Anti-pornography algorithm based on multi-agent learning in skin detector and pornography classifier

An automated computerized algorithm for identifying and blocking pornographic content was designed. Primitive information on pornography is studied and used to determine if a given image falls under the pornographic category. In this thesis the pornography image is defined as image that contains hum...

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Main Author: Ansaef, Aos Alaa Zaidan
Format: Thesis
Published: 2013
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spelling my-mmu-ep.52442014-02-26T01:55:41Z Anti-pornography algorithm based on multi-agent learning in skin detector and pornography classifier 2013-03 Ansaef, Aos Alaa Zaidan QA76.75-76.765 Computer software An automated computerized algorithm for identifying and blocking pornographic content was designed. Primitive information on pornography is studied and used to determine if a given image falls under the pornographic category. In this thesis the pornography image is defined as image that contains human body exposed between neck and knee area. Skin regions are extracted from images as the first stage. The skin color has been used to detect skin as it is quite a simple and straightforward task. In addition, color has processing time advantage, since color processing is faster compared to other features. However it is not robust enough to deal with complex image environments, such as the light-changing conditions, skin-like colors and, reflection from glass and water. These factors could create major difficulties for pixel-based skin detector especially when the color feature is used. Thus, in this part of the research a novel multi-agent learning is proposed using Bayesian method with grouping histogram technique and back propagation neural network with segment adjacent-nested (SAN) technique based on YCbCr and RGB color spaces respectively, to improve the skin detection performance. Then, the features from the skin are extracted to classify the images as either pornographic or non-pornographic. Inaccurate classification occurs when different image sizes are used in the existing anti-pornography algorithms. Thus, in this part of the research a novel multi-agent learning is proposed between the Bayesian method using color features extracted from the skin detection based on YCbCr color space and the back propagation neural network method using shape features extracted again from skin detection. The classification of the pornographic images becomes more robust to overcome the problems in relation to variation in images sizes and this attainment was previously not accomplished by others. 2013-03 Thesis http://shdl.mmu.edu.my/5244/ http://vlib.mmu.edu.my/diglib/login/dlusr/login.php phd doctoral Multimedia University Faculty of Engineering
institution Multimedia University
collection MMU Institutional Repository
topic QA76.75-76.765 Computer software
spellingShingle QA76.75-76.765 Computer software
Ansaef, Aos Alaa Zaidan
Anti-pornography algorithm based on multi-agent learning in skin detector and pornography classifier
description An automated computerized algorithm for identifying and blocking pornographic content was designed. Primitive information on pornography is studied and used to determine if a given image falls under the pornographic category. In this thesis the pornography image is defined as image that contains human body exposed between neck and knee area. Skin regions are extracted from images as the first stage. The skin color has been used to detect skin as it is quite a simple and straightforward task. In addition, color has processing time advantage, since color processing is faster compared to other features. However it is not robust enough to deal with complex image environments, such as the light-changing conditions, skin-like colors and, reflection from glass and water. These factors could create major difficulties for pixel-based skin detector especially when the color feature is used. Thus, in this part of the research a novel multi-agent learning is proposed using Bayesian method with grouping histogram technique and back propagation neural network with segment adjacent-nested (SAN) technique based on YCbCr and RGB color spaces respectively, to improve the skin detection performance. Then, the features from the skin are extracted to classify the images as either pornographic or non-pornographic. Inaccurate classification occurs when different image sizes are used in the existing anti-pornography algorithms. Thus, in this part of the research a novel multi-agent learning is proposed between the Bayesian method using color features extracted from the skin detection based on YCbCr color space and the back propagation neural network method using shape features extracted again from skin detection. The classification of the pornographic images becomes more robust to overcome the problems in relation to variation in images sizes and this attainment was previously not accomplished by others.
format Thesis
qualification_name Doctor of Philosophy (PhD.)
qualification_level Doctorate
author Ansaef, Aos Alaa Zaidan
author_facet Ansaef, Aos Alaa Zaidan
author_sort Ansaef, Aos Alaa Zaidan
title Anti-pornography algorithm based on multi-agent learning in skin detector and pornography classifier
title_short Anti-pornography algorithm based on multi-agent learning in skin detector and pornography classifier
title_full Anti-pornography algorithm based on multi-agent learning in skin detector and pornography classifier
title_fullStr Anti-pornography algorithm based on multi-agent learning in skin detector and pornography classifier
title_full_unstemmed Anti-pornography algorithm based on multi-agent learning in skin detector and pornography classifier
title_sort anti-pornography algorithm based on multi-agent learning in skin detector and pornography classifier
granting_institution Multimedia University
granting_department Faculty of Engineering
publishDate 2013
_version_ 1747829569439662080