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Development of a Kalman Filter in the Gauss-Helmert Model for Reliability Analysis in Orientation Determination with Smartphone Sensors

机译:高斯-赫尔默特模型中卡尔曼滤波器的开发用于智能手机传感器方向确定中的可靠性分析

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摘要

The topic of indoor positioning and indoor navigation by using observations from smartphone sensors is very challenging as the determined trajectories can be subject to significant deviations compared to the route travelled in reality. Especially the calculation of the direction of movement is the critical part of pedestrian positioning approaches such as Pedestrian Dead Reckoning (“PDR”). Due to distinct systematic effects in filtered trajectories, it can be assumed that there are systematic deviations present in the observations from smartphone sensors. This article has two aims: one is to enable the estimation of partial redundancies for each observation as well as for observation groups. Partial redundancies are a measure for the reliability indicating how well systematic deviations can be detected in single observations used in PDR. The second aim is to analyze the behavior of partial redundancy by modifying the stochastic and functional model of the Kalman filter. The equations relating the observations to the orientation are condition equations, which do not exhibit the typical structure of the Gauss-Markov model (“GMM”), wherein the observations are linear and can be formulated as functions of the states. To calculate and analyze the partial redundancy of the observations from smartphone-sensors used in PDR, the system equation and the measurement equation of a Kalman filter as well as the redundancy matrix need to be derived in the Gauss-Helmert model (“GHM”). These derivations are introduced in this article and lead to a novel Kalman filter structure based on condition equations, enabling reliability assessment of each observation.
机译:通过使用来自智能手机传感器的观察进行室内定位和室内导航的主题非常具有挑战性,因为与实际行驶的路线相比,确定的轨迹可能会出现重大偏差。尤其是,运动方向的计算是行人定位方法(如行人航位推测法(“ PDR”))的关键部分。由于在过滤的轨迹中有明显的系统影响,因此可以假设智能手机传感器的观测结果中存在系统偏差。本文有两个目标:一个是要能够估计每个观察值以及观察组的部分冗余。部分冗余是可靠性的一种度量,表明在PDR中使用的单个观测值可以很好地检测到系统偏差。第二个目的是通过修改卡尔曼滤波器的随机和功能模型来分析部分冗余的行为。将观察与取向相关联的方程是条件方程,其不表现出高斯-马尔可夫模型(“ GMM”)的典型结构,其中观察是线性的,可以公式化为状态的函数。为了计算和分析PDR中使用的智能手机传感器的观测值的部分冗余,需要在高斯-赫尔默特模型(“ GHM”)中推导Kalman滤波器的系统方程和测量方程以及冗余矩阵。本文对这些推导进行了介绍,并得出了基于条件方程式的新型卡尔曼滤波器结构,从而能够评估每个观测值的可靠性。

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