The paper focuses on recognition and classification of path features during navigation of a mobile robot. The extracted features play the role of relevant navigation situations as (in a corridor), (at a turning point), (in a narrow passage). The method is an incremental learning and classification technique, based on a self-organizing neural model. Two different self-organizing networks are used to encode occupancy bitmaps generated from sonar patterns in terms of obstacles boundaries and free paths, and heuristic procedures are applied to these growing networks to add and prune units, to determine topological correctness between units, to distinguish and categorize features
This paper introduces an approach for learning environmental maps based on ultrasonic range data. A ...
This thesis studies the applicability of the Self-Organizing Maps (SOM) in generating the necessary ...
This paper introduces an approach for learning environmental maps based on ultrasonic range data. A ...
Abstract-- In the present paper a system for generation of topological maps is going to be presented...
We investigate a method to navigate a mo-bile robot by using self-organizing map and reinforcement l...
In this paper the feasibility of equipping a mobile robot with the ability to learn a path, in real ...
Navigation is a major challenge for autonomous, mobile robots. The problem can basically be divided ...
Abstract- This paper presents an approach to global self-localization for autonomous mobile robots u...
In many classification problems, it is necessary to consider the specific location of an n-dimension...
Autonomous robots must be able to learn and maintain models of their environments. In this context, ...
Abstract. In this paper we propose a sensor-based navigation method for navigation of wheeled mobile...
This paper introduces an approach for learning environmental maps based on ultrasonic range data. A ...
This paper introduces an approach for learning environmental maps based on ultrasonic range data. A ...
In this paper we present a navigation system for a mobile robot that is capable of operating in dyna...
Autonomous mobile robots typically require a preconceived and very detailed navigational model (map)...
This paper introduces an approach for learning environmental maps based on ultrasonic range data. A ...
This thesis studies the applicability of the Self-Organizing Maps (SOM) in generating the necessary ...
This paper introduces an approach for learning environmental maps based on ultrasonic range data. A ...
Abstract-- In the present paper a system for generation of topological maps is going to be presented...
We investigate a method to navigate a mo-bile robot by using self-organizing map and reinforcement l...
In this paper the feasibility of equipping a mobile robot with the ability to learn a path, in real ...
Navigation is a major challenge for autonomous, mobile robots. The problem can basically be divided ...
Abstract- This paper presents an approach to global self-localization for autonomous mobile robots u...
In many classification problems, it is necessary to consider the specific location of an n-dimension...
Autonomous robots must be able to learn and maintain models of their environments. In this context, ...
Abstract. In this paper we propose a sensor-based navigation method for navigation of wheeled mobile...
This paper introduces an approach for learning environmental maps based on ultrasonic range data. A ...
This paper introduces an approach for learning environmental maps based on ultrasonic range data. A ...
In this paper we present a navigation system for a mobile robot that is capable of operating in dyna...
Autonomous mobile robots typically require a preconceived and very detailed navigational model (map)...
This paper introduces an approach for learning environmental maps based on ultrasonic range data. A ...
This thesis studies the applicability of the Self-Organizing Maps (SOM) in generating the necessary ...
This paper introduces an approach for learning environmental maps based on ultrasonic range data. A ...