Frontal and non-frontal face detection using deep neural networks (DNN)

Face recognition has always been one of the most searched and popular applications of object detection, starting from the early seventies. Facial recognition is used for access control, authentication, fraud detection, surveillance, and by individuals to unlock their devices. The less intrusive and...

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Main Authors: N. Prasad, B. Rajpal, K. K. R. Mangalore, R. Shastri, N. Pradeep
Format: Article
Language:English
Published: Ayandegan Institute of Higher Education, 2021-03-01
Series:International Journal of Research in Industrial Engineering
Subjects:
Online Access:http://www.riejournal.com/article_122236_f083509815545e716ec35e8475a2c894.pdf
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spelling doaj-9faf1ef529e44bc88044e04fcf8cff462021-09-06T05:52:18ZengAyandegan Institute of Higher Education,International Journal of Research in Industrial Engineering2783-13372717-29372021-03-0110192110.22105/riej.2021.264744.1177122236Frontal and non-frontal face detection using deep neural networks (DNN)N. Prasad0B. Rajpal1K. K. R. Mangalore2R. Shastri3N. Pradeep4Department of MCA, School of Computer Science and IT, Jain (deemed-to-be) University, Bengaluru, India.Department of MCA, School of Computer Science and IT, Jain (deemed-to-be) University, Bengaluru, India.Department of MCA, School of Computer Science and IT, Jain (deemed-to-be) University, Bengaluru, India.Department of MCA, School of Computer Science and IT, Jain (deemed-to-be) University, Bengaluru, India.Department of MCA, School of Computer Science and IT, Jain (deemed-to-be) University, Bengaluru, India.Face recognition has always been one of the most searched and popular applications of object detection, starting from the early seventies. Facial recognition is used for access control, authentication, fraud detection, surveillance, and by individuals to unlock their devices. The less intrusive and robustness of the face detection systems, make it better than the fingerprint scanner and iris scanner. The frontal face can be easily detected, but multi-view face detection remains a difficult task, due to various factors like illumination, various poses, occlusions, and facial expressions. In this paper, we propose a Deep Neural Network (DNN) based approach to improve the accuracy of detection of the face. We show that Deep Neural Networks algorithms have better accuracy than traditional face detection algorithms for multi-view face detection. The Deep Neural Network (DNN) gives more precise and accurate results, as the DNN model is trained with large datasets and, the model learns the best features from the dataset.http://www.riejournal.com/article_122236_f083509815545e716ec35e8475a2c894.pdfface recognitiondeep neural networks (dnn)opencvnumpypycharmpythonmachine learning
collection DOAJ
language English
format Article
sources DOAJ
author N. Prasad
B. Rajpal
K. K. R. Mangalore
R. Shastri
N. Pradeep
spellingShingle N. Prasad
B. Rajpal
K. K. R. Mangalore
R. Shastri
N. Pradeep
Frontal and non-frontal face detection using deep neural networks (DNN)
International Journal of Research in Industrial Engineering
face recognition
deep neural networks (dnn)
opencv
numpy
pycharm
python
machine learning
author_facet N. Prasad
B. Rajpal
K. K. R. Mangalore
R. Shastri
N. Pradeep
author_sort N. Prasad
title Frontal and non-frontal face detection using deep neural networks (DNN)
title_short Frontal and non-frontal face detection using deep neural networks (DNN)
title_full Frontal and non-frontal face detection using deep neural networks (DNN)
title_fullStr Frontal and non-frontal face detection using deep neural networks (DNN)
title_full_unstemmed Frontal and non-frontal face detection using deep neural networks (DNN)
title_sort frontal and non-frontal face detection using deep neural networks (dnn)
publisher Ayandegan Institute of Higher Education,
series International Journal of Research in Industrial Engineering
issn 2783-1337
2717-2937
publishDate 2021-03-01
description Face recognition has always been one of the most searched and popular applications of object detection, starting from the early seventies. Facial recognition is used for access control, authentication, fraud detection, surveillance, and by individuals to unlock their devices. The less intrusive and robustness of the face detection systems, make it better than the fingerprint scanner and iris scanner. The frontal face can be easily detected, but multi-view face detection remains a difficult task, due to various factors like illumination, various poses, occlusions, and facial expressions. In this paper, we propose a Deep Neural Network (DNN) based approach to improve the accuracy of detection of the face. We show that Deep Neural Networks algorithms have better accuracy than traditional face detection algorithms for multi-view face detection. The Deep Neural Network (DNN) gives more precise and accurate results, as the DNN model is trained with large datasets and, the model learns the best features from the dataset.
topic face recognition
deep neural networks (dnn)
opencv
numpy
pycharm
python
machine learning
url http://www.riejournal.com/article_122236_f083509815545e716ec35e8475a2c894.pdf
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