DiSen: Ranging Indoor Casual Walks with Smartphones

Acquiring instant walking distance is desirable in indoor localization and map construction. However, due to the blackout of Global Positioning System (GPS) in indoor settings, to accurately estimate the indoor walking distance with minimum hardware requirement is very challenging. In this paper, we propose a lightweight scheme, called DiSen, to range the instant walking distance of smartphone users. After analysing the extensive walking trace data, we find that people have rather consistent walking behaviour even though they may change their walking speeds in different situations. Furthermore, the relationship between stride length and step frequency while walking can be well estimated using non-linear sigmoid model. Inspired by such insights, we first design a stride segmenting method to obtain reliable and accurate step frequency information from raw accelerometer readings. We then train a sigmoid model using acceleration and GPS information collected when a user walks in outdoor conditions and finally apply the model to indoor walking distance ranging. Real-world experiment results show that, in different walking speeds, DiSen can reach average distance estimation accuracy of 96%.

[1]  Moustafa Youssef,et al.  UPTIME: Ubiquitous pedestrian tracking using mobile phones , 2012, 2012 IEEE Wireless Communications and Networking Conference (WCNC).

[2]  William J. Kaiser,et al.  AutoGait: A mobile platform that accurately estimates the distance walked , 2010, 2010 IEEE International Conference on Pervasive Computing and Communications (PerCom).

[3]  Minglu Li,et al.  SenSpeed: Sensing Driving Conditions to Estimate Vehicle Speed in Urban Environments , 2014, IEEE Transactions on Mobile Computing.

[4]  W.J. Kaiser,et al.  MicroLEAP: Energy-aware Wireless Sensor Platform for Biomedical Sensing Applications , 2007, 2007 IEEE Biomedical Circuits and Systems Conference.

[5]  Kaigui Bian,et al.  Jigsaw: indoor floor plan reconstruction via mobile crowdsensing , 2014, MobiCom.

[6]  Agata Brajdic,et al.  Walk detection and step counting on unconstrained smartphones , 2013, UbiComp.

[7]  P. Young,et al.  Time series analysis, forecasting and control , 1972, IEEE Transactions on Automatic Control.

[8]  Yunhao Liu,et al.  Locating in fingerprint space: wireless indoor localization with little human intervention , 2012, Mobicom '12.

[9]  Moustafa Youssef,et al.  No need to war-drive: unsupervised indoor localization , 2012, MobiSys '12.

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

[11]  Guojun Gan,et al.  The k-means Algorithm , 2011 .

[12]  Mo Li,et al.  Use it free: instantly knowing your phone attitude , 2014, MobiCom.