Dimensionality reduction methods and image-to-class distance for face recognition and human gait recognition

Biometrics has been a hot research topic in computer vision society in recent decades owing to its broad applications in commercial and government systems. Face and human gait are two of the most important biometrics which possess huge potential to recognize human unobtrusively. The whole recognitio...

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Bibliographic Details
Main Author: Huang, Yi
Other Authors: Cham Tat Jen
Format: Thesis
Language:English
Published: 2011
Subjects:
Online Access:https://hdl.handle.net/10356/43807
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author Huang, Yi
author2 Cham Tat Jen
author_facet Cham Tat Jen
Huang, Yi
author_sort Huang, Yi
collection NTU
description Biometrics has been a hot research topic in computer vision society in recent decades owing to its broad applications in commercial and government systems. Face and human gait are two of the most important biometrics which possess huge potential to recognize human unobtrusively. The whole recognition procedure can be divided into three steps: preprocessing, feature extraction/processing, and classification. This thesis focuses on the last two steps: feature extraction/processing and classification. For feature extraction/processing step, three different dimensionality reduction methods are proposed based on holistic features and local patch features respectively and a new distance metric is introduced in the classification step. For the classification step, this thesis introduces an enhanced Image-to-Class distance to compute the distance from one probe image to the set of gallery images from the same person based on the local patch features. We formulate this task as an integer programming problem which incorporates the spatial constraint into each local patch feature by only allowing patches in a spatial neighborhood to be matched. Our proposed Image-to-Class distance is demonstrated to be more effective than the Image-to-Image distance and other existing distance measures in face and human gait recognition. To deal with holistic features in the feature extraction/processing step, dimensionality reduction methods have been broadly used to enhance recognition performance. This thesis proposes the new Trace Ratio based Flexible Discriminant Analysis (TR-FSDA) which relaxes the hard constraint in Semi-supervised Discriminant Analysis (SDA) and adds a regularizer to better cope with data points sampled from non-linear manifold in face recognition.
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spelling ntu-10356/438072023-03-04T00:47:39Z Dimensionality reduction methods and image-to-class distance for face recognition and human gait recognition Huang, Yi Cham Tat Jen Xu Dong School of Computer Engineering Centre for Multimedia and Network Technology DRNTU::Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision Biometrics has been a hot research topic in computer vision society in recent decades owing to its broad applications in commercial and government systems. Face and human gait are two of the most important biometrics which possess huge potential to recognize human unobtrusively. The whole recognition procedure can be divided into three steps: preprocessing, feature extraction/processing, and classification. This thesis focuses on the last two steps: feature extraction/processing and classification. For feature extraction/processing step, three different dimensionality reduction methods are proposed based on holistic features and local patch features respectively and a new distance metric is introduced in the classification step. For the classification step, this thesis introduces an enhanced Image-to-Class distance to compute the distance from one probe image to the set of gallery images from the same person based on the local patch features. We formulate this task as an integer programming problem which incorporates the spatial constraint into each local patch feature by only allowing patches in a spatial neighborhood to be matched. Our proposed Image-to-Class distance is demonstrated to be more effective than the Image-to-Image distance and other existing distance measures in face and human gait recognition. To deal with holistic features in the feature extraction/processing step, dimensionality reduction methods have been broadly used to enhance recognition performance. This thesis proposes the new Trace Ratio based Flexible Discriminant Analysis (TR-FSDA) which relaxes the hard constraint in Semi-supervised Discriminant Analysis (SDA) and adds a regularizer to better cope with data points sampled from non-linear manifold in face recognition. DOCTOR OF PHILOSOPHY (SCE) 2011-04-27T03:59:21Z 2011-04-27T03:59:21Z 2010 2010 Thesis Huang, Y. (2010). Dimensionality reduction methods and image-to-class distance for face recognition and human gait recognition. Doctoral thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/43807 10.32657/10356/43807 en 149 p. application/pdf
spellingShingle DRNTU::Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision
Huang, Yi
Dimensionality reduction methods and image-to-class distance for face recognition and human gait recognition
title Dimensionality reduction methods and image-to-class distance for face recognition and human gait recognition
title_full Dimensionality reduction methods and image-to-class distance for face recognition and human gait recognition
title_fullStr Dimensionality reduction methods and image-to-class distance for face recognition and human gait recognition
title_full_unstemmed Dimensionality reduction methods and image-to-class distance for face recognition and human gait recognition
title_short Dimensionality reduction methods and image-to-class distance for face recognition and human gait recognition
title_sort dimensionality reduction methods and image to class distance for face recognition and human gait recognition
topic DRNTU::Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision
url https://hdl.handle.net/10356/43807
work_keys_str_mv AT huangyi dimensionalityreductionmethodsandimagetoclassdistanceforfacerecognitionandhumangaitrecognition