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Towards a robust back-end for pose graph SLAM

机译:迈向功能强大的后端姿势图SLAM

摘要

Current state of the art solutions of the SLAM problem are based on efficient sparse optimization techniques and represent the problem as probabilistic constraint graphs. For example in pose graphs the nodes represent poses and the edges between them express spatial information (e.g. obtained from odometry) and information on loop closures. The task of constructing the graph is delegated to a front-end that has access to the available sensor information. The optimizer, the so called back-end of the system, relies heavily on the topological correctness of the graph structure and is not robust against misplaced constraint edges. Especially edges representing false positive loop closures will lead to the divergence of current solvers. We propose a novel formulation that allows the back-end to change parts of the topological structure of the graph during the optimization process. The back-end can thereby discard loop closures and converge towards correct solutions even in the presence of false positive loop closures. This largely increases the overall robustness of the SLAM system and closes a gap between the sensor-driven front-end and the back-end optimizers. We demonstrate the approach and present results both on large scale synthetic and real-world datasets.
机译:SLAM问题的最新解决方案基于有效的稀疏优化技术,并将该问题表示为概率约束图。例如,在姿势图中,节点表示姿势,并且它们之间的边缘表达空间信息(例如,从测距法获得)和关于闭合回路的信息。构造图形的任务委托给可以访问可用传感器信息的前端。优化器,即所谓的系统后端,在很大程度上依赖于图结构的拓扑正确性,并且对于错放的约束边缘没有足够的鲁棒性。特别是代表错误的正环路闭合的边缘将导致电流求解器发散。我们提出了一种新颖的公式,该公式允许后端在优化过程中更改图的拓扑结构的各个部分。后端因此可以丢弃闭环并收敛到正确的解,即使在存在错误的正闭环的情况下也是如此。这在很大程度上提高了SLAM系统的整体鲁棒性,并缩小了传感器驱动的前端和后端优化器之间的差距。我们演示了该方法,并在大规模合成数据和真实数据集上均显示了结果。

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