Enhanced human skin colour retrieval system using RGB ratio model / Ghazali Osman, Mohammad Suzuri Hitam, Mohd Pouzi Hamzah and Noor Maizura Mohd Noor

Skin colour detection is frequently used for searching people, face detection, pornographic filtering and hand tracking. The presence of skin or non-skin in digital image can be determined by manipulating pixels' colour and/or pixels' texture. The main challenge of skin colour detection is...

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Main Authors: Osman, Ghazali, Hitam, Mohammad Suzuri, Hamzah, Mohd Pouzi, Mohd Noor, Noor Maizura
Format: Article
Language:English
Published: Faculty of Information Management, Universiti Teknologi MARA 2012
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Online Access:https://ir.uitm.edu.my/id/eprint/50704/1/50704.PDF
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Institution: Universiti Teknologi Mara
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spelling my.uitm.ir.507042021-09-22T03:36:56Z https://ir.uitm.edu.my/id/eprint/50704/ Enhanced human skin colour retrieval system using RGB ratio model / Ghazali Osman, Mohammad Suzuri Hitam, Mohd Pouzi Hamzah and Noor Maizura Mohd Noor Osman, Ghazali Hitam, Mohammad Suzuri Hamzah, Mohd Pouzi Mohd Noor, Noor Maizura Optical data processing Research. Information retrieval. Information behavior. Information literacy Electronic information resource searching Skin colour detection is frequently used for searching people, face detection, pornographic filtering and hand tracking. The presence of skin or non-skin in digital image can be determined by manipulating pixels' colour and/or pixels' texture. The main challenge of skin colour detection is to develop a classifier that is robust to the large variations in skin colour appearance. This process is difficult because the appearance of a skin colour in an image depends on the illumination conditions where the image was captured. Therefore, the main problem in skin colour detection is to represent the skin colour distribution model that is invariant or least sensitive to changes in illumination condition. Another problem comes from the fact that many objects in the real world may possess almost similar skin­ tone colour such as wood, leather, skin-coloured clothing, hair and sand. Moreover, skin colour is different between races and can be different from a person to another, even with people of the same ethnicity. Finally, skin colour will appear a little different when different types of camera are used to capture the object or scene. The objective of this study is to develop a skin colour classifier based on pixel-based using RGB ratio method. This skin classifier was tested with Sldb dataset and two benchmark datasets; UChile and TOSO datasets to measure classifier performance. The performance of skin classifier was measured based on true positive (TF) and false positive (FP) indicator. The RGB ratio model is a newly proposed method that belongs under the category of an explicitly defined skin region model. This newly proposed model was compared with Kovac, Saleh and Swift models. The experimental results showed that the RGB ratio model outperformed all the other models in term of detection rate. The RGB ratio model is able to reduce FP detection that caused by reddish objects colour as well as be able to detect darkened skin and skin covered by shadow. Faculty of Information Management, Universiti Teknologi MARA 2012-12 Article PeerReviewed text en https://ir.uitm.edu.my/id/eprint/50704/1/50704.PDF ID50704 Osman, Ghazali and Hitam, Mohammad Suzuri and Hamzah, Mohd Pouzi and Mohd Noor, Noor Maizura (2012) Enhanced human skin colour retrieval system using RGB ratio model / Ghazali Osman, Mohammad Suzuri Hitam, Mohd Pouzi Hamzah and Noor Maizura Mohd Noor. Journal of Information and Knowledge Management, 2 (1). pp. 93-118. ISSN ISSN:2231-8836 ; E-ISSN:2289-5337 https://ijikm.uitm.edu.my/
institution Universiti Teknologi Mara
building Tun Abdul Razak Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
url_provider http://ir.uitm.edu.my/
language English
topic Optical data processing
Research. Information retrieval. Information behavior. Information literacy
Electronic information resource searching
spellingShingle Optical data processing
Research. Information retrieval. Information behavior. Information literacy
Electronic information resource searching
Osman, Ghazali
Hitam, Mohammad Suzuri
Hamzah, Mohd Pouzi
Mohd Noor, Noor Maizura
Enhanced human skin colour retrieval system using RGB ratio model / Ghazali Osman, Mohammad Suzuri Hitam, Mohd Pouzi Hamzah and Noor Maizura Mohd Noor
description Skin colour detection is frequently used for searching people, face detection, pornographic filtering and hand tracking. The presence of skin or non-skin in digital image can be determined by manipulating pixels' colour and/or pixels' texture. The main challenge of skin colour detection is to develop a classifier that is robust to the large variations in skin colour appearance. This process is difficult because the appearance of a skin colour in an image depends on the illumination conditions where the image was captured. Therefore, the main problem in skin colour detection is to represent the skin colour distribution model that is invariant or least sensitive to changes in illumination condition. Another problem comes from the fact that many objects in the real world may possess almost similar skin­ tone colour such as wood, leather, skin-coloured clothing, hair and sand. Moreover, skin colour is different between races and can be different from a person to another, even with people of the same ethnicity. Finally, skin colour will appear a little different when different types of camera are used to capture the object or scene. The objective of this study is to develop a skin colour classifier based on pixel-based using RGB ratio method. This skin classifier was tested with Sldb dataset and two benchmark datasets; UChile and TOSO datasets to measure classifier performance. The performance of skin classifier was measured based on true positive (TF) and false positive (FP) indicator. The RGB ratio model is a newly proposed method that belongs under the category of an explicitly defined skin region model. This newly proposed model was compared with Kovac, Saleh and Swift models. The experimental results showed that the RGB ratio model outperformed all the other models in term of detection rate. The RGB ratio model is able to reduce FP detection that caused by reddish objects colour as well as be able to detect darkened skin and skin covered by shadow.
format Article
author Osman, Ghazali
Hitam, Mohammad Suzuri
Hamzah, Mohd Pouzi
Mohd Noor, Noor Maizura
author_facet Osman, Ghazali
Hitam, Mohammad Suzuri
Hamzah, Mohd Pouzi
Mohd Noor, Noor Maizura
author_sort Osman, Ghazali
title Enhanced human skin colour retrieval system using RGB ratio model / Ghazali Osman, Mohammad Suzuri Hitam, Mohd Pouzi Hamzah and Noor Maizura Mohd Noor
title_short Enhanced human skin colour retrieval system using RGB ratio model / Ghazali Osman, Mohammad Suzuri Hitam, Mohd Pouzi Hamzah and Noor Maizura Mohd Noor
title_full Enhanced human skin colour retrieval system using RGB ratio model / Ghazali Osman, Mohammad Suzuri Hitam, Mohd Pouzi Hamzah and Noor Maizura Mohd Noor
title_fullStr Enhanced human skin colour retrieval system using RGB ratio model / Ghazali Osman, Mohammad Suzuri Hitam, Mohd Pouzi Hamzah and Noor Maizura Mohd Noor
title_full_unstemmed Enhanced human skin colour retrieval system using RGB ratio model / Ghazali Osman, Mohammad Suzuri Hitam, Mohd Pouzi Hamzah and Noor Maizura Mohd Noor
title_sort enhanced human skin colour retrieval system using rgb ratio model / ghazali osman, mohammad suzuri hitam, mohd pouzi hamzah and noor maizura mohd noor
publisher Faculty of Information Management, Universiti Teknologi MARA
publishDate 2012
url https://ir.uitm.edu.my/id/eprint/50704/1/50704.PDF
https://ir.uitm.edu.my/id/eprint/50704/
https://ijikm.uitm.edu.my/
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