The training of autonomous agents often requires expensive and unsafe trial-and-error interactions with the environment. Nowadays several data sets containing recorded experiences of intelligent agents performing various tasks, spanning from the control of unmanned vehicles to human-robot interaction and medical applications are accessible on the internet. With the intention of limiting the costs of the learning procedure it is convenient to exploit the information that is already available rather than collecting new data. Nevertheless, the incapability to augment the batch can lead the autonomous agents to develop far from optimal behaviors when the sampled experiences do not allow for a good estimate of the true distribution of the enviro...
AbstractIn this paper a Markov model for Evolutionary Multi-Agent System is recalled. The model allo...
The recent progress in robotics and artificial intelligence raises the question of the efficient art...
Accurate modeling of boundary conditions is crucial in com- putational physics. The ever increasing ...
The design of human–robot interactions is a key challenge to optimize operational performance. A pro...
Missions involving humans interacting with automated systems become increasingly common. Due to the...
Manned-Unmanned Teaming (MUM-T) can be defined as the teaming of aerial robots (artificial agents) a...
This paper tackles a problem of UAV safe path planning in an urban environment where the onboard sen...
This deliverable introduces a methodology that aims to determine the best placement of the workpiece...
This work tackles the problem of robust zero-shot planning in non-stationary stochastic environments...
Simulating complex industrial manipulation tasks (e.g., assembly, disassembly and maintenance tasks)...
International audienceThere is a growing momentum to design online tools to measure mental workload ...
Automated planning has proven to be useful to solve problems where an agent has to maximize a reward...
This study aims at investigating the neural and physiological correlates of human-human and human-A...
International audienceOntological engineering is a complex process, involving multidisciplinary skil...
Artificial Intelligence (AI) is the branch of the Computer Science field that tries to imbue intell...
AbstractIn this paper a Markov model for Evolutionary Multi-Agent System is recalled. The model allo...
The recent progress in robotics and artificial intelligence raises the question of the efficient art...
Accurate modeling of boundary conditions is crucial in com- putational physics. The ever increasing ...
The design of human–robot interactions is a key challenge to optimize operational performance. A pro...
Missions involving humans interacting with automated systems become increasingly common. Due to the...
Manned-Unmanned Teaming (MUM-T) can be defined as the teaming of aerial robots (artificial agents) a...
This paper tackles a problem of UAV safe path planning in an urban environment where the onboard sen...
This deliverable introduces a methodology that aims to determine the best placement of the workpiece...
This work tackles the problem of robust zero-shot planning in non-stationary stochastic environments...
Simulating complex industrial manipulation tasks (e.g., assembly, disassembly and maintenance tasks)...
International audienceThere is a growing momentum to design online tools to measure mental workload ...
Automated planning has proven to be useful to solve problems where an agent has to maximize a reward...
This study aims at investigating the neural and physiological correlates of human-human and human-A...
International audienceOntological engineering is a complex process, involving multidisciplinary skil...
Artificial Intelligence (AI) is the branch of the Computer Science field that tries to imbue intell...
AbstractIn this paper a Markov model for Evolutionary Multi-Agent System is recalled. The model allo...
The recent progress in robotics and artificial intelligence raises the question of the efficient art...
Accurate modeling of boundary conditions is crucial in com- putational physics. The ever increasing ...