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Square Root SAM

机译:平方根SAM

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摘要

Solving the SLAM problem is one way to enable a robot to explore, map, and navigate in a previously unknown environment. We investigate smoothing approaches as a viable alternative to extended Kalman filter-based solutions to the problem. In particular, we look at approaches that factorize either the associated information matrix or the measurement matrix into square root form. Such techniques have several significant advantages over the EKF: they are faster yet exact, they can be used in either batch or incremental mode, are better equipped to deal with non-linear process and measurement models, and yield the entire robot trajectory, at lower cost. In addition, in an indirect but dramatic way, column ordering heuristics automatically exploit the locality inherent in the geographic nature of the SLAM problem.rnIn this paper we present the theory underlying these methods, an interpretation of factorization in terms of the graphical model associated with the SLAM problem, and simulation results that underscore the potential of these methods for use in practice.
机译:解决SLAM问题是使机器人能够在以前未知的环境中进行浏览,映射和导航的一种方法。我们研究平滑方法,作为扩展的基于卡尔曼滤波器的解决方案的可行替代方案。特别是,我们研究了将相关信息矩阵或度量矩阵分解为平方根形式的方法。这样的技术相对于EKF具有几个显着的优点:它们更快,更精确,可以以批处理或增量模式使用,具有更好的能力来处理非线性过程和测量模型,并以更低的成本产生整个机器人轨迹成本。此外,列排序试探法以一种间接但引人注目的方式自动利用了SLAM问题的地理本质所固有的局部性。在本文中,我们介绍了这些方法的基础,即对因式分解的图形化解释。 SLAM问题和仿真结果突显了这些方法在实践中的潜力。

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