Fuzzy Wavenet (FWN) classifier for medical images

      The combination of wavelet theory and neural networks has lead to the development of wavelet networks. Wavelet networks are feed-forward neural networks using wavelets as activation function. Wavelets networks have been used in classification and identification problems with some success....

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Main Authors: Walid .A. Mahmoud, Dr.A. barsoum, Entather Mahos
Format: Article
Language:English
Published: Al-Khwarizmi College of Engineering – University of Baghdad 2017-12-01
Series:Al-Khawarizmi Engineering Journal
Subjects:
Online Access:http://alkej.uobaghdad.edu.iq/index.php/alkej/article/view/8
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spelling doaj-d1f4dc18fc344688af9890d7530500942020-11-24T21:22:09Zeng Al-Khwarizmi College of Engineering – University of BaghdadAl-Khawarizmi Engineering Journal1818-11712312-07892017-12-0112Fuzzy Wavenet (FWN) classifier for medical imagesWalid .A. Mahmoud0Dr.A. barsoum1Entather Mahos2Electrical Engineering Department College of Engineering/ University of BaghdadElectrical Engineering Department University of technologyElectrical Engineering Department University of technology      The combination of wavelet theory and neural networks has lead to the development of wavelet networks. Wavelet networks are feed-forward neural networks using wavelets as activation function. Wavelets networks have been used in classification and identification problems with some success.   In this work we proposed a fuzzy wavenet network (FWN), which learns by common back-propagation algorithm to classify medical images. The library of medical image has been analyzed, first. Second, Two experimental tables’ rules provide an excellent opportunity to test the ability of fuzzy wavenet network due to the high level of information variability often experienced with this type of images.  We have known that the wavelet transformation is more accurate in small dimension problem. But image processing is large dimension problem then we used neural network. Results are presented on the application on the three layer fuzzy wavenet to vision system. They demonstrate a considerable improvement in performance by proposed two table’s rule for fuzzy and deterministic dilation and translation in wavelet transformation techniques.        http://alkej.uobaghdad.edu.iq/index.php/alkej/article/view/8Keywords: Fuzzy Theory, Neural Network, Wavelet Transform, and Back Propagation Algorithm
collection DOAJ
language English
format Article
sources DOAJ
author Walid .A. Mahmoud
Dr.A. barsoum
Entather Mahos
spellingShingle Walid .A. Mahmoud
Dr.A. barsoum
Entather Mahos
Fuzzy Wavenet (FWN) classifier for medical images
Al-Khawarizmi Engineering Journal
Keywords: Fuzzy Theory, Neural Network, Wavelet Transform, and Back Propagation Algorithm
author_facet Walid .A. Mahmoud
Dr.A. barsoum
Entather Mahos
author_sort Walid .A. Mahmoud
title Fuzzy Wavenet (FWN) classifier for medical images
title_short Fuzzy Wavenet (FWN) classifier for medical images
title_full Fuzzy Wavenet (FWN) classifier for medical images
title_fullStr Fuzzy Wavenet (FWN) classifier for medical images
title_full_unstemmed Fuzzy Wavenet (FWN) classifier for medical images
title_sort fuzzy wavenet (fwn) classifier for medical images
publisher Al-Khwarizmi College of Engineering – University of Baghdad
series Al-Khawarizmi Engineering Journal
issn 1818-1171
2312-0789
publishDate 2017-12-01
description       The combination of wavelet theory and neural networks has lead to the development of wavelet networks. Wavelet networks are feed-forward neural networks using wavelets as activation function. Wavelets networks have been used in classification and identification problems with some success.   In this work we proposed a fuzzy wavenet network (FWN), which learns by common back-propagation algorithm to classify medical images. The library of medical image has been analyzed, first. Second, Two experimental tables’ rules provide an excellent opportunity to test the ability of fuzzy wavenet network due to the high level of information variability often experienced with this type of images.  We have known that the wavelet transformation is more accurate in small dimension problem. But image processing is large dimension problem then we used neural network. Results are presented on the application on the three layer fuzzy wavenet to vision system. They demonstrate a considerable improvement in performance by proposed two table’s rule for fuzzy and deterministic dilation and translation in wavelet transformation techniques.       
topic Keywords: Fuzzy Theory, Neural Network, Wavelet Transform, and Back Propagation Algorithm
url http://alkej.uobaghdad.edu.iq/index.php/alkej/article/view/8
work_keys_str_mv AT walidamahmoud fuzzywavenetfwnclassifierformedicalimages
AT drabarsoum fuzzywavenetfwnclassifierformedicalimages
AT entathermahos fuzzywavenetfwnclassifierformedicalimages
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