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首页> 外文期刊>Automation Science and Engineering, IEEE Transactions on >RoboEarth Semantic Mapping: A Cloud Enabled Knowledge-Based Approach
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RoboEarth Semantic Mapping: A Cloud Enabled Knowledge-Based Approach

机译:RoboEarth语义映射:一种基于云的知识基础方法

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The vision of the RoboEarth project is to design a knowledge-based system to provide web and cloud services that can transform a simple robot into an intelligent one. In this work, we describe the RoboEarth semantic mapping system. The semantic map is composed of: 1) an ontology to code the concepts and relations in maps and objects and 2) a SLAM map providing the scene geometry and the object locations with respect to the robot. We propose to ground the terminological knowledge in the robot perceptions by means of the SLAM map of objects. RoboEarth boosts mapping by providing: 1) a subdatabase of object models relevant for the task at hand, obtained by semantic reasoning, which improves recognition by reducing computation and the false positive rate; 2) the sharing of semantic maps between robots; and 3) software as a service to externalize in the cloud the more intensive mapping computations, while meeting the mandatory hard real time constraints of the robot. To demonstrate the RoboEarth cloud mapping system, we investigate two action recipes that embody semantic map building in a simple mobile robot. The first recipe enables semantic map building for a novel environment while exploiting available prior information about the environment. The second recipe searches for a novel object, with the efficiency boosted thanks to the reasoning on a semantically annotated map. Our experimental results demonstrate that, by using RoboEarth cloud services, a simple robot can reliably and efficiently build the semantic maps needed to perform its quotidian tasks. In addition, we show the synergetic relation of the SLAM map of objects that grounds the terminological knowledge coded in the ontology.
机译:RoboEarth项目的愿景是设计一个基于知识的系统,以提供可将简单的机器人转变为智能机器人的Web和云服务。在这项工作中,我们描述了RoboEarth语义映射系统。语义图包括:1)本体,用于编码图和对象中的概念和关系; 2)SLAM图,提供相对于机器人的场景几何形状和对象位置。我们建议借助SLAM对象图在机器人感知中扎实术语知识。 RoboEarth通过提供以下功能来增强映射能力:1)通过语义推理获得与手头任务相关的对象模型的子数据库,该子数据库通过减少计算和误报率来提高识别度; 2)机器人之间的语义图共享; 3)软件即服务,可在云中外部化更密集的映射计算,同时满足机器人的强制性硬实时约束。为了演示RoboEarth云映射系统,我们研究了两个在简单的移动机器人中体现语义地图构建的操作方法。第一个配方可在为环境建立可用的先验信息的同时,为新环境建立语义图。第二个配方搜索一个新颖的对象,这要归功于语义注释地图上的推理,从而提高了效率。我们的实验结果表明,通过使用RoboEarth云服务,一个简单的机器人可以可靠,有效地构建执行其quotidian任务所需的语义图。此外,我们显示了对象的SLAM映射的协同关系,该关系基于本体中编码的术语知识。

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