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Mehrdad Saeidi

Research fellow

Department of Electrical, Electronic, and Information Engineering "Guglielmo Marconi"

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Research Overview

My research focuses on artificial intelligence for autonomous agents, with specific interest in reinforcement learning, wireless sensing, localisation, and multi-sensor fusion for navigation in complex and GPS-challenged environments. I also investigate human-inspired behavioural models through computational Pavlovian and instrumental conditioning, studying how agents develop cue–outcome associations and adapt their decision-making policies.

I am currently involved in the PNRR–PRIN 2022 project on AI-driven sensing and navigation for networks of autonomous agents. My work includes the design of learning-based sensing and localisation algorithms, the development of simulation frameworks in MATLAB, and contributions to experimental validation and scientific publications in collaboration with academic and industrial partners.

Research Interests Publications
  • Artificial Intelligence

  • Machine Learning

  • Reinforcement Learning

  • Autonomous Agents

  • Multi-Agent Systems

  • Wireless Sensing

  • Sensor Fusion

  • State Estimation

  • Multi-Object Tracking

  • UAV Navigation

  • GPS-Denied Localisation

Under Review
M. Saeidi et al., "Pavlovian-Inspired Cue-Outcome Association for Autonomous Agent Navigation," submitted to ICASSP, 2025.

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