Using Classification in the Preprocessing Step on Wi-Fi Data as an Enabler of Physical Analytics

In this research we present a remote localization technique as an essential preprocessing step to enable Physical Analytics in the retail and hospitality sector. We studied two crowdsourced Wi-Fi data sources as potential inputs for fingerprinting-based positioning systems. These sources are non intrusively crowdsourced and can be easily acquired at almost any retail store. We evaluated our hypothesis on large, real-world datasets using statistical and machine learning techniques. With the use of these sources, we built a fingerprinting-based positioning system that achieved reliable and accurate physical positioning results. Our method is capable of estimating positions without any prior knowledge about the store plan or the antennas' location with, only one off-the-shelf access point. Unlike other positioning techniques, instead of estimating a relative position of a device from an antenna, we provide an absolute position for a device as inside or outside of a venue without making any assumption about the site nor the positioned devices. To investigate its practicality, we evaluated our method with datasets of five different stores.

[1]  Paramvir Bahl,et al.  RADAR: an in-building RF-based user location and tracking system , 2000, Proceedings IEEE INFOCOM 2000. Conference on Computer Communications. Nineteenth Annual Joint Conference of the IEEE Computer and Communications Societies (Cat. No.00CH37064).

[2]  Anshul Rai,et al.  Zee: zero-effort crowdsourcing for indoor localization , 2012, Mobicom '12.

[3]  Swati Rallapalli,et al.  Physical Analytics: A New Frontier for (Indoor) Location Research , 2013 .

[4]  A. Pettitt A two-sample Anderson-Darling rank statistic , 1976 .

[5]  Roksana Boreli,et al.  Inferring user relationship from hidden information in WLANs , 2012, MILCOM 2012 - 2012 IEEE Military Communications Conference.

[6]  Justin Manweiler,et al.  Predicting length of stay at WiFi hotspots , 2013, 2013 Proceedings IEEE INFOCOM.

[7]  Venkata N. Padmanabhan,et al.  Indoor localization without the pain , 2010, MobiCom.

[8]  S. Thomas Alexander,et al.  Adaptive Signal Processing , 1986, Texts and Monographs in Computer Science.

[9]  Swarun Kumar,et al.  Decimeter-Level Localization with a Single WiFi Access Point , 2016, NSDI.

[10]  Haiyun Luo,et al.  Zero-Configuration, Robust Indoor Localization: Theory and Experimentation , 2006, Proceedings IEEE INFOCOM 2006. 25TH IEEE International Conference on Computer Communications.

[11]  Bo Li,et al.  Discovering Human Presence Activities with Smartphones Using Nonintrusive Wi-Fi Sniffer Sensors: The Big Data Prospective , 2013, Int. J. Distributed Sens. Networks.