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Informations du chercheur

Nom complet

DAROUICHI Aziz

Grade

PH

Spécialité

Mathématiques Appliquées et Informatique

Thématique de recherche

Artificial Intelligence, Data Science, Computer Vision and Image Processing, Medical Image Analysis and Biomedical, Healthcare and Precision Medicine, Bio-inspired Algorithms for AI, Cybersecurity, Remote Sensing

Laboratoire

Laboratoire d’Ingénierie Informatique et Systèmes

Établissement

Faculte des Sciences et Techniques Gueliz

Publications (15 au total)

<scp>TAU‐EffNetB7</scp>: A Novel Triple Attention U‐Net Approach Using <scp>EfficientNetB7</scp> for Enhanced Polyp Segmentation

Auteur: Fouzia El Abassi, Aziz Darouichi, Aziz Ouaarab

Revue: International Journal of Imaging Systems and Technology

Année: 2025

DOI: 10.1002/ima.70144

3D AGSE-Res-UNet: An Efficient Deep Learning Approach based on Res-UNet for Brain Tumor Segmentation

Auteur: Khaoula Echine, Aziz Darouichi

Revue: 2024 International Conference on Connected Innovation and Technology (ICCITX)

Année: 2024

DOI: 10.1109/iccitx61791.2024.11070871

Retinal Disease Classification Using AI: A novel CapsNet-Vgg16 architecture

Auteur: Kawtar Naim, Aziz Darouichi

Revue: 2024 International Conference on Connected Innovation and Technology (ICCITX)

Année: 2024

DOI: 10.1109/iccitx61791.2024.11070715

Segmentation of Cervical Cancer from MRI Images: An Overview

Auteur: Salma Oussahi, Aziz Darouichi, El Mahdi El Guarmah

Revue: 2024 International Conference on Connected Innovation and Technology (ICCITX)

Année: 2024

DOI: 10.1109/iccitx61791.2024.11070807

Comparative Analysis of U-Net with Transfer Learning and Attention Mechanism for Enhanced Medical Image Segmentation

Auteur: Fouzia El Abassi, Aziz Darouichi, Aziz Ouaarab

Revue: Lecture Notes in Networks and Systems

Année: 2024

DOI: 10.1007/978-3-031-68653-5_52

Deep learning for photovoltaic panels segmentation

Auteur: K. Bouzaachane, A. Darouichi, E. El Guarmah,

Revue: Mathematical Modeling and Computing

Année: 2023

DOI: 10.23939/mmc2023.03.638

Communications (31 au total)

A Hybrid 3D Res-UNet with a Simplified Swin Transformer for Brain Tumor Segmentation

Manifestation: 2026 6th International Conference on Innovative Research in Applied Science, Engineering and Technology (IRASET)

Date: 2026-05-14

Organisation: FEZ, Morocco

Advancing Network Defense: Feature Selection Methods for Machine Learning-Based Intrusion Detection Systems

Manifestation: 6th Doctoral Scientific Day (JSD)

Date: 2025-06-03

Organisation: EMSI Marrakech

Binary Classification of Diabetic Retinopathy Using a Fine-Tuned Xception Model

Manifestation: 6th Doctoral Scientific Day (JSD)

Date: 2025-06-03

Organisation: EMSI Marrakech

Comparative Evaluation of Spatial Filters for Cervical MRI Denoising

Manifestation: 6th Doctoral Scientific Day (JSD)

Date: 2025-06-03

Organisation: EMSI Marrakech

Machine Learning for RET-Targeted Drug Repurposing: Integrating SHAP-Based Feature Selection and Bioactivity Prediction

Manifestation: 6th Doctoral Scientific Day (JSD)

Date: 2025-06-03

Organisation: EMSI Marrakech

Optimizing Hybrid Loss Functions for Skin Lesion Segmentation Using Differential Evolution

Manifestation: 6th Doctoral Scientific Day (JSD)

Date: 2025-06-03

Organisation: EMSI Marrakech

Precise MRI Brain Tumor Delineation via Enhanced Mask R-CNN and PointRend

Manifestation: 6th Doctoral Scientific Day (JSD)

Date: 2025-06-03

Organisation: EMSI Marrakech

Optimizing Intrusion Detection Systems: A Machine Learning Based Feature Selection Approach for Enhanced Cybersecurity

Manifestation: 3rd edition of the International Conference on Artificial Intelligence and Applied Mathematics (JIAMA’25)

Date: 2025-05-20

Organisation: ENSA Al-Hoceima, Morocco

Deep Learning–Based Automated Detection of Diabetic Retinopathy in Retinal Images

Manifestation: 3rd edition of the International Conference on Artificial Intelligence and Applied Mathematics (JIAMA’25)

Date: 2025-05-20

Organisation: ENSA Al-Hoceima, Morocco

Thèses (0 au total)

Aucune thèse disponible.