Texture Image Segmentation Approach Based on Neural Networks

One of the major problems in texture analysis is segmenting images into different regions based on textures. In this paper, we present a new approach of texture segmentation, which is based on both Kohonen maps and mathematical morphology, using three different texture features, namely, Haralick fea...

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Main Authors: Khalid Salhi, El Miloud Jaara, Mohammed Talibi Alaoui
Format: Article
Language:English
Published: International Association of Online Engineering (IAOE) 2018-03-01
Series:International Journal of Recent Contributions from Engineering, Science & IT
Online Access:http://online-journals.org/index.php/i-jes/article/view/8166
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spelling doaj-c2064b8d725a44ef961af090c3c4eecc2021-09-02T02:05:02ZengInternational Association of Online Engineering (IAOE)International Journal of Recent Contributions from Engineering, Science & IT2197-85812018-03-0161193210.3991/ijes.v6i1.81663603Texture Image Segmentation Approach Based on Neural NetworksKhalid Salhi0El Miloud Jaara1Mohammed Talibi Alaoui2Faculty of Sciences, University of Mohammed FirstFaculty of Sciences, University of Mohammed FirstFaculty of Sciences, University of Mohammed FirstOne of the major problems in texture analysis is segmenting images into different regions based on textures. In this paper, we present a new approach of texture segmentation, which is based on both Kohonen maps and mathematical morphology, using three different texture features, namely, Haralick features based on gray-level co-occurrence matrix (GLCM), fractal features based on fractal dimension using the differential box counting method, and wavelet features based on wavelet transform. These features are used to train the Kohonen Network, which will be represented by the underlying probability density function (PDF). The segmentation of this map’s representation is made by morphological watershed transformation. In the final part of our algorithm, this will help on the segmentation of the textural image, by assigning each pixel to a modal region extracted from the map. Our work covers the results obtained by the three extraction methods taking into consideration the execution time and the error rate.http://online-journals.org/index.php/i-jes/article/view/8166
collection DOAJ
language English
format Article
sources DOAJ
author Khalid Salhi
El Miloud Jaara
Mohammed Talibi Alaoui
spellingShingle Khalid Salhi
El Miloud Jaara
Mohammed Talibi Alaoui
Texture Image Segmentation Approach Based on Neural Networks
International Journal of Recent Contributions from Engineering, Science & IT
author_facet Khalid Salhi
El Miloud Jaara
Mohammed Talibi Alaoui
author_sort Khalid Salhi
title Texture Image Segmentation Approach Based on Neural Networks
title_short Texture Image Segmentation Approach Based on Neural Networks
title_full Texture Image Segmentation Approach Based on Neural Networks
title_fullStr Texture Image Segmentation Approach Based on Neural Networks
title_full_unstemmed Texture Image Segmentation Approach Based on Neural Networks
title_sort texture image segmentation approach based on neural networks
publisher International Association of Online Engineering (IAOE)
series International Journal of Recent Contributions from Engineering, Science & IT
issn 2197-8581
publishDate 2018-03-01
description One of the major problems in texture analysis is segmenting images into different regions based on textures. In this paper, we present a new approach of texture segmentation, which is based on both Kohonen maps and mathematical morphology, using three different texture features, namely, Haralick features based on gray-level co-occurrence matrix (GLCM), fractal features based on fractal dimension using the differential box counting method, and wavelet features based on wavelet transform. These features are used to train the Kohonen Network, which will be represented by the underlying probability density function (PDF). The segmentation of this map’s representation is made by morphological watershed transformation. In the final part of our algorithm, this will help on the segmentation of the textural image, by assigning each pixel to a modal region extracted from the map. Our work covers the results obtained by the three extraction methods taking into consideration the execution time and the error rate.
url http://online-journals.org/index.php/i-jes/article/view/8166
work_keys_str_mv AT khalidsalhi textureimagesegmentationapproachbasedonneuralnetworks
AT elmiloudjaara textureimagesegmentationapproachbasedonneuralnetworks
AT mohammedtalibialaoui textureimagesegmentationapproachbasedonneuralnetworks
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