Comparison Between Face and Gait Human Recognition Using Enhanced Convolutional Neural Network

Identifying people at distance is an important task in daily life Because of the increase in terrorism. Biometrics is a better solution to overcome personal identity problems, and this applies to soft biometrics also. Soft biometric are features that can be extracted remotely and do not require coo...

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Main Authors: Fatima Esmail Sadeq, Ziyad Tariq Mustafa Al-Ta'i
Format: Article
Language:English
Published: Yayasan Pendidikan Riset dan Pengembangan Intelektual (YRPI) 2023-12-01
Series:Journal of Applied Engineering and Technological Science
Subjects:
Online Access:https://www.yrpipku.com/journal/index.php/jaets/article/view/2806
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author Fatima Esmail Sadeq
Ziyad Tariq Mustafa Al-Ta'i
author_facet Fatima Esmail Sadeq
Ziyad Tariq Mustafa Al-Ta'i
author_sort Fatima Esmail Sadeq
collection DOAJ
description Identifying people at distance is an important task in daily life Because of the increase in terrorism. Biometrics is a better solution to overcome personal identity problems, and this applies to soft biometrics also. Soft biometric are features that can be extracted remotely and do not require cooperation with people. This paper introduces a comparison between human face recognition and human gait recognition using soft biometric features. Nine face attributes and nine gait attributes are taken from a dataset built by researchers. The constructed dataset is composed from (66) videos for (33) persons. Features are extracted using Haar and MediaPipe methods. The extracted features are classified using enhanced convolutional neural network. This work achieves an accuracy of 95.832% in human face recognition and an accuracy of 89.583% in human gait recognition. From the above results it turns out that the proposed method achieved promising results with regard to Recognize people remotely
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spelling doaj.art-abb8f77d78e642f484b841b4776ece0d2024-04-14T12:08:00ZengYayasan Pendidikan Riset dan Pengembangan Intelektual (YRPI)Journal of Applied Engineering and Technological Science2715-60872715-60792023-12-015110.37385/jaets.v5i1.2806Comparison Between Face and Gait Human Recognition Using Enhanced Convolutional Neural NetworkFatima Esmail Sadeq0Ziyad Tariq Mustafa Al-Ta'i1University of DiyalaUniversity of Diyala Identifying people at distance is an important task in daily life Because of the increase in terrorism. Biometrics is a better solution to overcome personal identity problems, and this applies to soft biometrics also. Soft biometric are features that can be extracted remotely and do not require cooperation with people. This paper introduces a comparison between human face recognition and human gait recognition using soft biometric features. Nine face attributes and nine gait attributes are taken from a dataset built by researchers. The constructed dataset is composed from (66) videos for (33) persons. Features are extracted using Haar and MediaPipe methods. The extracted features are classified using enhanced convolutional neural network. This work achieves an accuracy of 95.832% in human face recognition and an accuracy of 89.583% in human gait recognition. From the above results it turns out that the proposed method achieved promising results with regard to Recognize people remotely https://www.yrpipku.com/journal/index.php/jaets/article/view/2806Soft biometricsFace RecognitionGait RecognitionMediaPipeConvolutional Neural Network
spellingShingle Fatima Esmail Sadeq
Ziyad Tariq Mustafa Al-Ta'i
Comparison Between Face and Gait Human Recognition Using Enhanced Convolutional Neural Network
Journal of Applied Engineering and Technological Science
Soft biometrics
Face Recognition
Gait Recognition
MediaPipe
Convolutional Neural Network
title Comparison Between Face and Gait Human Recognition Using Enhanced Convolutional Neural Network
title_full Comparison Between Face and Gait Human Recognition Using Enhanced Convolutional Neural Network
title_fullStr Comparison Between Face and Gait Human Recognition Using Enhanced Convolutional Neural Network
title_full_unstemmed Comparison Between Face and Gait Human Recognition Using Enhanced Convolutional Neural Network
title_short Comparison Between Face and Gait Human Recognition Using Enhanced Convolutional Neural Network
title_sort comparison between face and gait human recognition using enhanced convolutional neural network
topic Soft biometrics
Face Recognition
Gait Recognition
MediaPipe
Convolutional Neural Network
url https://www.yrpipku.com/journal/index.php/jaets/article/view/2806
work_keys_str_mv AT fatimaesmailsadeq comparisonbetweenfaceandgaithumanrecognitionusingenhancedconvolutionalneuralnetwork
AT ziyadtariqmustafaaltai comparisonbetweenfaceandgaithumanrecognitionusingenhancedconvolutionalneuralnetwork