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Towards Lifelong Object Learning by Integrating Situated Robot Perception and Semantic Web Mining

机译:通过整合位于机器人感知和语义网挖掘来实现终身对象学习

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Autonomous robots that are to assist humans in their daily lives are required, among other things, to recognize and understand the meaning of task-related objects. However, given an open-ended set of tasks, the set of everyday objects that robots will encounter during their lifetime is not foreseeable. That is, robots have to learn and extend their knowledge about previously unknown objects on-the-job. Our approach automatically acquires parts of this knowledge (e.g., the class of an object and its typical location) in form of ranked hypotheses from the Semantic Web using contextual information extracted from observations and experiences made by robots. Thus, by integrating situated robot perception and Semantic Web mining, robots can continuously extend their object knowledge beyond perceptual models which allows them to reason about task-related objects, e.g., when searching for them, robots can infer the most likely object locations. An evaluation of the integrated system on long-term data from real office observations, demonstrates that generated hypotheses can effectively constrain the meaning of objects. Hence, we believe that the proposed system can be an essential component in a lifelong learning framework which acquires knowledge about objects from real world observations.
机译:在其他事情中,可以在其日常生活中帮助人类的自治机器人是为了认识到任务相关对象的含义。但是,给定了一个开放式任务集,该集合机器人在终身期间会遇到的日常物体的集合不可预见。也就是说,机器人必须学习并扩展他们在作业上以前未知的对象的知识。我们的方法以使用从机器人提取的观察和经验提取的上下文信息从语义网络的排名假设的形式自动地获取这些知识(例如,对象的类别和其典型位置)。因此,通过集成位于机器人感知和语义网挖掘,机器人可以连续地扩展其超越感知模型的对象知识,这允许它们推理关于任务相关的对象,例如,当搜索它们时,机器人可以推断最可能的对象位置。从真正的办公室观测结果对综合系统的评估表明生成的假设可以有效地限制对象的含义。因此,我们认为,所提出的系统可以是终身学习框架中的重要组成部分,从真实的世界观察中获取了关于对象的知识。

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