基于蜂窝网络时空数据的改进定位

S. Luo, Y. Ng, Terence Zheng Wei Lim, Cliff Choon Hua Tan, Nannan He, Giuseppe Manai, Y. Li
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引用次数: 2

摘要

移动设备的本地化一直是学术研究和行业实践的主题,用于解决各种应用问题,例如用于基于位置的数字或物理广告的客流量计数和分析,公共安全的人群监控,紧急处理,运输测量和管理等。通常,本地化解决方案需要大规模的网络硬件和/或软件升级,这可能非常昂贵。然而,我们注意到这样一个事实,即许多商业用例实际上并不需要非常高的定位分辨率,而令人满意的准确度水平可能足以获得业务决策质量。在实现业务价值和最小化网络设备购买和维护的额外成本之间,合理的权衡是构建仅依赖电信网络数据的解决方案,并利用数据挖掘方法来提高用户携带的移动设备的定位准确性。在这项工作中,我们的目标是在感兴趣区域(ROI)的分辨率下实现可接受的定位精度,其确切形状是根据业务需求定义的。新加坡规划分区的地理划分就是一个例子。我们利用从移动宽带日志中提取的包含用户经纬度的全球定位系统(GPS)位置来注释电信网络数据。我们尝试了三种学习模型:最大似然估计、主导服务ROI和随机森林,以及基于蜂窝塔位置的定位基线。实验结果证明了所提出模型的有效性,并证明准确率从基线的37.8%(原始蜂窝塔定位)提高到78.4%(随机森林分类)。
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Improved Localisation Using Spatio-Temporal Data from Cellular Network
Localisation of mobile devices has been a topic of academic research and industry practice for solving various application problems, examples can be footfall counting and profiling used for location based digital or physical advertising, crowd monitoring for public security, emergency handling, transport measurement and management, etc. Often the solutions for localisation require large scale networks hardware and/or software upgrades, which can be very costly. However, we note the fact that many commercial use cases actually do not require very high resolution of localisation and satisfactory level of accuracy may be sufficient for attaining business decision quality. A reasonable trade-off between achieving business value and minimising additional costs on network equipment purchase and maintenance is to build solutions that rely only on telco-network data and utilize data mining methods to improve the localisation accuracy of mobile devices that carried by subscribers. In this work, we aim to achieve acceptable accuracy for localisation at the resolution of region of interest (ROI), the exact shape of which is defined according to business requirements. One example is the geographical division of planning sub-zone in Singapore. We make use of the Global Positioning System (GPS) locations extracted from mobile broadband log that contain the longitude and latitude of the subscriber to annotate the telco-network data. We experimented with three learning models: maximum likelihood estimation, dominant serving ROI, and random forest, along with the baseline of localisation based on cellular tower locations. The experiment results demonstrate the effectiveness of the proposed models and demonstrate accuracy improvement from baseline of 37.8% (naive cellular tower localisation) to 78.4% (random forest classification).
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