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Fast, on-line learning of globally consistent maps

机译:快速在线学习全局一致的地图

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To navigate in unknown environments, mobile robots require the ability to build their own maps. A major problem for robot map building is that odometry-based dead reckoning cannot be used to assign accurate global position information to a map because of cumulative drift errors. This paper introduces a fast, on-line algorithm for learning geometrically consistent maps using only local metric information. The algorithm works by using a relaxation technique to minimize an energy function over many small steps. The approach differs from previous work in that it is computationally cheap, easy to implement and is proven to converge to a globally optimal solution. Experiments are presented in which large, complex environments were successfully mapped by a real robot.
机译:为了在未知环境中导航,移动机器人需要能够构建自己的地图。机器人地图构建的一个主要问题是,由于累积的漂移误差,基于里程表的航位推算不能用于为地图分配准确的全球位置信息。本文介绍了一种仅使用局部度量信息即可学习几何一致性地图的快速在线算法。该算法通过使用松弛技术在许多小步骤上最小化能量函数来工作。该方法与以前的工作不同之处在于,它的计算成本低,易于实现,并且已被证明可以收敛到全局最优解决方案。提出了通过真实的机器人成功绘制大型复杂环境的实验。

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