Face Recognition System for Real Life Applications using Augmentation Techniques

Author:

Mishra Namrata,Karthikeyan H.,Jayantix Tanya

Abstract

A facial recognition system may recognise a person by comparing his face to the ones in a database of faces taken from a digital image or video frame. It is primarily used to verify the identity of users by analysing facial features from an image. According to several studies, facial recognition technology has made enormous strides with the growth of science and technology, but there is still opportunity for its improvement in practical use. Some issues like rotation, occlusion, and meta learning approach can be handled for improved model accuracy by using 3D technologies like image augmentation to supplement 2D images. Today's facial recognition technology can be used for more than only identifying people; it can also be used for security purposes in residential, business, and commercial applications. Due to its convenience, face recognition technology is widely employed in the financial sector as well. This research proposes face recognition for real life applications using Siamese network and Deep Neural Network, Facenet.

Publisher

Inventive Research Organization

Subject

General Agricultural and Biological Sciences

Reference12 articles.

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