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DactyLoc: A minimally geo-referenced WiFi+GSM-fingerprint-based localization method for positioning in urban spaces

机译:dactyloc:基于微米的WiFi + GSM指纹的定位方法,用于在城市空间中定位

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Fingerprinting-based localization methods relying on WiFi and GSM information provide sufficient localization accuracy for many mobile phone applications. Most of the existing approaches require a training set consisting of geo-referenced fingerprints to build a reference database. We propose a collaborative, semi-supervised WiFi+GSM fingerprinting method where only a small fraction of all fingerprints needs to be geo-referenced. Our approach enables indexing of areas in the absence of GPS reception as often found in urban spaces and indoors without manual labeling of fingerprints. The method takes advantage of the characteristic that the similarity of two fingerprints correlates to the distance between their corresponding location. By applying multidimensional scaling, a topology estimation is generated and with the help of a small set of geo-referenced fingerprints anchored to physical locations. An evaluation with an urban-scale data set shows that we can locate a mobile device with a median error of 30m. While normally all fingerprints of the training set need to be geo-referenced, with our method, only 8% require geo-referencing. We further show that the localization error decreases as new fingerprints are added and converges to an accuracy comparable to related work.
机译:基于指纹的本地化方法依赖WiFi和GSM信息为许多移动电话应用提供了足够的本地化精度。大多数现有方法都需要由地理引用的指纹组成的训练集来构建参考数据库。我们提出了一种协同,半监督的WiFi + GSM指纹识别方法,只需一小部分所有指纹都需要地理学。我们的方法可以在没有手动标记指纹的情况下在城市空间和室内发现的缺乏GPS接收中索引地区的索引。该方法利用了两个指纹的相似性与它们相应位置之间的距离相关的特征。通过应用多维缩放,产生拓扑估计,并且在锚定到物理位置的一小组地理引用的指纹的帮助下。使用城市规模数据集进行评估表明,我们可以定位一个具有30m的中值误差的移动设备。虽然通常培训集的所有指纹都需要通过我们的方法进行地理参考,但只有8%只需要地理参考。我们进一步表明,随着添加新指纹并收敛到与相关工作相当的准确性,本地化误差减小。

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