Multi-Scale Skin Sample Approach for Dynamic Skin Color Detection: An Analysis
Skin detection is an important step in many computer vision applications. It has been employed in face detection, hand gesture recognition, illicit image filtering, steganography and content based image retrieval. This is due to the skin colour that attractive feature in detecting the skin in colour...
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my.ump.umpir.199952018-11-22T04:46:43Z http://umpir.ump.edu.my/id/eprint/19995/ Multi-Scale Skin Sample Approach for Dynamic Skin Color Detection: An Analysis Mohd Zamri, Osman Mohd Aizaini, Maarof Mohd Foad, Rohani Kohbalan, Moorthy Suryanti, Awang QA76 Computer software Skin detection is an important step in many computer vision applications. It has been employed in face detection, hand gesture recognition, illicit image filtering, steganography and content based image retrieval. This is due to the skin colour that attractive feature in detecting the skin in coloured image. In contrast, skin colour detection suffers in low accuracy due to colour properties between the real skin surface and the skin-like objects. Therefore, this paper proposes a dynamic skin colour detection using multi-scales online skin sampling approach. This dynamic skin colour detection involved two procedures for generating the dynamic threshold in colour spaces. Moreover, six colour spaces have been studied to find the best colour models for our proposed method. The first procedure is the online skin sampling that obtained directly from the face candidates to generate the dynamic threshold values of each studied colour spaces. Alongside with the first procedure, we obtained optimal scale for skin sample with 0.25, 0.2 reduction, Meanwhile, the second procedure known as skin pixel classification uses the dynamic threshold obtained from the first procedure to classify the skin in the image. We achieved a satisfactory result in term of precision, recall, accuracy and F1. The experimental result shows that the proposed dynamic skin colour detection achieved good performance via American Scientific Publisher 2018-11 Article PeerReviewed pdf en http://umpir.ump.edu.my/id/eprint/19995/1/Multi-Scale%20Skin%20Sample%20Approach%20for%20Dynamic.pdf Mohd Zamri, Osman and Mohd Aizaini, Maarof and Mohd Foad, Rohani and Kohbalan, Moorthy and Suryanti, Awang (2018) Multi-Scale Skin Sample Approach for Dynamic Skin Color Detection: An Analysis. Advanced Science Letters, 24 (10). pp. 7662-7667. ISSN 1936-6612 https://doi.org/10.1166/asl.2018.12996 doi: 10.1166/asl.2018.12996 |
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Skin detection is an important step in many computer vision applications. It has been employed in face detection, hand gesture recognition, illicit image filtering, steganography and content based image retrieval. This is due to the skin colour that attractive feature in detecting the skin in coloured image. In contrast, skin colour detection suffers in low accuracy due to colour properties between the real skin surface and the skin-like objects. Therefore, this paper proposes a dynamic skin colour detection using multi-scales online skin sampling approach. This dynamic skin colour detection involved two procedures for generating the dynamic threshold in colour spaces. Moreover, six colour spaces have been studied to find the best colour models for our proposed method. The first procedure is the online skin sampling that obtained directly from the face candidates to generate the dynamic threshold values of each studied colour spaces. Alongside with the first procedure, we obtained optimal scale for skin sample with 0.25, 0.2 reduction, Meanwhile, the second procedure known as skin pixel classification uses the dynamic threshold obtained from the first procedure to classify the skin in the image. We achieved a satisfactory result in term of precision, recall, accuracy and F1. The experimental result shows that the proposed dynamic skin colour detection achieved good performance via |
format |
Article |
author |
Mohd Zamri, Osman Mohd Aizaini, Maarof Mohd Foad, Rohani Kohbalan, Moorthy Suryanti, Awang |
author_facet |
Mohd Zamri, Osman Mohd Aizaini, Maarof Mohd Foad, Rohani Kohbalan, Moorthy Suryanti, Awang |
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Mohd Zamri, Osman |
title |
Multi-Scale Skin Sample Approach for Dynamic Skin Color Detection: An Analysis |
title_short |
Multi-Scale Skin Sample Approach for Dynamic Skin Color Detection: An Analysis |
title_full |
Multi-Scale Skin Sample Approach for Dynamic Skin Color Detection: An Analysis |
title_fullStr |
Multi-Scale Skin Sample Approach for Dynamic Skin Color Detection: An Analysis |
title_full_unstemmed |
Multi-Scale Skin Sample Approach for Dynamic Skin Color Detection: An Analysis |
title_sort |
multi-scale skin sample approach for dynamic skin color detection: an analysis |
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American Scientific Publisher |
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2018 |
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http://umpir.ump.edu.my/id/eprint/19995/1/Multi-Scale%20Skin%20Sample%20Approach%20for%20Dynamic.pdf http://umpir.ump.edu.my/id/eprint/19995/ https://doi.org/10.1166/asl.2018.12996 |
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