Hellinger Distance Decision Tree (HDDT) Classification of Gender with Imbalance Statistical Face Features

Face recognition is one of the technologies used for assets protection. Face recognition also presents a challenging problem in the field of image and computer vision and has been used for the application such as face tracking and personal identification. It also frequently used in a security system...

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Main Authors: Balkiah Moktar, Muhamad Hasbullah Mohd Razali, Muhammad Farhan Muhammad
Format: Article
Language:English
Published: Faculty of Computer and Mathematical Sciences, Universiti Teknologi MARA Perlis 2018-11-01
Series:Journal of Computing Research and Innovation
Subjects:
Online Access:https://crinn.conferencehunter.com/index.php/jcrinn/article/view/75
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spelling doaj-9896de17ca404014a9d6baa33b6be0e62021-02-01T02:31:27ZengFaculty of Computer and Mathematical Sciences, Universiti Teknologi MARA PerlisJournal of Computing Research and Innovation2600-87932018-11-0134394460Hellinger Distance Decision Tree (HDDT) Classification of Gender with Imbalance Statistical Face FeaturesBalkiah Moktar0Muhamad Hasbullah Mohd RazaliMuhammad Farhan Muhammadmrs.Face recognition is one of the technologies used for assets protection. Face recognition also presents a challenging problem in the field of image and computer vision and has been used for the application such as face tracking and personal identification. It also frequently used in a security system such as a security camera in airport, banks, and offices. Practically, there are problems in improving face recognition performance, particularly for gender identification. It is very difficult to differentiate the person based on face appearance from different poses, lighting, expressions, aging and illumination.  Sometimes it is also difficult to identify the shape of human faces because different people have a different structure of faces. This study used image retrieved from Student Information Management Systems (SIMS)from 10 male and 43 female students who're taking MAT530. The image was then generated 12 geometric landmarks using TI nspire software. The main goal of this research is to classify the gender through the images of faces and to resolve for imbalance data using Hellinger Distance Decision Tree (HDDT) classifier. This classifier was proposed as an alternative to decision tree technique which used Hellinger Distance as the splitting criteria. The result from the validation split shows that percentage split at 40% produced the highest value of accuracy rate at 77.2727% and has the most significant value of sensitivity and specificityhttps://crinn.conferencehunter.com/index.php/jcrinn/article/view/75face recognitionhddtfacial recognitionimage recognitionclassification
collection DOAJ
language English
format Article
sources DOAJ
author Balkiah Moktar
Muhamad Hasbullah Mohd Razali
Muhammad Farhan Muhammad
spellingShingle Balkiah Moktar
Muhamad Hasbullah Mohd Razali
Muhammad Farhan Muhammad
Hellinger Distance Decision Tree (HDDT) Classification of Gender with Imbalance Statistical Face Features
Journal of Computing Research and Innovation
face recognition
hddt
facial recognition
image recognition
classification
author_facet Balkiah Moktar
Muhamad Hasbullah Mohd Razali
Muhammad Farhan Muhammad
author_sort Balkiah Moktar
title Hellinger Distance Decision Tree (HDDT) Classification of Gender with Imbalance Statistical Face Features
title_short Hellinger Distance Decision Tree (HDDT) Classification of Gender with Imbalance Statistical Face Features
title_full Hellinger Distance Decision Tree (HDDT) Classification of Gender with Imbalance Statistical Face Features
title_fullStr Hellinger Distance Decision Tree (HDDT) Classification of Gender with Imbalance Statistical Face Features
title_full_unstemmed Hellinger Distance Decision Tree (HDDT) Classification of Gender with Imbalance Statistical Face Features
title_sort hellinger distance decision tree (hddt) classification of gender with imbalance statistical face features
publisher Faculty of Computer and Mathematical Sciences, Universiti Teknologi MARA Perlis
series Journal of Computing Research and Innovation
issn 2600-8793
publishDate 2018-11-01
description Face recognition is one of the technologies used for assets protection. Face recognition also presents a challenging problem in the field of image and computer vision and has been used for the application such as face tracking and personal identification. It also frequently used in a security system such as a security camera in airport, banks, and offices. Practically, there are problems in improving face recognition performance, particularly for gender identification. It is very difficult to differentiate the person based on face appearance from different poses, lighting, expressions, aging and illumination.  Sometimes it is also difficult to identify the shape of human faces because different people have a different structure of faces. This study used image retrieved from Student Information Management Systems (SIMS)from 10 male and 43 female students who're taking MAT530. The image was then generated 12 geometric landmarks using TI nspire software. The main goal of this research is to classify the gender through the images of faces and to resolve for imbalance data using Hellinger Distance Decision Tree (HDDT) classifier. This classifier was proposed as an alternative to decision tree technique which used Hellinger Distance as the splitting criteria. The result from the validation split shows that percentage split at 40% produced the highest value of accuracy rate at 77.2727% and has the most significant value of sensitivity and specificity
topic face recognition
hddt
facial recognition
image recognition
classification
url https://crinn.conferencehunter.com/index.php/jcrinn/article/view/75
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AT muhamadhasbullahmohdrazali hellingerdistancedecisiontreehddtclassificationofgenderwithimbalancestatisticalfacefeatures
AT muhammadfarhanmuhammad hellingerdistancedecisiontreehddtclassificationofgenderwithimbalancestatisticalfacefeatures
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