Multi-step face recognition for improving face detection and recognition rate

Face detection at a distance is difficult owing to low-resolution images and blurring. For this reason, the traditional face recognition process has a low face detection rate and face recognition rate. Here, we propose a multi-step face recognition system, obtaining highresolution images using minim...

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Main Authors: Altayeva A., Omarov B., Jeong H.C., Cho Y.I.
Other Authors: 56128042000
Format: Article
Published: Pushpa Publishing House 2023
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author Altayeva A.
Omarov B.
Jeong H.C.
Cho Y.I.
author2 56128042000
author_facet 56128042000
Altayeva A.
Omarov B.
Jeong H.C.
Cho Y.I.
author_sort Altayeva A.
building UNITEN Library
collection Institutional Repository
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
continent Asia
country Malaysia
description Face detection at a distance is difficult owing to low-resolution images and blurring. For this reason, the traditional face recognition process has a low face detection rate and face recognition rate. Here, we propose a multi-step face recognition system, obtaining highresolution images using minimization and reliable regularization on the basis of bilateral filtering to deal with a variety of data and noise models. The main concept of our proposed system is to improve face recognition and detection rates using a multi-step face recognition process. The first step in our system is to use image restoration techniques on degraded and blurred images, eliminate noise, and apply superresolution algorithms after detection. The second step is to send the restored images from the first step to the face recognition process. The simulation results show that the face detection and recognition rates of our system are 74% and 54%, respectively. By contrast, these metrics for the single-step face recognition system are 23% and 8%, respectively. As a result, our proposed system produces better results than the single-step face recognition system. We theoretically justified and simulated our system with real-world outdoor video using a PTZ camera and a face recognition engine. Image identification before and after restoration is achieved using certain classification tools and methods. The experimental results demonstrate that our proposed system improved the recognition performance and the quality of the image. � 2016 Pushpa Publishing House, Allahabad, India.
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spelling my.uniten.dspace-226642023-05-29T14:11:32Z Multi-step face recognition for improving face detection and recognition rate Altayeva A. Omarov B. Jeong H.C. Cho Y.I. 56128042000 57202103462 7401619968 15764374600 Face detection at a distance is difficult owing to low-resolution images and blurring. For this reason, the traditional face recognition process has a low face detection rate and face recognition rate. Here, we propose a multi-step face recognition system, obtaining highresolution images using minimization and reliable regularization on the basis of bilateral filtering to deal with a variety of data and noise models. The main concept of our proposed system is to improve face recognition and detection rates using a multi-step face recognition process. The first step in our system is to use image restoration techniques on degraded and blurred images, eliminate noise, and apply superresolution algorithms after detection. The second step is to send the restored images from the first step to the face recognition process. The simulation results show that the face detection and recognition rates of our system are 74% and 54%, respectively. By contrast, these metrics for the single-step face recognition system are 23% and 8%, respectively. As a result, our proposed system produces better results than the single-step face recognition system. We theoretically justified and simulated our system with real-world outdoor video using a PTZ camera and a face recognition engine. Image identification before and after restoration is achieved using certain classification tools and methods. The experimental results demonstrate that our proposed system improved the recognition performance and the quality of the image. � 2016 Pushpa Publishing House, Allahabad, India. Final 2023-05-29T06:11:32Z 2023-05-29T06:11:32Z 2016 Article 10.17654/EC016030471 2-s2.0-84988910970 https://www.scopus.com/inward/record.uri?eid=2-s2.0-84988910970&doi=10.17654%2fEC016030471&partnerID=40&md5=9e1879d9cac320d8defc2afa7a7108ff https://irepository.uniten.edu.my/handle/123456789/22664 16 3 471 491 Pushpa Publishing House Scopus
spellingShingle Altayeva A.
Omarov B.
Jeong H.C.
Cho Y.I.
Multi-step face recognition for improving face detection and recognition rate
title Multi-step face recognition for improving face detection and recognition rate
title_full Multi-step face recognition for improving face detection and recognition rate
title_fullStr Multi-step face recognition for improving face detection and recognition rate
title_full_unstemmed Multi-step face recognition for improving face detection and recognition rate
title_short Multi-step face recognition for improving face detection and recognition rate
title_sort multi-step face recognition for improving face detection and recognition rate
url_provider http://dspace.uniten.edu.my/