Route learning in mobile robots through self-organisation

C. Owen, U. Nehmzow
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引用次数: 28

Abstract

This paper describes route-learning experiments with an autonomous mobile robot in which map building is achieved through a process of unsupervised clustering of sensory data. The resulting topological mapping of the robot's perceptual space is used for subsequent navigation tasks such as route following. After the autonomous mapbuilding process is completed, the acquired generalised perceptions are associated with motor actions, enabling the robot to follow routes autonomously. The navigation system has been tested extensively on a Nomad 200 mobile robot, it is reliable and copes with noise and variation inherent in the environment. One important aspect of the map building and route following system described here is that relevance or irrelevance of perceptual features is determined autonomously by the robot, not through predefinition by the designer. Secondly, the presented route learning system enables the robot to use the map for association of perception with action, rather than localisation alone.
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基于自组织的移动机器人路径学习
本文描述了一个自主移动机器人的路径学习实验,其中地图的构建是通过对感官数据的无监督聚类过程来实现的。机器人感知空间的拓扑映射用于后续的导航任务,如路线跟踪。在自主地图构建过程完成后,获得的广义感知与运动动作相关联,使机器人能够自主地遵循路线。该导航系统已经在Nomad 200移动机器人上进行了广泛的测试,它是可靠的,可以应对环境中固有的噪音和变化。这里描述的地图构建和路线跟踪系统的一个重要方面是,感知特征的相关性或不相关性是由机器人自主决定的,而不是通过设计师的预先定义。其次,所提出的路径学习系统使机器人能够使用地图将感知与行动联系起来,而不仅仅是定位。
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