RSS difference-aware graph-based semi-supervised learning (RG-SSL) RSS smoothing method for crowdsourcing indoor localization

In order to realize the rapid deployment of indoor localization systems, the crowdsourcing method has been proposed to reduce the collection workload. However, compared to conventional methods, the reduced number of received signal strength (RSS) values lends greater influence to noises and erroneous measurements in RSS values. In this paper, a graph-based semi-supervised learning (G-SSL) method is used to exploit the correlation of RSS values at nearby locations to infer an optimal RSS value at each location in terms of error. The RSS difference between different locations is used as a part of cost function to improve the performance of G-SSL. Experimental results show that the proposed method results in a smoother radio map and improved localization accuracy.

[1]  Mario Gerla,et al.  FreeLoc: Calibration-free crowdsourced indoor localization , 2013, 2013 Proceedings IEEE INFOCOM.

[2]  Yunhao Liu,et al.  Smartphones Based Crowdsourcing for Indoor Localization , 2015, IEEE Transactions on Mobile Computing.

[3]  Konstantinos N. Plataniotis,et al.  Kernel-Based Positioning in Wireless Local Area Networks , 2007, IEEE Transactions on Mobile Computing.

[4]  Shahrokh Valaee,et al.  Indoor positioning and distance-aware graph-based semi-supervised learning method , 2012, 2012 IEEE Global Communications Conference (GLOBECOM).

[5]  Shahrokh Valaee,et al.  Multiple Target Localization Using Compressive Sensing , 2009, GLOBECOM 2009 - 2009 IEEE Global Telecommunications Conference.

[6]  Shahrokh Valaee,et al.  Joint Indoor Localization and Radio Map Construction with Limited Deployment Load , 2015, IEEE Transactions on Mobile Computing.

[7]  Shahrokh Valaee,et al.  Indoor Tracking and Navigation Using Received Signal Strength and Compressive Sensing on a Mobile Device , 2013, IEEE Transactions on Mobile Computing.

[8]  Mikael Asplund,et al.  Why is fingerprint-based indoor localization still so hard? , 2014, 2014 IEEE International Conference on Pervasive Computing and Communication Workshops (PERCOM WORKSHOPS).

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

[10]  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).

[11]  Shahrokh Valaee,et al.  Received-Signal-Strength-Based Indoor Positioning Using Compressive Sensing , 2012, IEEE Transactions on Mobile Computing.

[12]  Qiang Yang,et al.  Tracking Mobile Users in Wireless Networks via Semi-Supervised Colocalization , 2012, IEEE Transactions on Pattern Analysis and Machine Intelligence.