Using Noisy Georeferenced Information Sources for Navigation and Tracking

J. Guillet, F. LeGland
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引用次数: 4

Abstract

Localization, navigation and tracking form a special application domain of Bayesian filtering, where the position and velocity of a mobile (and possibly additional hyper-parameters) should be estimated based on (i) a prior model for the possible displacement of the mobile, (ii) noisy measurements provided by a sensor, and (iii) a georeferenced information source (digital map, reference data base, etc.), providing for each spatial position an estimate of the quantity measured by the sensor. For example in terrain-aided navigation (TAN) a radio-altimeter combined with an inertial navigation system (INS) provides an estimation of the terrain height below the platform, which can be correlated with the terrain height at each horizontal position, as read on a digital map. In wireless communications, the signal power received by the mobile from an access point (WiFi) or from a base station (GSM, UMTS) and measured by the mobile itself, can be correlated with another estimation of the signal power received at each spatial position, as read on a digital attenuation map or from a reference data base. Values read on a digital map are usually subject to errors which are in general spatially correlated and modeled as Gaussian random fields, with a known correlation function. This results in a temporal correlation of measurement noises, which should be accounted for in evaluating the likelihood function, an essential step in the derivation of the equation for the Bayesian filter.
利用噪声地理参考信息源进行导航和跟踪
定位、导航和跟踪形成了贝叶斯滤波的一个特殊应用领域,其中移动设备的位置和速度(可能还有额外的超参数)应该基于(i)移动设备可能位移的先验模型,(ii)传感器提供的噪声测量,以及(iii)地理参考信息源(数字地图、参考数据库等)来估计,为每个空间位置提供传感器测量量的估计。例如,在地形辅助导航(TAN)中,无线电高度计与惯性导航系统(INS)相结合,提供平台下方地形高度的估计,可以与数字地图上读取的每个水平位置的地形高度相关。在无线通信中,移动设备从接入点(WiFi)或基站(GSM、UMTS)接收到的信号功率并由移动设备自身测量,可以与在每个空间位置接收到的信号功率的另一个估计相关联,如在数字衰减图上或从参考数据库中读取的那样。在数字地图上读取的值通常会受到误差的影响,这些误差通常是空间相关的,并以高斯随机场为模型,具有已知的相关函数。这导致测量噪声的时间相关性,在评估似然函数时应该考虑到这一点,这是推导贝叶斯滤波器方程的重要步骤。
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