Affiliation:
1. Southeast University, Nanjing, Jiangsu, China
2. Rutgers University, New Jersey, United States
Abstract
The rise concern about mobile communication performance has driven the growing demand for the construction of mobile network signal maps which are widely utilized in network monitoring, spectrum management, and indoor/outdoor localization. Existing studies such as time-consuming and labor-intensive site surveys are difficult to maintain an update-to-date finegrained signal map within a large area. The mobile crowdsensing (MCS) paradigm is a promising approach for building signal maps because collecting large-scale MCS data is low-cost and with little extra-efforts. However, the dynamic environment and the mobility of the crowd cause spatio-temporal uncertainty and sparsity of MCS. In this work, we leverage MCS as an opportunity to conduct the city-wide mobile network signal map construction. We propose a fine-grained city-wide Cellular Signal Map Construction (CSMC) framework to address two challenges including (i) the problem of missing and unreliable MCS data; (ii) spatio-temporal uncertainty of signal propagation. In particular, CSMC captures spatio-temporal characteristics of signals from both inter- and intra- cellular base stations and conducts missing signal recovery with Bayesian tensor decomposition to build large-area fine-grained signal maps. Furthermore, CSMC develops a context-aware multi-view fusion network to make full use of external information and enhance signal map construction accuracy. To evaluate the performance of CSMC, we conduct extensive experiments and ablation studies on a large-scale dataset with over 200GB MCS signal records collected from Shanghai. Experimental results demonstrate that our model outperforms state-of-the-art baselines in the accuracy of signal estimation and user localization.
Publisher
Association for Computing Machinery (ACM)
Subject
Computer Networks and Communications,Hardware and Architecture,Human-Computer Interaction
Reference48 articles.
1. 2020. Providing insights to help improve the end-user mobile experience. https://webcoveragemap.rootmetrics.com/. Online ; accessed 10 February 2021 . 2020. Providing insights to help improve the end-user mobile experience. https://webcoveragemap.rootmetrics.com/. Online; accessed 10 February 2021.
2. 2020. Understanding the true state of the world's mobile networks based on measurements of real user experience. https://www.opensignal.com/. Online ; accessed 10 February 2021 . 2020. Understanding the true state of the world's mobile networks based on measurements of real user experience. https://www.opensignal.com/. Online; accessed 10 February 2021.
3. City-Wide Signal Strength Maps: Prediction with Random Forests
4. Dynamic Online-Calibrated Radio Maps for Indoor Positioning in Wireless Local Area Networks
5. Network-side positioning of cellular-band devices with minimal effort
Cited by
4 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献