Removal of redundant gabor features using genetic algorithm

Face data processing has been an active research fields for many decades due to its various applications in different areas such as entertainment system, smart cards, information security, biometric system, and surveillance system and law enforcement. Researchers tend to represent faces by feature-b...

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Main Author: Dang, Ngoc Minh
Other Authors: Teoh Eam Khwang
Format: Final Year Project
Language:English
Published: 2010
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Online Access:http://hdl.handle.net/10356/40894
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-408942023-07-07T16:00:51Z Removal of redundant gabor features using genetic algorithm Dang, Ngoc Minh Teoh Eam Khwang School of Electrical and Electronic Engineering DRNTU::Engineering::Electrical and electronic engineering::Control and instrumentation::Control engineering Face data processing has been an active research fields for many decades due to its various applications in different areas such as entertainment system, smart cards, information security, biometric system, and surveillance system and law enforcement. Researchers tend to represent faces by feature-based approach thanks to its good performance. Amongst different types of features, Gabor features are widely used because they are robust against illumination and pose changes. Due to the limitation in computational power, the common practice is to down-sample the face image to reduce number of Gabor features generated. This practice limits the size of images that can be analyzed. Face image with high resolution, however, are still important in classification problems with high intra-group variation. As not all of the generated Gabor features are necessary, the main objective of this Final Year Project is to develop an efficient removal scheme of redundant features in order to employ images with large dimension in face data processing. In particular, Genetic Algorithm is used to provide a sub-optimal but fast selection of feature ensemble. In this project, a Mixture of Experts system is designed for face recognition problems. The base classifiers are trained by using Adaboost algorithm over the Gabor feature set extracted from each single Gabor filter. Genetic Algorithm is then applied to select the most discriminate ensemble of classifiers. Finally, the final result is obtained by fusing the final outputs of base classifiers in the selected ensemble. The aforementioned approach is implemented in family classification problem in which the intra-group variation is high. Face photos (resolution 80x95) of 10 families with different races and age groups are investigated. Three scenarios are tested: (1) identification of a family member, (2) identification of a missing child and (3) identification of a missing parent. This method also allows us to investigate the performance of Gabor wavelets with higher resolutions of frequency and orientation. From Matlab simulation, we find out that, using 40 Gabor filters from 80 Gabor filters of 8 frequencies x 10 orientations is better than using 40 Gabor filters of 5 frequencies x 8 orientations. Bachelor of Engineering 2010-06-23T08:08:57Z 2010-06-23T08:08:57Z 2010 2010 Final Year Project (FYP) http://hdl.handle.net/10356/40894 en Nanyang Technological University 125 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Electrical and electronic engineering::Control and instrumentation::Control engineering
spellingShingle DRNTU::Engineering::Electrical and electronic engineering::Control and instrumentation::Control engineering
Dang, Ngoc Minh
Removal of redundant gabor features using genetic algorithm
description Face data processing has been an active research fields for many decades due to its various applications in different areas such as entertainment system, smart cards, information security, biometric system, and surveillance system and law enforcement. Researchers tend to represent faces by feature-based approach thanks to its good performance. Amongst different types of features, Gabor features are widely used because they are robust against illumination and pose changes. Due to the limitation in computational power, the common practice is to down-sample the face image to reduce number of Gabor features generated. This practice limits the size of images that can be analyzed. Face image with high resolution, however, are still important in classification problems with high intra-group variation. As not all of the generated Gabor features are necessary, the main objective of this Final Year Project is to develop an efficient removal scheme of redundant features in order to employ images with large dimension in face data processing. In particular, Genetic Algorithm is used to provide a sub-optimal but fast selection of feature ensemble. In this project, a Mixture of Experts system is designed for face recognition problems. The base classifiers are trained by using Adaboost algorithm over the Gabor feature set extracted from each single Gabor filter. Genetic Algorithm is then applied to select the most discriminate ensemble of classifiers. Finally, the final result is obtained by fusing the final outputs of base classifiers in the selected ensemble. The aforementioned approach is implemented in family classification problem in which the intra-group variation is high. Face photos (resolution 80x95) of 10 families with different races and age groups are investigated. Three scenarios are tested: (1) identification of a family member, (2) identification of a missing child and (3) identification of a missing parent. This method also allows us to investigate the performance of Gabor wavelets with higher resolutions of frequency and orientation. From Matlab simulation, we find out that, using 40 Gabor filters from 80 Gabor filters of 8 frequencies x 10 orientations is better than using 40 Gabor filters of 5 frequencies x 8 orientations.
author2 Teoh Eam Khwang
author_facet Teoh Eam Khwang
Dang, Ngoc Minh
format Final Year Project
author Dang, Ngoc Minh
author_sort Dang, Ngoc Minh
title Removal of redundant gabor features using genetic algorithm
title_short Removal of redundant gabor features using genetic algorithm
title_full Removal of redundant gabor features using genetic algorithm
title_fullStr Removal of redundant gabor features using genetic algorithm
title_full_unstemmed Removal of redundant gabor features using genetic algorithm
title_sort removal of redundant gabor features using genetic algorithm
publishDate 2010
url http://hdl.handle.net/10356/40894
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