保证鲁棒非线性估计及其在机器人定位中的应用

L. Jaulin, M. Kieffer, E. Walter, D. Meizel
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引用次数: 48

摘要

当数据和相应的模型输出之间的可接受误差有可靠的先验界限时,有界误差估计技术使得以保证的方式表征所有可接受参数向量的集合成为可能,即使模型是非线性的,数据点的数量很少。然而,当数据可能包含异常值时,即数据点违反了这些界限,这个集合可能是空的,或者至少是不切实际的小。通过最小化被认为是离群值的数据点的数量,离群值最小数估计器(OMNE)被设计用来处理这种情况。在之前的论文中,OMNE已经被证明是非常稳健的,即使对于大多数的异常值也是如此。到目前为止,它是通过随机扫描实现的,所以它的结果不能保证。本文提出了一种基于区间分析的集合反演的新算法,该算法提供了一个保证的OMNE,并将其应用于实际机器人在部分已知的二维环境中的初始定位。将距离数据与环境地标相关联以及检测潜在异常值的难题作为该程序的副产品得到解决。
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Guaranteed robust nonlinear estimation with application to robot localization
When reliable prior bounds on the acceptable errors between the data and corresponding model outputs are available, bounded-error estimation techniques make it possible to characterize the set of all acceptable parameter vectors in a guaranteed way, even when the model is nonlinear and the number of data points small. However, when the data may contain outliers, i.e., data points for which these bounds should be violated, this set may turn out to be empty, or at least unrealistically small. The outlier minimal number estimator (OMNE) has been designed to deal with such a situation, by minimizing the number of data points considered as outliers. OMNE has been shown in previous papers to be remarkably robust, even to a majority of outliers. Up to now, it was implemented by random scanning, so its results could not be guaranteed. In this paper, a new algorithm based on set inversion via interval analysis provides a guaranteed OMNE, which is applied to the initial localization of an actual robot in a partially known two-dimensional (2-D) environment. The difficult problems of associating range data to landmarks of the environment and of detecting potential outliers are solved as byproducts of the procedure.
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3 months
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