People Crowd Density Estimation System using Deep Learning for Radio Wave Sensing of Cellular Communication

In recent years, research and development of a people flow observation system is attracting attention in various fields (e.g., city area, shopping district) because the directional information of people flow is very useful for various objective (e.g., navigation, evacuation). However, existing studies of the observation system have mainly been utilizing cameras and image analysis techniques for specifying people flow, but the use of cameras is not preferable in actual fields because of the privacy issues.Therefore, in this study, we propose a new people crowd density observation system for people flow observation. In order to avoid privacy issues, the proposed system dmeasures only signal strength of radio waves of the cellular communication. Furthermore, the measurement results are analyzed by utilizing several machine learning techniques so as to estimate crowd density of many people who have a mobile phone or a smartphone.

[1]  Philipp Marcus,et al.  Estimating crowd densities and pedestrian flows using wi-fi and bluetooth , 2014, MobiQuitous.

[2]  Grantham Pang,et al.  People Counting and Human Detection in a Challenging Situation , 2011, IEEE Transactions on Systems, Man, and Cybernetics - Part A: Systems and Humans.

[3]  Xiaonan Guo,et al.  Wi-Counter: Smartphone-Based People Counter Using Crowdsourced Wi-Fi Signal Data , 2015, IEEE Transactions on Human-Machine Systems.

[4]  Teerayut Horanont,et al.  How does coffee shop get crowded?: using WiFi footprints to deliver insights into the success of promotion , 2017, UbiComp/ISWC Adjunct.

[5]  Nuno Vasconcelos,et al.  Privacy preserving crowd monitoring: Counting people without people models or tracking , 2008, 2008 IEEE Conference on Computer Vision and Pattern Recognition.

[6]  Nobuhiko Nishio,et al.  Statistical analysis of actual number of pedestrians for Wi-Fi packet-based pedestrian flow sensing , 2015, UbiComp/ISWC Adjunct.

[7]  Wei Xi,et al.  Estimating Crowd Density in an RF-Based Dynamic Environment , 2013, IEEE Sensors Journal.

[8]  Ian K. T. Tan,et al.  Measuring the Accuracy of Crowd Counting using Wi-Fi Probe-Request-Frame Counting Technique , 2016 .

[9]  Hidenori Kawamura,et al.  Estimation of ZigBee's RSSI fluctuated by crowd behavior in indoor space , 2010, Proceedings of SICE Annual Conference 2010.

[10]  Mauro De Sanctis,et al.  LTE-based passive device-free crowd density estimation , 2017, 2017 IEEE International Conference on Communications (ICC).