大型开放式室内环境中测点的配置

Kaikai Sheng, Zhicheng Gu, Xueyu Mao, Xiaohua Tian, Weijie Wu, Xiaoying Gan, Xinbing Wang
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引用次数: 11

摘要

随着移动设备的普及,基于众包的接收信号强度(RSS)指纹采集方法因其有效且不需要预先部署而备受关注,便于室内定位。然而,在博物馆、展览中心等大型开放室内环境中,RSS测点不能密集配置,降低了定位精度。重点研究了不同情况下测点的配置及其对定位精度的影响。首先,在假设用户均匀分布的情况下,我们研究了两种简单的初步情况:当测量点有规律地配置时,我们提出了最有利于定位精度的配置模式;当测量点随机配置时,我们证明了定位精度受到严格限制。在用户不对称分布的一般情况下,给出了测点的最佳分配方案:测点密度ρ在区域的每一部分都与(cμ)2/3成正比,其中μ为用户密度,c为由配置模式决定的常数。我们还给出了一些搭配选择的指导原则,并进行了大量的模拟来验证我们的假设和结果。
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The collocation of measurement points in large open indoor environment
With the pervasion of mobile devices, crowdsourcing based received signal strength (RSS) fingerprint collection method has drawn much attention to facilitate the indoor localization since it is effective and requires no pre-deployment. However, in large open indoor environment like museums and exhibition centres, RSS measurement points cannot be collocated densely, which degrades localization accuracy. This paper focuses on measurement point collocation in different cases and their effects on localization accuracy. We first study two simple preliminary cases under assumption that users are uniformly distributed: when measurement points are collocated regularly, we propose a collocation pattern which is most beneficial to localization accuracy; when measurement points are collocated randomly, we prove that localization accuracy is limited by a tight bound. Under the general case that users are distributed asymmetrically, we show the best allocation scheme of measurement points: measurement point density ρ is proportional to (cμ)2/3 in every part of the region, where μ is user density and c is a constant determined by the collocation pattern. We also give some guidelines on collocation choice and perform extensive simulations to validate our assumptions and results.
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