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Open AccessProceedings Article

Face recognition with semi-supervised learning and multiple classifiers

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TLDR
Experimental results reveal that the investigated semi-supervised models are successful in the exploitation of unlabelled data to enhance the classifier performance and their combined output and a newly proposed modified co-training model has shown a significant improvement of the classification accuracy compared to existing models.
Abstract
Face recognition using labeled and unlabelled data has received considerable amount of interest in the past years. In the same time, multiple classifier systems (MCS) have been widely successful in various pattern recognition applications such as face recognition. MCS have been very recently investigated in the context of semi-supervised learning. Very few attention has been devoted to verifying the usefulness of the newly developed semi-supervised MCS models for face recognition. In this work we attempt to access and compare the performance of several semi-supervised MCS training algorithms when applied to the face recognition problem. Experiments on a data set of face images are presented. Our experiments use nonhomogenous classifier ensemble, majority voting rule and compare between a three semi-supervised learning models: the self-trained single classifier model, the ensemble driven model and a newly proposed modified co-training model. Experimental results reveal that the investigated semi-supervised models are successful in the exploitation of unlabelled data to enhance the classifier performance and their combined output. The proposed semi-supervised learning model has shown a significant improvement of the classification accuracy compared to existing models.

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References
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Journal ArticleDOI

Machine learning

TL;DR: Machine learning addresses many of the same research questions as the fields of statistics, data mining, and psychology, but with differences of emphasis.
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Face recognition: A literature survey

TL;DR: In this paper, the authors provide an up-to-date critical survey of still-and video-based face recognition research, and provide some insights into the studies of machine recognition of faces.
Journal ArticleDOI

A fuzzy K-nearest neighbor algorithm

TL;DR: The theory of fuzzy sets is introduced into the K-nearest neighbor technique to develop a fuzzy version of the algorithm, and three methods of assigning fuzzy memberships to the labeled samples are proposed.
Book ChapterDOI

Characterising Virtual Eigensignatures for General Purpose Face Recognition

TL;DR: An eigenspace manifold for the representation and recognition of pose-varying faces is described and a framework is proposed which can be used for both familiar and unfamiliar face recognition.