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IJSTR >> Volume 9 - Issue 7, July 2020 Edition



International Journal of Scientific & Technology Research  
International Journal of Scientific & Technology Research

Website: http://www.ijstr.org

ISSN 2277-8616



A Proposed Framework: Face Recognition With Deep Learning

[Full Text]

 

AUTHOR(S)

Michael Farayola, Aman Dureja

 

KEYWORDS

Deep Learning, Face Recognition, Metric Learning, TensorFlow

 

ABSTRACT

Face recognition is the capability to ascertain the identification of a person solitary or amidst multitudes of individuals. In lieu to this, deep learning has dominated and it has been used in recent years due to its momentous performance to solve the face recognition challenges using convolutional neural networks (CNN). It is a technology with enormous capabilities and diversities used in computer vison problems such as modelling and saliency detection, semantic segmentation, handwriting digital recognition, emotion recognition and many more. CNN architectures such has Alex Net, VGG are the practically known architectures that have immensely prompt new dataset for CNN model designs. This paper contributes to actualization of a propose CNN based on a pre-trained VGG Face for face recognition from set of faces tracked in video or image capture achieving a 97% accuracy. Also, implementing the use of metric learning to actualized a discriminative feature from our instances.

 

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[36] Michael Farayola is pursuing his Master of Technology degree in Computer Science and Engineering from PDM University, India. He received his Bachelor of Technology degree in Pure and Applied Mathematics in 2015 from FUTMINNA, Nigeria. He has published a paper in a reputed international journal. His research interests include data science, machine learning and face recognition. E.mail: mayostictos3@gmail.com .
[37] Aman Dureja is pursuing his PhD from GGSIPU, New Delhi. He received his Master of Technology degree from MDU University in year 2010 and Bachelor of Technology from Bhiwani Institute of Technology and Sciences in year 2007. Currently working as Assistant Professor in Department of Computer Science and Engineering, PDM University since 2010. He has published more than 20 research papers in reputed International Journals including Scopus Indexed and conferences including IEEE. His main research work focuses on machine learning and deep learning. Email: aman_engg@pdm.ac.i