage
English
Journal_Title
Image Processing, IEEE Transactions on
Publisher
ieee
ISSN
1057-7149
Type
jour
DOI
10.1109/TIP.2006.877484
Filename
1703606
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