Observability analysis of 2D geometric features using the condition number for SLAM applications

Suyong Yeon, N. Doh
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引用次数: 7

Abstract

Observability analysis is a very powerful tool for discriminating whether a robot can estimate its own state. However, this method cannot investigate how much of the system is observable. This is a major problem from a state estimation perspective because there is too much noise in real environments. Therefore, although the system (or a mobile robot) is observable, it cannot estimate its own state. To address this problem, we propose an observability analysis method that uses the condition number. Mathematically, the condition number of matrix represents a degree of robustness to noise. We utilize this property of the condition number to investigate the degree of observability. In other words, the condition number of the observability matrix demonstrates the feasibility of state estimation and the robustness of its feasibility for estimation.
利用 SLAM 应用中的条件数分析二维几何特征的可观测性
可观察性分析是一种非常强大的工具,可用于判别机器人能否估计自身状态。但是,这种方法无法研究系统中有多少是可观测的。从状态估计的角度来看,这是一个大问题,因为真实环境中存在太多噪音。因此,尽管系统(或移动机器人)是可观测的,但它无法估计自己的状态。为了解决这个问题,我们提出了一种使用条件数的可观测性分析方法。从数学上讲,矩阵的条件数代表了对噪声的鲁棒性程度。我们利用条件数的这一特性来研究可观测性的程度。换句话说,可观测性矩阵的条件数证明了状态估计的可行性及其估计可行性的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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