Color Textured Image Segmentation Based on Spatial Dependence Using 3D Co-occurrence Matrices and Markov Random Fields
Date issued
2007
Journal Title
Journal ISSN
Volume Title
Publisher
Václav Skala - UNION Agency
Abstract
Image segmentation is a primary step in many computer vision tasks. Although many segmentation methods based on either
color or texture have been proposed in the last decades, there have been only few approaches combining both these features.
This work presents a new image segmentation method using color texture features extracted from 3D co-occurrence matrices
combined with spatial dependence, this modeled by a Markov random field. The 3D co-occurrence matrices provide features
which summarize statistical interaction both between pixels and different color bands, which is not usually accomplished by
other segmentation methods. After a preliminary segmentation of the image into homogeneous regions, the ICM method is
applied only to pixels located in the boundaries between regions, providing a fine segmentation with a reduced computational
cost, since a small portion of the image is considered in the last stage. A set of synthetic and natural color images is used to
show the results by applying the proposed method.
Description
Subject(s)
segmentace obrazu, prostorová závislost, markovovská náhodná pole
Citation
WSCG '2007: Full Papers Proceedings: The 15th International Conference in Central Europe on Computer Graphics, Visualization and Computer Vision 2007 in co-operation with EUROGRAPHICS: University of West Bohemia Plzen Czech Republic, January 29 – February 1, 2007, p. 81-88.