We present a framework for mobile service robot task planning and execution, based on the use of probabilistic verification techniques for the generation of optimal policies with attached formal performance guarantees. Our approach is based on a Markov decision process model of the robot in its environment, encompassing a topological map where nodes represent relevant locations in the environment, and a range of tasks that can be executed in different locations. The navigation in the topological map is modeled stochastically for a specific time of day. This is done by using spatio-temporal models that provide, for a given time of day, the probability of successfully navigating between two topological nodes, and the expected time to do so. W...
Due to the high complexity of probabilistic planning algorithms, roboticists often opt for determini...
Abstract. This work presents a planning framework that allows a robot with stochastic action uncerta...
Partially Observable Markov Decision Process models (POMDPs) have been applied to low-level robot co...
We present a framework for mobile service robot task planning and execution, based on the use of pro...
We present a methodology for the generation of mobile robot controllers which offer probabilistic ti...
We present a methodology for the generation of mobile robot controllers which offer probabilistic ti...
Abstract — We present a computational framework for auto-matic deployment of a robot from a temporal...
Formal methods based on the Markov decision process formalism, such as probabilistic computation tre...
We present a method to calculate cost-optimal poli-cies for task specifications in co-safe linear te...
We present a method to calculate cost-optimal poli-cies for task specifications in co-safe linear te...
We propose novel techniques for task allocation and planning in multi-robot systems operating in unc...
Abstract — We present a method to generate a robot control strategy that maximizes the probability t...
Robots are becoming more of a part of our daily lives. They have become an extension of some our hum...
Autonomous mobile robots need very reliable navigation capabilities in order to operate unattended ...
Multirobot systems must be able to maintain performance when robots get delayed during execution. Fo...
Due to the high complexity of probabilistic planning algorithms, roboticists often opt for determini...
Abstract. This work presents a planning framework that allows a robot with stochastic action uncerta...
Partially Observable Markov Decision Process models (POMDPs) have been applied to low-level robot co...
We present a framework for mobile service robot task planning and execution, based on the use of pro...
We present a methodology for the generation of mobile robot controllers which offer probabilistic ti...
We present a methodology for the generation of mobile robot controllers which offer probabilistic ti...
Abstract — We present a computational framework for auto-matic deployment of a robot from a temporal...
Formal methods based on the Markov decision process formalism, such as probabilistic computation tre...
We present a method to calculate cost-optimal poli-cies for task specifications in co-safe linear te...
We present a method to calculate cost-optimal poli-cies for task specifications in co-safe linear te...
We propose novel techniques for task allocation and planning in multi-robot systems operating in unc...
Abstract — We present a method to generate a robot control strategy that maximizes the probability t...
Robots are becoming more of a part of our daily lives. They have become an extension of some our hum...
Autonomous mobile robots need very reliable navigation capabilities in order to operate unattended ...
Multirobot systems must be able to maintain performance when robots get delayed during execution. Fo...
Due to the high complexity of probabilistic planning algorithms, roboticists often opt for determini...
Abstract. This work presents a planning framework that allows a robot with stochastic action uncerta...
Partially Observable Markov Decision Process models (POMDPs) have been applied to low-level robot co...