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首页> 外文期刊>Annals of Mathematics and Artificial Intelligence >Efficient exploration of unknown indoor environments using a team of mobile robots
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Efficient exploration of unknown indoor environments using a team of mobile robots

机译:使用移动机器人团队高效探索未知的室内环境

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Whenever multiple robots have to solve a common task, they need to coordinate their actions to carry out the task efficiently and to avoid interferences between individual robots. This is especially the case when considering the problem of exploring an unknown environment with a team of mobile robots. To achieve efficient terrain coverage with the sensors of the robots, one first needs to identify unknown areas in the environment. Second, one has to assign target locations to the individual robots so that they gather new and relevant information about the environment with their sensors. This assignment should lead to a distribution of the robots over the environment in a way that they avoid redundant work and do not interfere with each other by, for example, blocking their paths. In this paper, we address the problem of efficiently coordinating a large team of mobile robots. To better distribute the robots over the environment and to avoid redundant work, we take into account the type of place a potential target is located in (e.g., a corridor or a room). This knowledge allows us to improve the distribution of robots over the environment compared to approaches lacking this capability. To autonomously determine the type of a place, we apply a classifier learned using the AdaBoost algorithm. The resulting classifier takes laser range data as input and is able to classify the current location with high accuracy. We additionally use a hidden Markov model to consider the spatial dependencies between nearby locations. Our approach to incorporate the information about the type of places in the assignment process has been implemented and tested in different environments. The experiments illustrate that our system effectively distributes the robots over the environment and allows them to accomplish their mission faster compared to approaches that ignore the place labels.
机译:每当多个机器人必须解决一个共同的任务时,它们就需要协调其动作以有效地执行任务并避免单个机器人之间的干扰。在考虑使用移动机器人团队探索未知环境的问题时尤其如此。为了利用机器人的传感器实现有效的地形覆盖,首先需要识别环境中的未知区域。其次,必须将目标位置分配给各个机器人,以便它们使用其传感器收集有关环境的新的相关信息。这种分配应导致机器人在整个环境中的分布,从而避免重复工作,并且不会因阻塞路径等相互干扰。在本文中,我们解决了有效协调大型移动机器人团队的问题。为了在环境中更好地分配机器人并避免多余的工作,我们考虑了潜在目标所在的位置类型(例如走廊或房间)。与缺乏此功能的方法相比,这种知识使我们能够改善环境中机器人的分布。为了自主确定地点的类型,我们应用了使用AdaBoost算法学习到的分类器。最终的分类器将激光测距数据作为输入,并能够以高精度对当前位置进行分类。我们还使用隐马尔可夫模型来考虑附近位置之间的空间依赖性。我们在不同的环境中已经实施和测试了将有关地点类型的信息纳入分配过程的方法。实验表明,与忽略位置标签的方法相比,我们的系统可以有效地将机器人分配到整个环境中,并使它们更快地完成任务。

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