In this paper we improve learning performance of a risk-aware robot facing navigation tasks by employing transfer learning; that is, we use information from a previously solved task to accelerate learning in a new task. To do so, we transfer risk-aware memoryless stochastic abstract policies into a new task. We show how to incorporate risk-awareness into robotic navigation tasks, in particular when tasks are modeled as stochastic shortest path problems. We then show how to use a modified policy iteration algorithm, called AbsProb-PI, to obtain risk-neutral and risk-prone memoryless stochastic abstract policies. Finally, we propose a method that combines abstract policies, and show how to use the combined policy in a new navigation task. Exp...
PhD thesisIn this thesis, we argue that autonomous robots operating in hostile and uncertain environ...
In my presentation I will present my research study which investigates artificial intelligence techn...
Applying deep reinforcement learning to physical systems, as opposed to learning in simulation, pres...
In this paper we improve learning performance of a risk-aware robot facing navigation tasks by emplo...
Abstract. In this paper we improve learning performance of a risk-aware robot facing navigation task...
Abstract—Reinforcement learning enables an agent to learn behavior by acquiring experience through t...
A maioria das propostas de planejamento de rotas para robôs móveis não leva em conta a existência de...
Formal methods based on the Markov decision process formalism, such as probabilistic computation tre...
In the real world, robots operate with imperfect sensors providing uncertain and incomplete informat...
Keeping risk under control is a primary objective in many critical real-world domains, including fin...
A central goal of the robotics community is to develop general optimization algorithms for producing...
In order for human-assisting robots to be deployed in the real world such as household environments,...
Task learning in robotics requires repeatedly executing the same actions in different states to lear...
Abstract — We present a learning system which is able to quickly and reliably acquire a robust feedb...
Reinforcement learning methods are being applied to control problems in robotics domain. These algor...
PhD thesisIn this thesis, we argue that autonomous robots operating in hostile and uncertain environ...
In my presentation I will present my research study which investigates artificial intelligence techn...
Applying deep reinforcement learning to physical systems, as opposed to learning in simulation, pres...
In this paper we improve learning performance of a risk-aware robot facing navigation tasks by emplo...
Abstract. In this paper we improve learning performance of a risk-aware robot facing navigation task...
Abstract—Reinforcement learning enables an agent to learn behavior by acquiring experience through t...
A maioria das propostas de planejamento de rotas para robôs móveis não leva em conta a existência de...
Formal methods based on the Markov decision process formalism, such as probabilistic computation tre...
In the real world, robots operate with imperfect sensors providing uncertain and incomplete informat...
Keeping risk under control is a primary objective in many critical real-world domains, including fin...
A central goal of the robotics community is to develop general optimization algorithms for producing...
In order for human-assisting robots to be deployed in the real world such as household environments,...
Task learning in robotics requires repeatedly executing the same actions in different states to lear...
Abstract — We present a learning system which is able to quickly and reliably acquire a robust feedb...
Reinforcement learning methods are being applied to control problems in robotics domain. These algor...
PhD thesisIn this thesis, we argue that autonomous robots operating in hostile and uncertain environ...
In my presentation I will present my research study which investigates artificial intelligence techn...
Applying deep reinforcement learning to physical systems, as opposed to learning in simulation, pres...