Title :
Radio Database Compression for Accurate Energy-Efficient Localization in Fingerprinting Systems
Author :
Arya, A. ; Godlewski, Philippe ; Campedel, Marine ; du Chene, Ghislain
Author_Institution :
Dept. of Networks & Comput. Sci., Inst. Telecom ParisTech, Paris, France
Abstract :
Location fingerprinting is a positioning method that exploits the already existing infrastructures such as cellular networks or WLANs. Regarding the recent demand for energy efficient networks and the emergence of issues like green networking, we propose a clustering technique to compress the radio database in the context of cellular fingerprinting systems. The aim of the proposed technique is to reduce the computation cost and transmission load in the mobile-based implementations. The presented method may be called Block-based Weighted Clustering (BWC) technique, which is applied in a concatenated location-radio signal space, and attributes different weight factors to the location and radio components. Computer simulations and real experiments have been conducted to evaluate the performance of our proposed technique in the context of a GSM network. The obtained results confirm the efficiency of the BWC technique, and show that it improves the performance of standard k-means and hierarchical clustering methods.
Keywords :
cellular radio; data compression; pattern clustering; telecommunication computing; telecommunication power management; BWC technique; GSM network; WLAN; accurate energy-efficient localization; block-based weighted clustering technique; cellular networks; concatenated location-radio signal space; energy efficient networks; fingerprinting systems; green networking; hierarchical clustering methods; location fingerprinting; mobile-based implementations; positioning method; radio database compression; standard k-means methods; Clustering algorithms; Context; Databases; Equations; Mobile communication; Training; Vectors; Wireless systems; location-dependent and sensitive; machine learning; ubiquitous computing;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
DOI :
10.1109/TKDE.2011.241