The ability of a robot to improve its performance on a task can be critical, especially in poorly known and non-stationary environments where the best action or strategy is dependent upon the current state of the environment. In such systems, a good estimate of the current state of the environment is key to establishing high performance, however quantified. In this paper, we present an approach to state estimation in poorly known and non-stationary mobile robot environments, focusing on its application to a mine collection scenario where performance is quantified using reward maximization. The approach is based on the use of augmented Markov models (AMMs), a sub-class of semi-Markov processes. We have developed an algorithm for incrementall...
Thesis: S.M., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 201...
Costs and rewards are important ingredients for many types of systems, modelling critical aspects li...
In this thesis, we apply machine learning to the problem of controlling mobile robots in difficult, ...
In this paper, we present an approach to reward maximization in a non-stationary mobile robot enviro...
We consider a mobile robot that attempts to accomplish a task by reaching a given goal, and interact...
We address the problem of learning relationships on state variables in Partially Observable Markov D...
In this paper we describe a machine learning approach for acquiring a model of a robot behaviour fro...
The revolution of autonomous vehicles has led to the development of robots with abundant sensors, ac...
We consider the problem of computing the maximum-reward motion in a reward field in an online settin...
AbstractIn this paper we describe a machine learning approach for acquiring a model of a robot behav...
Abstract. We examine the practical problem of a mobile autonomous robot performing a long-duration s...
Costs and rewards are important ingredients for cyberphysical systems, modelling critical aspects li...
Robots performing service tasks such as cooking and cleaning in human-centric environments require k...
International audienceUntil recently, propositions on the subject of intelligent service companions,...
For mobile robots to be successful, they have to navigate safely in populated and dynamic environmen...
Thesis: S.M., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 201...
Costs and rewards are important ingredients for many types of systems, modelling critical aspects li...
In this thesis, we apply machine learning to the problem of controlling mobile robots in difficult, ...
In this paper, we present an approach to reward maximization in a non-stationary mobile robot enviro...
We consider a mobile robot that attempts to accomplish a task by reaching a given goal, and interact...
We address the problem of learning relationships on state variables in Partially Observable Markov D...
In this paper we describe a machine learning approach for acquiring a model of a robot behaviour fro...
The revolution of autonomous vehicles has led to the development of robots with abundant sensors, ac...
We consider the problem of computing the maximum-reward motion in a reward field in an online settin...
AbstractIn this paper we describe a machine learning approach for acquiring a model of a robot behav...
Abstract. We examine the practical problem of a mobile autonomous robot performing a long-duration s...
Costs and rewards are important ingredients for cyberphysical systems, modelling critical aspects li...
Robots performing service tasks such as cooking and cleaning in human-centric environments require k...
International audienceUntil recently, propositions on the subject of intelligent service companions,...
For mobile robots to be successful, they have to navigate safely in populated and dynamic environmen...
Thesis: S.M., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 201...
Costs and rewards are important ingredients for many types of systems, modelling critical aspects li...
In this thesis, we apply machine learning to the problem of controlling mobile robots in difficult, ...