Harris Hawks Optimization Method based on Convolutional Neural Network for Face Recognition Systems

This paper discusses the momentum gradient dependent on the convolutional neural organization’s strong point. It is a new methodology introduced to detect evenness in the data set of faces. The proposed face recognition framework was created for various purposes. Through Gabor wavelet change, facial evenness was extracted from the face-preparing information. After that, we applied a profound learning process to carry out verification. After applying the proposed method to YALE and ORL data sets, we simulated them using MATLAB 2021a. Before this, similar trials were directly applied through Harris Hawks Optimization (HHO) for including the determination approach. The extraction process was conducted with many picture tests to execute the Gabor wavelet method, which proved more viable than other strategies applied in our examination. When we applied the HHO on the ORL dataset, the acknowledgment rate was 93.63%. It was 94.26% when the three techniques were applied to the YALE dataset. It shows that the HHO calculation improved the exactness rate to 96.44% in the case of the YALE dataset and 95.88% in the ORL dataset

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Eser Adı
(dc.title)
Harris Hawks Optimization Method based on Convolutional Neural Network for Face Recognition Systems
Yayıncı
(dc.publisher)
Institute of Electrical and Electronics Engineers Inc.
Yazar
(dc.contributor.author)
Cevat Rahebi
Açık Erişim Tarihi
(dc.date.available)
2022-06-11
Yayın Yılı
(dc.date.issued)
2022
Tek Biçim Adres
(dc.identifier.uri)
https://hdl.handle.net/20.500.14081/1657
Dil
(dc.language.iso)
En
Konu Başlıkları
(dc.subject)
Face recognition
Konu Başlıkları
(dc.subject)
Convolutional neural network
Konu Başlıkları
(dc.subject)
Momentum gradient
Tür
(dc.type)
Kitap Bölümü
ISBN
(dc.identifier.isbn)
978-166546835-0
DOI
(dc.identifier.doi)
10.1109/HORA55278.2022.9799955
Orcid
(dc.identifier.orcid)
0000-0001-9875-4860
Özet
(dc.description.abstract)
This paper discusses the momentum gradient dependent on the convolutional neural organization’s strong point. It is a new methodology introduced to detect evenness in the data set of faces. The proposed face recognition framework was created for various purposes. Through Gabor wavelet change, facial evenness was extracted from the face-preparing information. After that, we applied a profound learning process to carry out verification. After applying the proposed method to YALE and ORL data sets, we simulated them using MATLAB 2021a. Before this, similar trials were directly applied through Harris Hawks Optimization (HHO) for including the determination approach. The extraction process was conducted with many picture tests to execute the Gabor wavelet method, which proved more viable than other strategies applied in our examination. When we applied the HHO on the ORL dataset, the acknowledgment rate was 93.63%. It was 94.26% when the three techniques were applied to the YALE dataset. It shows that the HHO calculation improved the exactness rate to 96.44% in the case of the YALE dataset and 95.88% in the ORL dataset
Esere Katkı Sağlayan
(dc.contributor.other)
Sulayman Ahmed
Esere Katkı Sağlayan
(dc.contributor.other)
Mondher Frikha
Esere Katkı Sağlayan
(dc.contributor.other)
Taha Darwassh Hanawy Hussein
Department
(dc.contributor.department)
Yazılım Mühendisliği
Dergi
(dc.relation.journal)
HORA 2022 - 4th International Congress on Human-Computer Interaction, Optimization and Robotic Applications, Proceedings
Veritabanları
(dc.source.platform)
Scopus
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