Face Recognition by Combining Neural Network based on Mixture of Experts
This paper proposed a new method for face recognition with principal component analysis in the feature extraction phase, and devised a modified version of Mixture of Experts in which each expert is an MLP, instead of linear networks in order to improve the performance of the expert networks, and con...
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Shahid Rajaee Teacher Training University (SRTTU)
2008-12-01
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doaj-3b7c4ae4e7a64701b00850a0311610a12021-06-12T07:14:09ZfasShahid Rajaee Teacher Training University (SRTTU)Fanāvarī-i āmūzish2008-04412345-54622008-12-0131273810.22061/tej.2008.13131313Face Recognition by Combining Neural Network based on Mixture of ExpertsR. Ebrahimpour0N. Taheri Makhsous1A. Hajiani2Faculty of Computer Engineering, Shahid Rajaei Teacher Training University, Tehran, IranFaculty of Computer Engineering, Shahid Rajaei Teacher Training University, Tehran, IranFaculty of Computer Engineering, Shahid Rajaei Teacher Training University, Tehran, IranThis paper proposed a new method for face recognition with principal component analysis in the feature extraction phase, and devised a modified version of Mixture of Experts in which each expert is an MLP, instead of linear networks in order to improve the performance of the expert networks, and consequently the whole network performance; Therewith, we use a Momentum term in training the MLP experts, which speeds up the adjustment of weight greatly. We explore three different Mixture of Experts constructing a neural network. Our proposed model, achieved a correct recognition rate on Yale and ORL datasets. Comparisons with other algorithms demonstrate that our method performs better in terms of higher recognition rate, with smaller number of epochs in human face recognition.https://jte.sru.ac.ir/article_1313_55e2f9282ad6e579e4586410026e216e.pdfrecognition of facesmixing of expertstorque unitanalysis of basic components |
collection |
DOAJ |
language |
fas |
format |
Article |
sources |
DOAJ |
author |
R. Ebrahimpour N. Taheri Makhsous A. Hajiani |
spellingShingle |
R. Ebrahimpour N. Taheri Makhsous A. Hajiani Face Recognition by Combining Neural Network based on Mixture of Experts Fanāvarī-i āmūzish recognition of faces mixing of experts torque unit analysis of basic components |
author_facet |
R. Ebrahimpour N. Taheri Makhsous A. Hajiani |
author_sort |
R. Ebrahimpour |
title |
Face Recognition by Combining Neural Network based on Mixture of Experts |
title_short |
Face Recognition by Combining Neural Network based on Mixture of Experts |
title_full |
Face Recognition by Combining Neural Network based on Mixture of Experts |
title_fullStr |
Face Recognition by Combining Neural Network based on Mixture of Experts |
title_full_unstemmed |
Face Recognition by Combining Neural Network based on Mixture of Experts |
title_sort |
face recognition by combining neural network based on mixture of experts |
publisher |
Shahid Rajaee Teacher Training University (SRTTU) |
series |
Fanāvarī-i āmūzish |
issn |
2008-0441 2345-5462 |
publishDate |
2008-12-01 |
description |
This paper proposed a new method for face recognition with principal component analysis in the feature extraction phase, and devised a modified version of Mixture of Experts in which each expert is an MLP, instead of linear networks in order to improve the performance of the expert networks, and consequently the whole network performance; Therewith, we use a Momentum term in training the MLP experts, which speeds up the adjustment of weight greatly. We explore three different Mixture of Experts constructing a neural network. Our proposed model, achieved a correct recognition rate on Yale and ORL datasets. Comparisons with other algorithms demonstrate that our method performs better in terms of higher recognition rate, with smaller number of epochs in human face recognition. |
topic |
recognition of faces mixing of experts torque unit analysis of basic components |
url |
https://jte.sru.ac.ir/article_1313_55e2f9282ad6e579e4586410026e216e.pdf |
work_keys_str_mv |
AT rebrahimpour facerecognitionbycombiningneuralnetworkbasedonmixtureofexperts AT ntaherimakhsous facerecognitionbycombiningneuralnetworkbasedonmixtureofexperts AT ahajiani facerecognitionbycombiningneuralnetworkbasedonmixtureofexperts |
_version_ |
1721380913925849088 |