Soutenance de thèse de doctorat en Intelligence Artificielle par Mme. Yasmine GHAZLANE

CEDOC

L’Université Euromed de Fès (UEMF) a le plaisir d’informer le public de la soutenance de thèse de doctorat en ’’ Intelligence Artificielle ’’

La soutenance de thèse aura lieu le mercredi 29 Mai 2024 à 16h00 à l’UEMF

Lieu : Amphithéâtre 4 au bâtiment 4

La thèse sera présentée par Mme. Yasmine GHAZLANE Sous le thème :

“A smart anti-drone architecture based on a multi-agent system with the development of airborne targets detection and identification models using advanced artificial intelligence and computer vision techniques” 
 

Abstract:


This doctoral thesis presents an objective investigation into the realm of anti-drone technology, addressing critical gaps in existing defense mechanisms against the escalating proliferation of unmanned aerial vehicles, commonly known as drones. An extensive and meticulous literature review is conducted as a first step toward examining the evolving landscape of anti-drone systems, identifying deficiencies and opportunities for transformation. In this study, artificial intelligence techniques and cutting-edge technologies are employed to propose and elucidate a novel and suitable anti-drone architecture. Leveraging the robustness of the Blockchain approach, the adaptability of multi-agent systems, and the precision of expert system, this thesis outlines a sophisticated framework poised to revolutionize the landscape of drone defense mechanisms.  The architecture embodies a paradigm shift, fostering agility and resilience in identifying the most encountered airborne targets in real-time and countering harmful targets across multifaceted operational domains through the use of an AI-based electromagnetic neutralization technique. Furthermore, this thesis unveils the development of highly efficient real-time detection and identification models, designed to seamlessly integrate within the proposed architecture. Using advanced algorithms and deep learning techniques, the developed models identify the most encountered airborne targets promptly and accurately while satisfying the speed and performance compromise. In the existing literature, most of the attention has been centered on recognizing drones as unique airborne targets whereas the real challenge is to distinguish between drones and non-drone targets. To address this issue, we have developed an identification friend or foe backbone model able to classify the aerial targets in foe or friend categories by determining whether the aerial target is a drone or bird, respectively. To meet the antidrone requirements, artificial intelligence and computer vision approaches have been combined through transfer learning, data augmentation and other techniques in our model. Another contribution of this thesis is the study of the impact of depth on classification performance, which is demonstrated through our experiments. The identification friend or foe model is integrated as a backbone model within the system with the real-time detection module to enhance further the efficiency, accuracy, adaptability, and robustness of the overall anti-drone system to enable it to effectively identify and respond to potential threats in dynamic and complex environments and neutralize effectively the target.
 


Cette thèse sera présentée devant les membres de jury : 

 

Nom et Prénom

Établissement

Qualité

Pr. Jamal KHARROUBI

 FST-USMBA, Maroc

 Président

Pr. Siham BENHADDOU 

 
 ENSEM, Maroc

 Rapporteur

Pr. Mahmoud NASSAR

 
 ENSIAS, Maroc

 Rapporteur

Pr. Mohammed OUMSIS

 
 EST SALE , Maroc

 Rapporteur

Pr. Rachid BENABBOU

 
 FST-USMBA, Maroc

 Examinateur

Pr. Ahmed EL HILALI ALAOUI

 Université Euromed de Fès, Maroc

 Directeur de Thèse

Pr. Hicham MEDROUMI

 ENSEM, Maroc

 Co-Directeur de Thèse

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