A model for person re-identification using deep learning techniques: a case of Ugandan school candidates

dc.contributor.author Opio, Henry Joe
dc.date.accessioned 2026-01-06T09:47:08Z
dc.date.available 2026-01-06T09:47:08Z
dc.date.issued 2025
dc.description A dissertation submitted to the Directorate of Graduate Training in partial fulfillment of the requirements for the award of Master of Science in Data Communication and Software Engineering of Makerere University
dc.description.abstract Person Re-Identification (Re-ID) is a critical domain in computer vision, with signifi- cant applications in security and public safety. This thesis addresses the unique and com- plex challenge of Re-ID within the educational sector, specifically focusing on the Uganda National Examinations Board (UNEB) dataset. The core problem is the need for reli- able re-identification of school candidates across a minimum four-year age gap (Primary Leaving Examination - PLE to Uganda Certificate of Education - UCE), which causes se- vere Age-Variant Feature Drift. Existing general-purpose Re-ID models are insufficiently robust to these extreme age-related changes, leading to a high risk of misidentification, spoofing, and impersonation during exam registration. To solve this problem, the research study proposes the Automated Person Re-Identification (APRe-ID) model, a novel deep learning architecture designed to generate age-invariant feature embeddings from facial images. The study utilizes a proprietary UNEB dataset of 299,744 data points of student facial features, captured four years apart, to rigorously test the proposed solution. The methodology involves comprehensive data pre-processing with image augmentation, robust face detection using MTCNN, and a deep learning model incorporating the strengths of Deep Metric Learning (DML) and Attention-Based Ar- chitectures. The specific objectives were to investigate optimal facial feature extractors, design the APRe-ID model, and evaluate its performance against the state-of-the-art. Our empirical results show that APRE-ID achieves Precision of 99%, Recall of 99% and F1-Score of 99% as an ensemble of Random forest, Extreme Gradient Boosting, and Sup- port Vector Machine.
dc.identifier.citation Opio, H. J. (2025). A model for person re-identification using deep learning techniques: a case of Ugandan school candidates; Unpublished Masters dissertation, Makerere University, Kampala
dc.identifier.uri https://makir.mak.ac.ug/handle/10570/16214
dc.language.iso en
dc.publisher Makerere University
dc.title A model for person re-identification using deep learning techniques: a case of Ugandan school candidates
dc.type Other
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