A hybrid color space for skin recognition for real-time applications

Color space conversion utilized by many researchers in order to enhance skin recognition performance by projecting the skin color cluster to a more distinctive distribution. In spite of the substantial research effort in this area, finding a suitable color space for face and skin recognition is stil...

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Main Authors: Oghaz, M. M., Maarof, M. A., Rohani, M. F., Zainal, A., Mohd Shaid, S. Z.
Format: Article
Published: American Scientific Publishers 2017
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Online Access:http://eprints.utm.my/id/eprint/80797/
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spelling my.utm.807972019-06-27T07:02:08Z http://eprints.utm.my/id/eprint/80797/ A hybrid color space for skin recognition for real-time applications Oghaz, M. M. Maarof, M. A. Rohani, M. F. Zainal, A. Mohd Shaid, S. Z. QA75 Electronic computers. Computer science Color space conversion utilized by many researchers in order to enhance skin recognition performance by projecting the skin color cluster to a more distinctive distribution. In spite of the substantial research effort in this area, finding a suitable color space for face and skin recognition is still an unsolved issue. Deviation of skin tone under different lighting condition, dissimilarity of skin color among different ethnics and races, various camera sensors characteristics, presence of skin-like color objects in image background and variation of skin color tone among different body limbs are among the major challenges in skin recognition. Majority of these challenges are expected to be mitigated through color space conversion. This paper proposes a new hybrid color space by applying Principal Component Analysis technique to skin color cluster in ten existing conventional color spaces including RGB, YCbCr , YUV, nRGB, i1i2i3, YIQ, XYZ, YPbPr , YES, YCgCr . The proposed hybrid color space which termed P1P2P3 consist of the three major Principal Components of these conventional color spaces components. Using Algebraic simplification these principal component has been reformulated in terms of RGB color space. Parametric pixel wised skin detection techniques have been employed in order to evaluate the proposed color space effect on skin detection performance. Three popular supervised classifiers including Multilayer Perceptron, Support Vector Machine and Random Forest has been employed to generate a parametric model of skin color cluster using the proposed color space. Experiment results shows the proposed hybrid color space P1P2P3 with F -score and False Positive Rate 0.960 and 0.041 respectively performed better than the existing conventional color spaces in term of pixel wised skin recognition. American Scientific Publishers 2017 Article PeerReviewed Oghaz, M. M. and Maarof, M. A. and Rohani, M. F. and Zainal, A. and Mohd Shaid, S. Z. (2017) A hybrid color space for skin recognition for real-time applications. Journal of Computational and Theoretical Nanoscience, 14 (4). pp. 1852-1861. ISSN 1546-1955
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic QA75 Electronic computers. Computer science
spellingShingle QA75 Electronic computers. Computer science
Oghaz, M. M.
Maarof, M. A.
Rohani, M. F.
Zainal, A.
Mohd Shaid, S. Z.
A hybrid color space for skin recognition for real-time applications
description Color space conversion utilized by many researchers in order to enhance skin recognition performance by projecting the skin color cluster to a more distinctive distribution. In spite of the substantial research effort in this area, finding a suitable color space for face and skin recognition is still an unsolved issue. Deviation of skin tone under different lighting condition, dissimilarity of skin color among different ethnics and races, various camera sensors characteristics, presence of skin-like color objects in image background and variation of skin color tone among different body limbs are among the major challenges in skin recognition. Majority of these challenges are expected to be mitigated through color space conversion. This paper proposes a new hybrid color space by applying Principal Component Analysis technique to skin color cluster in ten existing conventional color spaces including RGB, YCbCr , YUV, nRGB, i1i2i3, YIQ, XYZ, YPbPr , YES, YCgCr . The proposed hybrid color space which termed P1P2P3 consist of the three major Principal Components of these conventional color spaces components. Using Algebraic simplification these principal component has been reformulated in terms of RGB color space. Parametric pixel wised skin detection techniques have been employed in order to evaluate the proposed color space effect on skin detection performance. Three popular supervised classifiers including Multilayer Perceptron, Support Vector Machine and Random Forest has been employed to generate a parametric model of skin color cluster using the proposed color space. Experiment results shows the proposed hybrid color space P1P2P3 with F -score and False Positive Rate 0.960 and 0.041 respectively performed better than the existing conventional color spaces in term of pixel wised skin recognition.
format Article
author Oghaz, M. M.
Maarof, M. A.
Rohani, M. F.
Zainal, A.
Mohd Shaid, S. Z.
author_facet Oghaz, M. M.
Maarof, M. A.
Rohani, M. F.
Zainal, A.
Mohd Shaid, S. Z.
author_sort Oghaz, M. M.
title A hybrid color space for skin recognition for real-time applications
title_short A hybrid color space for skin recognition for real-time applications
title_full A hybrid color space for skin recognition for real-time applications
title_fullStr A hybrid color space for skin recognition for real-time applications
title_full_unstemmed A hybrid color space for skin recognition for real-time applications
title_sort hybrid color space for skin recognition for real-time applications
publisher American Scientific Publishers
publishDate 2017
url http://eprints.utm.my/id/eprint/80797/
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score 13.160551