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Speeded Up Elevation Map for Exploration of Large-Scale Subterranean Environments

机译:加快高级地图,以探索大型地下环境

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In this paper, we address a problem of the exploration of large-scale subterranean environments using autonomous ground mobile robots. In particular, we focus on an efficient data representation of the large-scale elevation map, where it is desirable to capture the shape of the terrain to avoid areas not traversable by a robot. Subterranean environments such as mine tunnel systems can be in units of kilometers large, but only a relatively small portion of the environment represents observable parts. Therefore, uniform grid-based elevation maps with resolution in units of centimeters are not memory efficient, and more suitable are hierarchical tree-based structures. However, hierarchical structures suffer from the increased computational requirements of accessing particular grid cells needed in determination of the navigational goals or evaluation of the terrain traversability in planning safe and cost-efficient paths. We propose a speed-up technique to combine the benefits of uniform grid-based and tree-based representations. The proposed elevation map representation keeps the memory footprint low using tree structure but enables fast access to the grid cells corresponding to the robot surroundings. The efficiency of the proposed data representation is demonstrated in an experimental deployment of the autonomous exploration of outdoor and subterranean environments.
机译:在本文中,我们使用自主地面移动机器人解决了大型地下环境探索的问题。特别地,我们专注于大尺度高度映射的有效数据表示,在那里希望捕获地形的形状以避免由机器人推动的区域。矿井隧道系统等地下环境可以单位,但只有相对较小的环境仅代表可观察部件。因此,以厘米为单位的分辨率的基于均匀的基于网格的高度映射不是记忆力,并且更合适的是基于分层的基于树的结构。然而,等级结构遭受在规划安全和成本效益的路径中确定导航目标或对地形遍历的评估等所需的特定网格单元的增加的计算要求。我们提出了一种加速技术,以结合统一基于网格和基于树的表示的好处。所提出的高度映射表示使用树结构保持内存占用空间,但是能够快速访问与机器人周围相对应的网格单元。在户外和地下环境的自主探索的实验部署中,证明了所提出的数据表示的效率。

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