A method is described for generating plan-like. reflexive. obstacle avoidance behaviour in a mobile robot. The experiments reported here use a simulated vehicle with a primitive range sensor. Avoidance behaviour is encoded as a set of continuous functions of the perceptual input space. These functions are stored using CMACs and trained by a variant of Barto and Sutton's adaptive critic algorithm. As the vehicle explores its surroundings it adapts its responses to sensory stimuli so as to minimise the negative reinforcement arising from collisions. Strategies for local navigation are therefore acquired in an explicitly goal-driven fashion. The resulting trajectories form elegant collisionfree paths through the environment
This paper applies reinforcement learning techniques to an asteroids-type game. Both Q-Learning and ...
Artificial intelligence researchers have been attracted by the idea of having robots learn how to ac...
We have recently introduced a self-organizing adaptive neural controller that learns to control move...
A method is described for generating plan-like. reflexive. obstacle avoidance behaviour in a mobile ...
Path planning and trajectory planning is an important aspect of navigation in the field of robotics ...
Nowadays, robots have more and more sensors and the technologies allow using them with less contrain...
This paper describes the application of a model of operant conditioning to the problem of obstacle a...
In robotics, obstacle avoidance is an essential ability for distance sensor-based robots. This type ...
Publisher Copyright: © 2021 by the authors. Licensee MDPI, Basel, Switzerland.In robotics, obstacle ...
Abstract: this article is a continuation of the previous article called “Obstacle Avoidance in Dynam...
Initial results of an ongoing research in the field of reactive mobile autonomy are presented. The a...
. Recently it has been introduced a neural controller for a mobile robot that learns both forward an...
Autonomous travel poses challenges in machine learning navigation. Different approaches have been co...
Mobile robots that operate in human environments require the ability to safely navigate among humans...
This paper describes a reinforcement connec-tionist learning mechanism that allows a goal-directed a...
This paper applies reinforcement learning techniques to an asteroids-type game. Both Q-Learning and ...
Artificial intelligence researchers have been attracted by the idea of having robots learn how to ac...
We have recently introduced a self-organizing adaptive neural controller that learns to control move...
A method is described for generating plan-like. reflexive. obstacle avoidance behaviour in a mobile ...
Path planning and trajectory planning is an important aspect of navigation in the field of robotics ...
Nowadays, robots have more and more sensors and the technologies allow using them with less contrain...
This paper describes the application of a model of operant conditioning to the problem of obstacle a...
In robotics, obstacle avoidance is an essential ability for distance sensor-based robots. This type ...
Publisher Copyright: © 2021 by the authors. Licensee MDPI, Basel, Switzerland.In robotics, obstacle ...
Abstract: this article is a continuation of the previous article called “Obstacle Avoidance in Dynam...
Initial results of an ongoing research in the field of reactive mobile autonomy are presented. The a...
. Recently it has been introduced a neural controller for a mobile robot that learns both forward an...
Autonomous travel poses challenges in machine learning navigation. Different approaches have been co...
Mobile robots that operate in human environments require the ability to safely navigate among humans...
This paper describes a reinforcement connec-tionist learning mechanism that allows a goal-directed a...
This paper applies reinforcement learning techniques to an asteroids-type game. Both Q-Learning and ...
Artificial intelligence researchers have been attracted by the idea of having robots learn how to ac...
We have recently introduced a self-organizing adaptive neural controller that learns to control move...