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An Everyday Robotic System that Maintains Local Rules Using Semantic Map Based on Long-Term Episodic Memory

机译:一种日常机器人系统,通过基于长期的情节内存使用语义地图来维护本地规则

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To enable robots to work on real home environments, they have to not only consider common knowledge in the global society, but also be aware of existing rules there. Since such "local rules" are not describable beforehand, robot agents must acquire them through their lives after deployment. To achieve this, we developed a framework that a) lets robots record long-term episodic memories in their deployed environments, b) autonomously builds probabilistic object localization map as structurization of logged data and c) make adapted task plans based on the map. We equipped our framework on PR2 and Fetch robots operating and recording episodic memory for 41 days with semantic common knowledge of the environment. We also conducted demonstrations in which a PR2 robot tidied up a room, showing that the robot agent can successfully plan and execute local-rule-aware home assistive tasks by using our proposed framework.
机译:为了使机器人能够在真实的家庭环境上工作,他们不仅要考虑全球社会中的共同知识,还要了解那里的现有规则。由于此类“本地规则”是不再被描述的,因此机器人代理必须在部署后通过他们的生活获取它们。为实现这一目标,我们开发了一个框架,即a)让机器人在其部署的环境中记录长期焦点存储器,b)自主地构建概率的对象定位地图作为记录数据的结构化和c)基于地图进行适应的任务计划。我们在PR2和获取机器人上配备了框架,操作和记录情节内存41天,具有环境的语义常识。我们还开展了一个PR2机器人针对一个房间的示范,表明机器人代理可以通过使用我们提出的框架成功计划和执行本地规则感知的家庭辅助任务。

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