Bluetooth-Based Room Localization Research Based on NB and SVM Approach

Article Preview

Abstract:

It has been general recognized that the application of localization technology in home environment are beneficial to the development of health monitoring and mobile identification system development. As a kind of highly efficient sensor with obvious advantages such as low cost, the Bluetooth device has been widely used in our daily life. Research is carried out in an integrated environment based on mobile phone network signal measurement and Bluetooth link measurements in developing home localization systems. This paper presented a hybrid classification method, based on the combination of Bayesian network and supported vector machines, to support the development of Bluetooth-based room localization system. The proposed method mainly considers the dependency between features and non-linear overlapping of features between rooms. The results show that the prediction accuracy has been improved greatly in comparison to the traditional Naive Bayes classifier and the hidden Markov model used in previous studies.

You might also be interested in these eBooks

Info:

Periodical:

Advanced Materials Research (Volumes 926-930)

Pages:

2458-2461

Citation:

Online since:

May 2014

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2014 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

* - Corresponding Author

[1] A.P. Pentland: Scientific American, Vol. 274 (1996), No. 4, pp.68-76.

Google Scholar

[2] P. Bahl and V. Padmanabham: Proceeding of Nineteenth Annual Joint Conference of the IEEE Computer and Communications Societies, Vol. 2 (2000), pp.775-784.

Google Scholar

[3] D. Kelly, S. McLoone, and T. Dishongh: Proceedings of 5th IEEE International Symposium on Wireless Communication Systems (ISWCS 2008), (2008).

DOI: 10.1109/iswcs.2008.4726134

Google Scholar

[4] D. Kelly, S. McLoone, T. Dishongh, M. McGrath, and J. Behan: Proceedings of 5th Workshop on Positioning, Navigation and Communication, pp.23-29, Mar. (2008).

DOI: 10.1109/wpnc.2008.4510353

Google Scholar

[5] I.H. Witten and E. Frank: Data Mining Practical Machine, ELSEVIER, San Francisco, (2005).

Google Scholar

[6] H. Zheng, H. Wang, D. Glass: Proceedings of IEEE Transactions on Systems, Man, and Cybernetics, Part B: Cybernetics, Vol. 38 (2008), pp.5-16.

Google Scholar

[7] L. J. Lu, Y. Xia, A. Paccanaro, H. Yu and M. Gerstein: Genome Res., Vol. 15 (2005), p.945, (2005).

Google Scholar