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Building semantic grid maps for domestic robot navigation

机译:为国内机器人导航构建语义网格图

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This article proposes a semantic grid mapping method for domestic robot navigation. Occupancy grid maps are sufficient for mobile robots to complete point-to-point navigation tasks in 2-D small-scale environments. However, when used in the real domestic scene, grid maps are lack of semantic information for end users to specify navigation tasks conveniently. Semantic grid maps, enhancing the occupancy grid map with the semantics of objects and rooms, endowing the robots with the capacity of robust navigation skills and human-friendly operation modes, are thus proposed to overcome this limitation. In our method, an object semantic grid map is built with low-cost sonar and binocular stereovision sensors by correctly fusing the occupancy grid map and object point clouds. Topological spaces of each object are defined to make robots autonomously select navigation destinations. Based on the domestic common sense of the relationship between rooms and objects, topological segmentation is used to get room semantics. Our method is evaluated in a real homelike environment, and the results show that the generated map is at a satisfactory precision and feasible for a domestic mobile robot to complete navigation tasks commanded in natural language with a high success rate.
机译:本文提出了一种用于国内机器人导航的语义网格映射方法。占用网格贴图足以让移动机器人在2-D小规模环境中完成点对点导航任务。但是,在真实的国内场景中使用时,网格图缺少最终用户的语义信息,以方便地指定导航任务。因此提出了用物体和房间的语义增强占用网格图,增强了物体和房间的语义,因此提出了具有强大的导航技能和人友好的操作模式的机器人,以克服这种限制。在我们的方法中,通过正确融合占用网格图和对象点云,使用低成本的声纳和双目立体宽度传感器构建对象语义网格图。每个对象的拓扑空间被定义为使机器人自主选择导航目标。基于家庭和物体之间关系的国内常识,拓扑分割用于获得室刊。我们的方法在真正的家庭环境中进行了评估,结果表明,生成的地图对于国内移动机器人以高成功率以自然语言命令的导航任务完成导航任务的令人满意的精度和可行的。

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