François Guérin

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2papers

2 Papers

AIAug 11, 2025
Deep Reinforcement Learning with anticipatory reward in LSTM for Collision Avoidance of Mobile Robots

Olivier Poulet, Frédéric Guinand, François Guérin

This article proposes a collision risk anticipation method based on short-term prediction of the agents position. A Long Short-Term Memory (LSTM) model, trained on past trajectories, is used to estimate the next position of each robot. This prediction allows us to define an anticipated collision risk by dynamically modulating the reward of a Deep Q-Learning Network (DQN) agent. The approach is tested in a constrained environment, where two robots move without communication or identifiers. Despite a limited sampling frequency (1 Hz), the results show a significant decrease of the collisions number and a stability improvement. The proposed method, which is computationally inexpensive, appears particularly attractive for implementation on embedded systems.

ROOct 30, 2014
A Decentralized Interactive Architecture for Aerial and Ground Mobile Robots Cooperation

El Houssein Chouaib Harik, François Guérin, Frédéric Guinand et al.

This paper presents a novel decentralized interactive architecture for aerial and ground mobile robots cooperation. The aerial mobile robot is used to provide a global coverage during an area inspection, while the ground mobile robot is used to provide a local coverage of ground features. We include a human-in-the-loop to provide waypoints for the ground mobile robot to progress safely in the inspected area. The aerial mobile robot follows continuously the ground mobile robot in order to always keep it in its coverage view.