基于相对方位约束的有界不确定性协同定位方法

C. J. Taylor, J. Spletzer
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引用次数: 31

摘要

本文描述了一种基于鲁棒估计的协同定位方法,该方法采用未知但有界的传感器测量误差模型。在该框架中,机器人获得的距离和方位测量被视为约束条件,隐式地定义了机器人团队关节构型空间中的一组可行解。该方案利用凸优化技术逼近可行集在组形空间各子空间上的投影,产生组形相对构型的有界不确定性估计。该方案还可用于定位分布式传感器节点。该方法的一个重要优点是,即使在机器人的相对方向完全未知的情况下,它也能够对机器人的相对构型产生有界不确定性估计。这是一个重要的实际进展,因为相对方向误差通常是多机器人定位方案中定位不确定性的主要因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A bounded uncertainty approach to cooperative localization using relative bearing constraints
This paper describes an approach to cooperative localization which finds its roots in robust estimation, employing an unknown-but-bounded error model for sensor measurements. In this framework, range and bearing measurements obtained by the robots are viewed as constraints which implicitly define a set of feasible solutions in the joint configuration space of the robot team. The scheme produces bounded uncertainty estimates for the relative configuration of the team by using convex optimization techniques to approximate the projection of this feasible set onto various subspaces of the configuration space. The scheme can also be used to localize distributed sensor nodes. An important advantage of the proposed approach is that it is able to produce bounded uncertainty estimates for the relative configuration of the robots even in the case where the relative orientations of the robots are completely unknown. This is an important practical advance since errors in relative orientation are often a major contributor to positioning uncertainty in multi-robot localization schemes.
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