CellSense: An Accurate Energy-Efficient GSM Positioning System

Context-aware applications have been gaining huge interest in the last few years. With cell phones becoming ubiquitous computing devices, cell phone localization has become an important research problem. In this paper, we present CellSense, which is a probabilistic received signal strength indicator (RSSI)-based fingerprinting location determination system for Global System for Mobile Communications (GSM) phones. We discuss the challenges of implementing a probabilistic fingerprinting localization technique in GSM networks and present the details of the CellSense system and how it addresses these challenges. We then extend the proposed system using a hybrid technique that combines probabilistic and deterministic estimations to achieve both high accuracy and low computational overhead. Moreover, the accuracy of the hybrid technique is robust to changes in its parameter values. To evaluate our proposed system, we implemented CellSense on Android-based phones. Results from two different testbeds, representing urban and rural environments, for three different cellular providers show that CellSense provides at least 108.57% enhancement in accuracy in rural areas and at least 89.03% in urban areas compared with current state-of-the-art RSSI-based GSM localization systems. In additional, the proposed hybrid technique provides more than 6 and 5.4 times reduction in computational requirements compared with state-of-the-art RSSI-based GSM localization systems for rural and urban testbeds, respectively. We also evaluate the effect of changing the different system parameters on the accuracy-complexity tradeoff and how the cell tower and fingerprint densities affect system performance.

[1]  S. Tekinay Wireless Geolocation Systems and Services , 1998, IEEE Communications Magazine.

[2]  Per Enge,et al.  Special Issue on Global Positioning System , 1999, Proc. IEEE.

[3]  Moustafa Youssef,et al.  Small-scale compensation for WLAN location determination systems , 2003, 2003 IEEE Wireless Communications and Networking, 2003. WCNC 2003..

[4]  Moustafa Youssef,et al.  WLAN location determination via clustering and probability distributions , 2003, Proceedings of the First IEEE International Conference on Pervasive Computing and Communications, 2003. (PerCom 2003)..

[5]  John Krumm,et al.  Accuracy characterization for metropolitan-scale Wi-Fi localization , 2005, MobiSys '05.

[6]  Y. Ye,et al.  Integration of Angle of Arrival Information for Multimodal Sensor Network Localization using Semidefinite Programming , 2005 .

[7]  Bill N. Schilit,et al.  Place Lab: Device Positioning Using Radio Beacons in the Wild , 2005, Pervasive.

[8]  Richard P. Martin,et al.  Bayesian localization in wireless networks using angle of arrival , 2005, SenSys '05.

[9]  Mike Y. Chen,et al.  Practical Metropolitan-Scale Positioning for GSM Phones , 2006, UbiComp.

[10]  Mike Y. Chen,et al.  Are GSM Phones THE Solution for Localization? , 2006, Seventh IEEE Workshop on Mobile Computing Systems & Applications (WMCSA'06 Supplement).

[11]  R.P. Martin,et al.  Adding Angle of Arrival Modality to Basic RSS Location Management Techniques , 2007, 2007 2nd International Symposium on Wireless Pervasive Computing.

[12]  Yilong Lu,et al.  Angle-of-arrival estimation for localization and communication in wireless networks , 2008, 2008 16th European Signal Processing Conference.

[13]  Romit Roy Choudhury,et al.  AAMPL: accelerometer augmented mobile phone localization , 2008, MELT '08.

[14]  Romit Roy Choudhury,et al.  SurroundSense: mobile phone localization via ambience fingerprinting , 2009, MobiCom '09.

[15]  Injong Rhee,et al.  Towards Mobile Phone Localization without War-Driving , 2010, 2010 Proceedings IEEE INFOCOM.

[16]  Mohamed Ibrahim,et al.  CellSense: A Probabilistic RSSI-Based GSM Positioning System , 2010, 2010 IEEE Global Telecommunications Conference GLOBECOM 2010.

[17]  Mohamed N. El-Derini,et al.  GAC: Energy-Efficient Hybrid GPS-Accelerometer-Compass GSM Localization , 2010, 2010 IEEE Global Telecommunications Conference GLOBECOM 2010.

[18]  Mohamed Ibrahim,et al.  A Hidden Markov Model for Localization Using Low-End GSM Cell Phones , 2011, 2011 IEEE International Conference on Communications (ICC).