dc.contributor.advisor |
Goufo, Emile Franc Doungmo
|
|
dc.contributor.author |
Gouaya, Guy Mathias
|
|
dc.date.accessioned |
2024-06-14T10:55:32Z |
|
dc.date.available |
2024-06-14T10:55:32Z |
|
dc.date.issued |
2023-11-21 |
|
dc.identifier.uri |
https://hdl.handle.net/10500/31312 |
|
dc.description.abstract |
The rapid evolution of facial recognition technology has elevated its signi cance across diverse
applications, ranging from security systems to human-computer interaction. This thesis focuses
on the intricate challenges faced by facial recognition systems, particularly emphasizing the im-
pact of facial occlusion heightened by the widespread use of face masks during the COVID-19
pandemic. The study advances the eld by exploring dimension reduction techniques, encom-
passing established methods such as Principal Component Analysis (PCA), Linear Discriminant
Analysis (LDA) and Auto-Encoter-based, alongside innovative approaches hybrid methodolo-
gies such as PCA-Autoencoder and LDA-Autoencoder. Notably, the study introduces Higher-
Order Singular Value Decomposition (HOSVD) as a novel avenue for dimension reduction in
facial recognition.
The examination of facial occlusion yields nuanced insights into the challenges faced by recog-
nition systems in real-world scenarios. Techniques developed in response aim to e ectively
mitigate the adverse e ects of facial occlusion, ensuring precision and reliability in identi ca-
tion processes, by developing face mask datasets adequate for the study.
In the dimension reduction realm, the study meticulously evaluates traditional and innovative
techniques. PCA and LDA are scrutinized for e ectiveness, while Autoencoder-based methods
prove instrumental in facial feature extraction and dimension reduction. The innovative hybrid
methodologies, PCA-Autoencoder and LDA-Autoencoder, demonstrate synergistic potential
by capitalizing on the strengths of individual techniques. Tensor decomposition (HOSVD) e-
merges as a novel mathematical approach, providing a fresh perspective on dimension reduction
strategies.
The ndings of this research signi cantly contribute to the theoretical foundations and practi-
cal applications of facial recognition technology. Recommendations for future research include
further exploration of diverse facial occlusion scenarios, real-time adaptive systems, and the
integration of deep learning architectures to enhance dimension reduction methodologies. As
technology advances, this thesis stands as a catalyst for ongoing innovation, fostering a deeper
understanding of the intricate dynamics inherent in facial recognition systems. |
en |
dc.format.extent |
1 online volume (xx, 114 leaves) : color illustrations, color graphs |
en |
dc.language.iso |
en |
en |
dc.subject |
Face mask |
en |
dc.subject |
Face occlusion |
en |
dc.subject |
Dimension reduction |
en |
dc.subject |
Principal Component Analysis(PCA) |
en |
dc.subject |
Linear Discriminant Analysis(LDA) |
en |
dc.subject |
AutoEncoder |
en |
dc.subject |
PCA-Auto-Encoder |
en |
dc.subject |
LDA-Auto-Encoder |
en |
dc.subject |
Face recognition |
en |
dc.subject |
Machine learning |
en |
dc.subject |
Tensor decomposition |
en |
dc.subject |
High Order Singular Value Decomposition(HOSVD) |
en |
dc.subject |
Fourth Industrial Revolution and Digitalisation |
en |
dc.subject |
SDG 9 Industry, Innovation and Infrastructure |
en |
dc.subject.other |
UCTD |
|
dc.title |
Mathematics techniques with machine learning implementation for facial recognition |
en |
dc.type |
Thesis |
en |
dc.description.department |
Mathematical Sciences |
en |
dc.description.degree |
D. Phil. (Applied Mathematics) |
|