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Transfer Learning-Based Outdoor Position Recovery With Cellular Data

机译:使用蜂窝数据传输基于学习的室外位置恢复

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Telecommunication (Telco) outdoor position recovery aims to localize outdoor mobile devices by leveraging measurement report (MR) data. Unfortunately, Telco position recovery requires sufficient amount of MR samples across different areas and suffers from high data collection cost. For an area with scarce MR samples, it is hard to achieve good accuracy. In this paper, by leveraging the recently developed transfer learning techniques, we design a novel Telco position recovery framework, called TLoc, to transfer good models in the carefully selected source domains (those fine-grained small subareas) to a target one which originally suffers from poor localization accuracy. Specifically, TLoc introduces three dedicated components: 1) a new coordinate space to divide an area of interest into smaller domains, 2) a similarity measurement to select best source domains, and 3) an adaptation of an existing transfer learning approach. To the best of our knowledge, TLoc is the first framework that demonstrates the efficacy of applying transfer learning in the Telco outdoor position recovery. To exemplify, on the 2G GSM and 4G LTE MR datasets in Shanghai, TLoc outperforms a non-transfer approach by 27.58 and 26.12 percent less median errors, and further leads to 47.77 and 49.22 percent less median errors than a recent fingerprinting approach NBL.
机译:电信(电信)户外位置恢复旨在通过利用测量报告(MR)数据来定向室外移动设备。不幸的是,电信地位恢复需要跨越不同领域的足够量的MR样品,并且遭受高数据收集成本。对于稀缺MR样本的区域,很难达到良好的准确性。在本文中,通过利用最近开发的转移学习技术,我们设计了一种名为TLOC的新型电信地位恢复框架,将仔细选择的源域(那些细粒度的小蛛网中的良好模型转移到最初存在的目标从差的定位准确性。具体而言,TLOC推出了三个专用组件:1)将感兴趣区域分成较小域的新坐标空间,2)相似度测量来选择最佳源域,3)适应现有的传输学习方法。据我们所知,TLOC是第一个介绍在电信户外位置恢复中应用转移学习的效果的框架。为了举例说明,在上海的2G GSM和4G LTE数据集上,TLOC优于非转移方法27.58和26.12%的中位数误差,进一步导致47.77和49.22%的中位数误差低于最近的指纹方法NBL。

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