会展行业的快速设置和强大的WiFi定位

V. Cheng, Hao Li, J. Ng, W. K. Cheung
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引用次数: 3

摘要

随着WiFi设备(如智能手机)的普及,利用用户的路线或位置产生了许多新的商业机会。然而,目前大多数基于接收信号强度指标(RSSI)的方法通常假设目标(跟踪)设备具有与用于系统训练的设备相似的传输特性。这与实际情况相去甚远,可能会导致相当大的错误。我们提出了一种鲁棒的定位方法,该方法可以自动推断出每个设备的自定义信号强度-距离函数,并同时估计其位置。这是通过首先用一组分段线性函数近似函数来实现的,对于每个目标设备,当设备的RSSI数据越来越多时,使用期望最大值(EM)算法更新线性函数的参数。具体来说,在EM算法的期望步骤中,对目标设备的位置进行估计。而在算法的最大化步骤中,更新了为该设备定制的线性函数的参数。由于该方法能够在定位过程中学习参数,因此不需要训练过程或系统校准,从而缩短了系统设置时间。这一功能对于满足展览行业的特殊需求是实用的:从零开始建立场地的时间表非常紧张,场地非常大。实验结果表明,在不同传输特性的移动设备上,定位误差平均保持在1.7 m左右。我们亦在香港会议展览中心(会展中心)进行了实际测试,结果显示,在较短的设置时间内,可准确追踪不同的流动装置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast Setup and Robust WiFi Localization for the Exhibition Industry
With the prevalence of WiFi devices (e.g., smartphones), many new business opportunities are being spawned by exploiting the routes or locations of users. Nevertheless, most current approaches based on received signal strength indicator (RSSI) usually assume that the targeted (tracked) devices have the transmission characteristics similar to the devices used for system training. This is far from the reality and may lead to considerable errors. We propose a robust localization approach which automatically infers a customized signal-strength-to-distance function for every device on-the-fly, and simultaneously estimates the location of it. This is achieved by first approximating the function with a set of piecewise linear functions, for each targeted device, and the parameters of the linear functions are updated, with an Expectation Maximum (EM) algorithm, when more and more RSSI data of the device are available. Specifically, during the expectation step of the EM algorithm, the location of the targeted device is estimated. Whereas in the maximization step of the algorithm, the parameters of the linear functions customized for that device are updated. As the approach is capable of learning the parameters during localization, training process or system calibration is unnecessary and thus the system setup time can be shortened. This feature is practical for meeting the special needs of the exhibition industry: extremely tight schedules for setting up the site from scratch and extremely large venues. With our testbeds, experimental results show that the mean localization error can be kept about 1.7 meters for different mobile devices with different transmission characteristics. A real-world test at Hong Kong Convention and Exhibition Centre (HKCEC) was also conducted and various mobile devices can be tracked accurately with little setup time.
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