In many robotic exploration missions, robots have to learn specific poli-cies that allow them to: (i) select high level goals (e.g., identify specific des-tinations), (ii) navigate (reach those destinations), (iii) and adapt to their environment (e.g., modify their behavior based on changing environmental conditions). Furthermore, those policies must be robust to signal noise or unexpected situations, scalable to more complex environments, and account for the physical limitations of the robots (e.g., limited battery power and computational power). In this paper we evaluate reactive and learning navigation algorithms for exploration robots that must avoid obstacles and reach specific destinations in limited time and with limited observations...
Many robotic path planning applications, such as search and rescue, involve uncertain environments w...
Mobile robot's navigation and obstacle avoidance in an unknown and static environment is analyzed in...
AbstractThis paper presents an implementation of an evolutionary algorithm to control a robot with a...
As the field of robotics and automation continues to expand, the task of positioning and navigation ...
Graduation date: 2010The use of autonomous robots in complex exploration tasks is rapidly increasing...
This paper investigates evolutionary approaches to enable robotic agents to learn strategies for ene...
Robotics technology has been evolved rapidly these last two decades especially in autonomous mobile ...
Many applications of autonomous robots depend on the robot being able to navigate in real world envi...
Online navigation with known target and unknown obstacles is an interesting problem in mobile roboti...
This paper explores the application of genetic algorithms to the learning of local robot navigation ...
This paper deals with the problem of autonomous navigation of a mobile robot in an unknown 2D enviro...
In this paper we describe the evolution of a discrete-time recurrent neural network to control a rea...
Exploration of unknown environments has numerous applications in the domains of search and rescue, p...
Reliable indoor navigation in the presence of dynamic obstacles is an essential capability for mobil...
Most of existing robot learning methods have con-sidered the environment where their robots work un-...
Many robotic path planning applications, such as search and rescue, involve uncertain environments w...
Mobile robot's navigation and obstacle avoidance in an unknown and static environment is analyzed in...
AbstractThis paper presents an implementation of an evolutionary algorithm to control a robot with a...
As the field of robotics and automation continues to expand, the task of positioning and navigation ...
Graduation date: 2010The use of autonomous robots in complex exploration tasks is rapidly increasing...
This paper investigates evolutionary approaches to enable robotic agents to learn strategies for ene...
Robotics technology has been evolved rapidly these last two decades especially in autonomous mobile ...
Many applications of autonomous robots depend on the robot being able to navigate in real world envi...
Online navigation with known target and unknown obstacles is an interesting problem in mobile roboti...
This paper explores the application of genetic algorithms to the learning of local robot navigation ...
This paper deals with the problem of autonomous navigation of a mobile robot in an unknown 2D enviro...
In this paper we describe the evolution of a discrete-time recurrent neural network to control a rea...
Exploration of unknown environments has numerous applications in the domains of search and rescue, p...
Reliable indoor navigation in the presence of dynamic obstacles is an essential capability for mobil...
Most of existing robot learning methods have con-sidered the environment where their robots work un-...
Many robotic path planning applications, such as search and rescue, involve uncertain environments w...
Mobile robot's navigation and obstacle avoidance in an unknown and static environment is analyzed in...
AbstractThis paper presents an implementation of an evolutionary algorithm to control a robot with a...