Segmentation of Monochrome and Color Textures Using Moving Average Modeling Approach (1999)
| Venue: | Image and Vision Computing |
| Citations: | 4 - 0 self |
BibTeX
@ARTICLE{Eom99segmentationof,
author = {Kie B. Eom},
title = {Segmentation of Monochrome and Color Textures Using Moving Average Modeling Approach},
journal = {Image and Vision Computing},
year = {1999},
volume = {17},
pages = {233--244}
}
OpenURL
Abstract
The segmentation of textures using features extracted with 2-D moving average (MA) modeling approach is presented in this paper. The 2-D MA model represents a texture as an output of a 2-D finite impulse response (FIR) filter with simple input process. The 2-D MA model is flexible, and can be used for modeling both isotropic and anisotropic textures. The maximum-likelihood (ML) estimators of the 2-D MA model are used as texture features. Supervised and unsupervised texture segmentation is considered. A neural network is used for supervised segmentation, and a fuzzy clustering algorithm is used for unsupervised segmentation. The texture features extracted by 2-D MA modeling approach from sliding windows are classified with a neural network for supervised segmentation, and are clustered by a fuzzy clustering algorithm for unsupervised texture segmentation. The performance of the segmentation algorithms using MA model features are demonstrated in the experiment with both synthetic and nat...







