Age prediction based on skin

Skin is the most easily seen organ. The different visual properties of skin could be attributed to physio-anatomical differences in between individuals. There are several factors that could affect the skin visual properties, including but not limited to environment and hormone. The work prese...

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Bibliographic Details
Main Author: Asvega.
Other Authors: Kong Wai-Kin Adams
Format: Final Year Project (FYP)
Language:English
Published: 2010
Subjects:
Online Access:http://hdl.handle.net/10356/36243
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author Asvega.
author2 Kong Wai-Kin Adams
author_facet Kong Wai-Kin Adams
Asvega.
author_sort Asvega.
collection NTU
description Skin is the most easily seen organ. The different visual properties of skin could be attributed to physio-anatomical differences in between individuals. There are several factors that could affect the skin visual properties, including but not limited to environment and hormone. The work presented in this thesis is an experiment to determine whether it is feasible to classify if a skin sample belongs to a child below up to 13-year-old or to an adult above 13-year-old. The sum of hair and average hair density on a skin sample is used to classify. This is because hair is noticeably affected by the change in hormone during puberty. For determining the classification performance of the system two databases of digitalised skin sample photographs were used. The photographs were manually processed to produce the desired skin sample databases. The hair map was automatically extracted from a skin sample to be processed to produce sum of hair and average hair density from the respective skin sample. The sum of hair and average hair density will then be used to classify whether the skin sample belongs to children or adult using Support vector machine classification. Probability distribution function and Gaussian function were then employed to find out whether the probability of correct classification is at least 60% accurate. The experiment was performed on 160 skin samples photographs. The probability of correct classification of the age group was at least 68.75%.
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spelling ntu-10356/362432023-03-03T20:54:56Z Age prediction based on skin Asvega. Kong Wai-Kin Adams School of Computer Engineering DRNTU::Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision Skin is the most easily seen organ. The different visual properties of skin could be attributed to physio-anatomical differences in between individuals. There are several factors that could affect the skin visual properties, including but not limited to environment and hormone. The work presented in this thesis is an experiment to determine whether it is feasible to classify if a skin sample belongs to a child below up to 13-year-old or to an adult above 13-year-old. The sum of hair and average hair density on a skin sample is used to classify. This is because hair is noticeably affected by the change in hormone during puberty. For determining the classification performance of the system two databases of digitalised skin sample photographs were used. The photographs were manually processed to produce the desired skin sample databases. The hair map was automatically extracted from a skin sample to be processed to produce sum of hair and average hair density from the respective skin sample. The sum of hair and average hair density will then be used to classify whether the skin sample belongs to children or adult using Support vector machine classification. Probability distribution function and Gaussian function were then employed to find out whether the probability of correct classification is at least 60% accurate. The experiment was performed on 160 skin samples photographs. The probability of correct classification of the age group was at least 68.75%. Bachelor of Engineering (Computer Science) 2010-04-28T07:59:18Z 2010-04-28T07:59:18Z 2010 2010 Final Year Project (FYP) http://hdl.handle.net/10356/36243 en Nanyang Technological University 65 p. application/pdf
spellingShingle DRNTU::Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision
Asvega.
Age prediction based on skin
title Age prediction based on skin
title_full Age prediction based on skin
title_fullStr Age prediction based on skin
title_full_unstemmed Age prediction based on skin
title_short Age prediction based on skin
title_sort age prediction based on skin
topic DRNTU::Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision
url http://hdl.handle.net/10356/36243
work_keys_str_mv AT asvega agepredictionbasedonskin