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  4. Learning How To Recognize Faces In Heterogeneous Environments
 
doctoral thesis

Learning How To Recognize Faces In Heterogeneous Environments

De Freitas Pereira, Tiago  
2019

Face recognition is a mature field in biometrics in which several systems have been proposed over the last three decades. Such systems are extremely reliable under controlled recording conditions and it has been deployed in the field in critical tasks, such as in border control and in less critical ones, such as to unlock mobile phones. However, the lack of cooperation from the subject and variations on the pose, occlusion and illumination are still open problems and significantly affect error rates. Another challenge that arose recently in face recognition research is the ability of matching faces from different image domains. Use cases encompass the matching between Visual Light images (VIS) with Near infra-red images (NIR), Visual Light images (VIS) with Thermograms or Depth maps. This match can occur even in situations where no real face exists, such as matching using sketches. This task is so called Heterogeneous Face Recognition. The key difficulty in the comparison of faces in heterogeneous conditions is that images from the same subject may differ in appearance due to changes in image domain.

In this thesis we address this problem of Heterogeneous Face Recognition (HFR). Our contributions are four-fold. First, we analyze the applicability of crafted features used in face recognition in the HFR task. Second, still working with crafted features, we propose that the variability between two image domains can be suppressed with a linear shift in the Gaussian Mixture Model (GMM) mean subspace. That encompasses inter-session variability (ISV) modeling. Third, we propose that high level features of Deep Convolutional Neural Networks trained on Visual Light images are potentially domain independent and can be used to encode faces sensed in different image domains. Fourth, large-scale experiments are conducted on several HFR databases, covering various image domains showing competitive performances.

Moreover, the implementation of all the proposed techniques are integrated into a collaborative open source software library called Bob that enforces fair evaluations and encourages reproducible research.

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Type
doctoral thesis
DOI
10.5075/epfl-thesis-9366
Author(s)
De Freitas Pereira, Tiago  
Advisors
Bourlard, Hervé  
•
Marcel, Sébastien  
Jury

Prof. Pascal Frossard (président) ; Prof. Hervé Bourlard, Dr Sébastien Marcel (directeurs) ; Prof. Jean-Philippe Thiran, Prof. Mark Nixon, Prof. Julian FIERREZ (rapporteurs)

Date Issued

2019

Publisher

EPFL

Publisher place

Lausanne

Public defense year

2019-06-14

Thesis number

9366

Total of pages

187

Subjects

Face Recognition

•

Heterogeneous Face Recognition

•

Reproducible Research

•

Domain Adaptation

•

Gaussian Mixture Modeling

•

Deep Neural Networks

EPFL units
LIDIAP  
Faculty
STI  
School
IEL  
Doctoral School
EDEE  
Available on Infoscience
June 5, 2019
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/156691
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