Pre-processing strategies for skin detection using MLP

Skin detection is an important preliminary step in a wide range of image processing applications such as face detection, person identification, gesture analysis and access control. Several techniques have been used for skin detection. In this thesis, the multilayer perceptron (MLP) neural network an...

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Main Author: Chelsia Amy Doukim
Format: Thesis
Language:English
English
Published: 2011
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spelling my-ums-ep.391392024-07-26T01:16:18Z Pre-processing strategies for skin detection using MLP 2011 Chelsia Amy Doukim QA71-90 Instruments and machines Skin detection is an important preliminary step in a wide range of image processing applications such as face detection, person identification, gesture analysis and access control. Several techniques have been used for skin detection. In this thesis, the multilayer perceptron (MLP) neural network and histogram thresholding techniques were used. Recent studies have shown that combining skin features and/or skin classifiers can further improve the performance of the skin detection system. Thus, the main objective of this research is to evaluate the effect of several combination strategies on the performance of a skin detection system based on the MLP. To achieve this goal, first the histogram thresholding technique was used to select skin features (chrominance component in a given colour space) that give the highest correct skin detection. These features will be used as inputs to the MLP classifiers. A modified Growing algorithm for finding the number of neurons in the hidden layer of a neural network was also developed it was able to reduce the computational time compared to the conventional Growing algorithm. The combination strategies were done by combining the skin features as well as the skin classifiers. Three skin features (chrominance component from the selected colour space) that gave the highest correct skin detection on a single input MLP classifier were used for these strategies. The strategy of combining skin features or inputs was done using two and three skin features. For combining skin classifiers strategy, several combining rules such as binary operators AND and OR were used to combine two and three classifiers, while combining rules namely Voting, Sum of Weights and New Neural Network were used to combine three classifiers. The Sum of Weights and New Neural Network were the proposed combining rules in this thesis. In order to evaluate the performances of the skin detection systems, the images from Compaq database were used. The strategy of combining two skin features Cb/Cr gave the best performance for combining skin feature strategy with 3.01% more correct detection compared with the best performance given by a single input MLP classifier given by Cb-Cr. The strategy of combining three classifiers using the Sum of Weights gave the best performance for its combining strategy with an improvement of 4.38% more correct detection compared to the best single input MLP classifier given by Cb-Cr. The Sum of Weights strategy also gave 1.37% more correct detection than the best combining skin feature strategy. The other proposed combining strategy called New Neural Network has managed to achieve 82.21% of correct detection. The best performance results obtained in this thesis were considerably good considering the unconstrained nature of the images from the Compaq database. 2011 Thesis https://eprints.ums.edu.my/id/eprint/39139/ https://eprints.ums.edu.my/id/eprint/39139/1/24%20PAGES.pdf text en public https://eprints.ums.edu.my/id/eprint/39139/2/FULLTEXT.pdf text en validuser masters Universiti Malaysia Sabah School of Engineering and Information Technology
institution Universiti Malaysia Sabah
collection UMS Institutional Repository
language English
English
topic QA71-90 Instruments and machines
spellingShingle QA71-90 Instruments and machines
Chelsia Amy Doukim
Pre-processing strategies for skin detection using MLP
description Skin detection is an important preliminary step in a wide range of image processing applications such as face detection, person identification, gesture analysis and access control. Several techniques have been used for skin detection. In this thesis, the multilayer perceptron (MLP) neural network and histogram thresholding techniques were used. Recent studies have shown that combining skin features and/or skin classifiers can further improve the performance of the skin detection system. Thus, the main objective of this research is to evaluate the effect of several combination strategies on the performance of a skin detection system based on the MLP. To achieve this goal, first the histogram thresholding technique was used to select skin features (chrominance component in a given colour space) that give the highest correct skin detection. These features will be used as inputs to the MLP classifiers. A modified Growing algorithm for finding the number of neurons in the hidden layer of a neural network was also developed it was able to reduce the computational time compared to the conventional Growing algorithm. The combination strategies were done by combining the skin features as well as the skin classifiers. Three skin features (chrominance component from the selected colour space) that gave the highest correct skin detection on a single input MLP classifier were used for these strategies. The strategy of combining skin features or inputs was done using two and three skin features. For combining skin classifiers strategy, several combining rules such as binary operators AND and OR were used to combine two and three classifiers, while combining rules namely Voting, Sum of Weights and New Neural Network were used to combine three classifiers. The Sum of Weights and New Neural Network were the proposed combining rules in this thesis. In order to evaluate the performances of the skin detection systems, the images from Compaq database were used. The strategy of combining two skin features Cb/Cr gave the best performance for combining skin feature strategy with 3.01% more correct detection compared with the best performance given by a single input MLP classifier given by Cb-Cr. The strategy of combining three classifiers using the Sum of Weights gave the best performance for its combining strategy with an improvement of 4.38% more correct detection compared to the best single input MLP classifier given by Cb-Cr. The Sum of Weights strategy also gave 1.37% more correct detection than the best combining skin feature strategy. The other proposed combining strategy called New Neural Network has managed to achieve 82.21% of correct detection. The best performance results obtained in this thesis were considerably good considering the unconstrained nature of the images from the Compaq database.
format Thesis
qualification_level Master's degree
author Chelsia Amy Doukim
author_facet Chelsia Amy Doukim
author_sort Chelsia Amy Doukim
title Pre-processing strategies for skin detection using MLP
title_short Pre-processing strategies for skin detection using MLP
title_full Pre-processing strategies for skin detection using MLP
title_fullStr Pre-processing strategies for skin detection using MLP
title_full_unstemmed Pre-processing strategies for skin detection using MLP
title_sort pre-processing strategies for skin detection using mlp
granting_institution Universiti Malaysia Sabah
granting_department School of Engineering and Information Technology
publishDate 2011
url https://eprints.ums.edu.my/id/eprint/39139/1/24%20PAGES.pdf
https://eprints.ums.edu.my/id/eprint/39139/2/FULLTEXT.pdf
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