Fadoua Massaoudy

Candidate ID: DC5
Topic: Super-resolution techniques to enhance low-resolution metering and inspection data
Beneficiary: UFR

I completed my Master’s degree at Université Paris-Est Créteil (UPEC), France, specializing in data engineering and information systems. During my studies, I developed a strong interest in data processing, machine learning, and AI-based analytical systems, which led me toward research in intelligent monitoring and digital inspection.

Within the FOURIER MSCA Doctoral Network, my research focuses on AI-based super-resolution methods to enhance low-quality monitoring and inspection data. Many infrastructure monitoring applications rely on UAV imagery, open spatial data, and low-cost sensors, where limited resolution can affect automated defect detection and asset assessment. My work aims to reconstruct higher-resolution images, videos, and time-series data to reduce uncertainty and improve analysis reliability.

I joined FOURIER for its strong link between advanced AI research and real-world applications. The network’s interdisciplinary approach and close collaboration between academia and industry align well with my goal of contributing to smarter and more resilient infrastructure systems.

Under the Grant Agreement no. 101169429