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Image Segmentation Using Information Bottleneck Method

In image processing, segmentation algorithms constitute one of the main focuses of research. In this paper, new image segmentation algorithms based on a hard version of the information bottleneck method are presented. The objective of this method is to extract a compact representation of a variable, considered the input, with minimal loss of mutual information with respect to another variable, considered the output. First, we introduce a split-and-merge algorithm based on the definition of an information channel between a set of regions (input) of the image and the intensity histogram bins (output). From this channel, the maximization of the mutual information gain is used to optimize the image partitioning. Then, the merging process of the regions obtained in the previous phase is carried out by minimizing the loss of mutual information. From the inversion of the above channel, we also present a new histogram clustering algorithm based on the minimization of the mutual information loss, where now the input variable represents the histogram bins and the output is given by the set of regions obtained from the above split-and-merge algorithm. Finally, we introduce two new clustering algorithms which show how the information bottleneck method can be applied to the registration channel obtained when two multimodal images are correctly aligned. Different experiments on 2-D and 3-D images show the behavior of the proposed algorithms

© IEEE Transactions on Image Processing, 2009, vol. 18, núm. 7, p. 1601-1612

IEEE

Autor: Bardera i Reig, Antoni
Rigau Vilalta, Jaume
Boada, Imma
Feixas Feixas, Miquel
Sbert, Mateu
Data: juliol 2009
Resum: In image processing, segmentation algorithms constitute one of the main focuses of research. In this paper, new image segmentation algorithms based on a hard version of the information bottleneck method are presented. The objective of this method is to extract a compact representation of a variable, considered the input, with minimal loss of mutual information with respect to another variable, considered the output. First, we introduce a split-and-merge algorithm based on the definition of an information channel between a set of regions (input) of the image and the intensity histogram bins (output). From this channel, the maximization of the mutual information gain is used to optimize the image partitioning. Then, the merging process of the regions obtained in the previous phase is carried out by minimizing the loss of mutual information. From the inversion of the above channel, we also present a new histogram clustering algorithm based on the minimization of the mutual information loss, where now the input variable represents the histogram bins and the output is given by the set of regions obtained from the above split-and-merge algorithm. Finally, we introduce two new clustering algorithms which show how the information bottleneck method can be applied to the registration channel obtained when two multimodal images are correctly aligned. Different experiments on 2-D and 3-D images show the behavior of the proposed algorithms
Format: application/pdf
Cita: Bardera i Reig, A., Rigau Vilalta, J., Boada, I., Feixas Feixas, M., i Sbert, M. (2009). Image Segmentation Using Information Bottleneck Method. IEEE Transactions on Image Processing, 18 (7), 1601 - 1612. Recuperat 28 setembre 2010, a http://ieeexplore.ieee.org/stamp/stamp.jsp?tp=&arnumber=4914747
ISSN: 1057-7149
Accés al document: http://hdl.handle.net/10256/3054
Llenguatge: eng
Editor: IEEE
Col·lecció: Reproducció digital del document publicat a: http://dx.doi.org/10.1109/TIP.2009.2017823
Articles publicats (D-IMA)
És part de: © IEEE Transactions on Image Processing, 2009, vol. 18, núm. 7, p. 1601-1612
Drets: Tots els drets reservats
Matèria: Algorismes computacionals
Imatges -- Processament
Imatges -- Segmentació
Imatges tridimensionals
Computer algorithms
Image processing
Imaging segmentation
Three-dimensional imaging
Títol: Image Segmentation Using Information Bottleneck Method
Tipus: info:eu-repo/semantics/article
Repositori: DUGiDocs

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