基于部分标记数据的室内外检测机器学习

Illyyne Saffar, Marie-Line Alberi-Morel, K. Singh, C. Viho
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引用次数: 12

摘要

本文展示了一种混合/半监督分类方法的可行性,该方法用于检测有源手机的环境,基于标记和未标记的蜂窝无线电数据。确切地说,我们提供了以下问题的答案:移动用户在体验移动服务/应用程序时的环境是什么:室内还是室外?对于移动运营商来说,在移动网络中实现这种方法很有趣,因为它具有较低的复杂性,较少的人为干扰(移动用户的干预最少)并且更准确。半监督分类算法学习使用大量和真实收集的3GPP信号测量来识别环境。与现有工作相比,除了用于分类的现有参数外,我们还建议使用称为定时提前的无线电度量。它是在移动网络中计算的。我们使用新的实时无线电测量,通过每日、每周、每月从室内和室外位置以及从移动用户穿越的多个典型和多样化环境中收集的部分地面真实信息,对创新的半监督算法进行了实证验证。与现有的支持向量机和深度学习等监督分类方法相比,研究证实了该方案的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning with partially labeled Data for Indoor Outdoor Detection
This paper demonstrates the feasibility of an hybrid/semi-supervised classification method for detecting the environment of an active mobile phone, based on both labeled and unlabeled cellular radio data. Precisely, we provide answers to the following question: what is the environment of the mobile user when it is/was experiencing a mobile service/application: indoor or outdoor? Implementing this method within the mobile network is interesting for mobile operators since it has low complexity, is less human intrusive (minimal intervention of mobile users) and more accurate. The semi-supervised classification algorithm learns to identify the environment using large and real collected 3GPP signals measurements. As compared to existing work, in addition to existing parameters used for classification, we propose to also use a radio metric called Timing Advance. It is computed within the mobile network. We empirically validate the innovative semi-supervised algorithm using new real-time radio measurements, with partial ground truth information, gathered daily, weekly, monthly, from indoor and outdoor locations and from multiple typical and diversified environments crossed by mobile users. The study confirms the effectiveness of the proposed scheme compared to the existing supervised classification methods including SVM and Deep Learning.
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