FACE RECOGNITION BY USING NEURAL NETWORK
Now a day’s security is a big issue, the whole world has been working on the face recognition techniques as face is used for the extraction of facial features. An analysis has been done of the commonly used face recognition techniques. This paper presents a system for the recognition of face for ide...
Main Authors: | , |
---|---|
Format: | Article |
Language: | English |
Published: |
Zibeline International
2019-08-01
|
Series: | Acta Informatica Malaysia |
Subjects: | |
Online Access: | https://actainformaticamalaysia.com/archives/AIM/2aim2019/2aim2019-07-09.pdf |
id |
doaj-2fee0eb0f60e45c7993a6a7aac8abe33 |
---|---|
record_format |
Article |
spelling |
doaj-2fee0eb0f60e45c7993a6a7aac8abe332020-11-25T01:40:27ZengZibeline InternationalActa Informatica Malaysia2521-08742521-05052019-08-0132070910.26480/aim.02.2019.07.09FACE RECOGNITION BY USING NEURAL NETWORKSomya RastogiShivani ChoudharyNow a day’s security is a big issue, the whole world has been working on the face recognition techniques as face is used for the extraction of facial features. An analysis has been done of the commonly used face recognition techniques. This paper presents a system for the recognition of face for identification and verification purposes by using Principal Component Analysis (PCA) with Back Propagation Neural Networks (BPNN) and the implementation of face recognition system is done by using neural network. The use of neural network is to produce an output pattern from input pattern. This system for facial recognition is implemented in MATLAB using neural networks toolbox. Back propagation Neural Network is multi-layered network in which weights are fixed but adjustment of weights can be done on the basis of sigmoidal function. This algorithm is a learning algorithm to train input and output data set. It also calculates how the error changes when weights are increased or decreased. This paper consists of background and future perspective of face recognition techniques and how these techniques can be improved.https://actainformaticamalaysia.com/archives/AIM/2aim2019/2aim2019-07-09.pdfANNBPNNNLPPCAResilient Back propagation |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Somya Rastogi Shivani Choudhary |
spellingShingle |
Somya Rastogi Shivani Choudhary FACE RECOGNITION BY USING NEURAL NETWORK Acta Informatica Malaysia ANN BPNN NLP PCA Resilient Back propagation |
author_facet |
Somya Rastogi Shivani Choudhary |
author_sort |
Somya Rastogi |
title |
FACE RECOGNITION BY USING NEURAL NETWORK |
title_short |
FACE RECOGNITION BY USING NEURAL NETWORK |
title_full |
FACE RECOGNITION BY USING NEURAL NETWORK |
title_fullStr |
FACE RECOGNITION BY USING NEURAL NETWORK |
title_full_unstemmed |
FACE RECOGNITION BY USING NEURAL NETWORK |
title_sort |
face recognition by using neural network |
publisher |
Zibeline International |
series |
Acta Informatica Malaysia |
issn |
2521-0874 2521-0505 |
publishDate |
2019-08-01 |
description |
Now a day’s security is a big issue, the whole world has been working on the face recognition techniques as face is used for the extraction of facial features. An analysis has been done of the commonly used face recognition techniques. This paper presents a system for the recognition of face for identification and verification purposes by using Principal Component Analysis (PCA) with Back Propagation Neural Networks (BPNN) and the implementation of face recognition system is done by using neural network. The use of neural network is to produce an output pattern from input pattern. This system for facial recognition is implemented in MATLAB using neural networks toolbox. Back propagation Neural Network is multi-layered network in which weights are fixed but adjustment of weights can be done on the basis of sigmoidal function. This algorithm is a learning algorithm to train input and output data set. It also calculates how the error changes when weights are increased or decreased. This paper consists of background and future perspective of face recognition techniques and how these techniques can be improved. |
topic |
ANN BPNN NLP PCA Resilient Back propagation |
url |
https://actainformaticamalaysia.com/archives/AIM/2aim2019/2aim2019-07-09.pdf |
work_keys_str_mv |
AT somyarastogi facerecognitionbyusingneuralnetwork AT shivanichoudhary facerecognitionbyusingneuralnetwork |
_version_ |
1725045718348988416 |