...
首页> 外文期刊>Sensors >Assessment of Receiver Signal Strength Sensing for Location Estimation Based on Fisher Information
【24h】

Assessment of Receiver Signal Strength Sensing for Location Estimation Based on Fisher Information

机译:基于Fisher信息的接收机信号强度传感评估,用于位置估计

获取原文
           

摘要

Currently there is almost ubiquitous availability of wireless signaling for data communications within commercial building complexes resulting in receiver signal strength (RSS) observables that are typically sufficient for generating viable location estimates of mobile wireless devices. However, while RSS observables are generally plentiful, achieving an accurate estimation of location is difficult due to several factors affecting the electromagnetic coupling between the mobile antenna and the building access points that are not modeled and hence contribute to the overall estimation uncertainty. Such uncertainty is typically mitigated with a moderate redundancy of RSS sensor observations in combination with other constraints imposed on the mobile trajectory. In this paper, the Fisher Information (FI) of a set of RSS sensor observations in the context of variables related to the mobile location is developed. This provides a practical method of determining the potential location accuracy for the given set of wireless signals available. Furthermore, the information value of individual RSS measurements can be quantified and the RSS observables weighted accordingly in estimation combining algorithms. The practical utility of using FI in this context was demonstrated experimentally with an extensive set of RSS measurements recorded in an office complex. The resulting deviation of the mobile location estimation based on application of weighted likelihood processing to the experimental RSS data was shown to agree closely with the Cramer Rao bound determined from the FI analysis.
机译:当前,几乎无处不在的无线信令可用于商业建筑群内的数据通信,从而产生通常足以生成移动无线设备可行位置估计的接收器信号强度(RSS)观测值。但是,尽管RSS观测值通常很丰富,但是由于影响移动天线与建筑物接入点之间的电磁耦合的一些因素尚未建模,因此难以准确估计位置,从而导致总体估计不确定性。通常,通过适度地增加RSS传感器观测值以及施加在移动轨迹上的其他约束,可以减轻这种不确定性。在本文中,开发了在与移动位置相关的变量的上下文中一组RSS传感器观测值的Fisher信息(FI)。这提供了一种确定可用给定无线信号集合的潜在位置精度的实用方法。此外,在估计组合算法中,可以对单个RSS测量的信息值进行量化,并对RSS观测值进行加权。通过在办公大楼中记录的大量RSS测量,实验证明了在这种情况下使用FI的实用性。结果表明,基于加权似然处理对实验RSS数据的移动位置估计的最终偏差与通过FI分析确定的Cramer Rao界线非常吻合。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号