覆盖间隙和测量误差对指纹室内定位的影响

J. Talvitie, E. Lohan, M. Renfors
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引用次数: 25

摘要

在本文中,我们估计了覆盖间隙和不准确的接收信号强度(RSS)值在基于无线局域网(WLAN)的室内指纹定位中的影响。结果基于广泛的测量活动,包括两个多层建筑,共发现700多个WLAN接入点。我们引入了一种新的随机方法来人为地在数据库中创建现实的覆盖差距。进一步强调了覆盖间隙建模的真实指纹去除过程不能基于均匀分布的概率密度函数。使用著名的k -最近邻(KNN)算法比较原始数据库和部分数据库的用户定位性能。此外,我们还对数据库中的RSS不准确性进行了建模,这些不准确性源于校准不当的学习数据或学习数据收集设备与用于定位的设备之间的持续偏差。从多个用户轨迹的平均水平定位误差和平均楼层检测概率以及随机去除过程的角度,研究了覆盖间隙和RSS不精度对用户定位精度的影响。所提出的结果和提供的方法允许对收集的学习数据进行误差量纲化,并有助于在未来的室内定位研究中规划测量活动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The effect of coverage gaps and measurement inaccuracies in fingerprinting based indoor localization
In this paper we estimate the effect of coverage gaps and inaccurate Received Signal Strength (RSS) values in fingerprinting based indoor localization using Wireless Local Area Networks (WLAN). The results are based on extensive measurement campaign including two multi-storey buildings with over 700 found WLAN access points in total. We introduce a novel randomized method to artificially create realistic coverage gaps in the database. It is further emphasized that a realistic fingerprint removal process for modeling coverage gaps cannot be based in uniformly distributed probability density function. User positioning performance between the original database and the partial database is compared using the well-known K-Nearest Neighbor (KNN) algorithm. In addition, we model RSS inaccuracies in the database originated from badly calibrated learning data or from a constant bias between learning data collection devices and the device used for positioning. The effect of coverage gaps and RSS inaccuracies on the user positioning accuracy is studied in terms of average horizontal positioning error and in average floor detection probability over several user tracks and randomized removal processes. The presented results and the provided methodology allow error dimensioning of collected learning data and assist in planning measurement campaigns in future indoor positioning studies.
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