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Extreme learning machine for indoor location fingerprinting

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Abstract

With the rapid growing market of wireless devices, positioning systems that make use of the signal strength of wireless devices are gaining more interest nowadays. Being able to track the location of a Wi-Fi or Radio Frequency Identification device could improve the quality of services in various sectors, including security, warehouse, logistic management, and healthcare. As compared with outdoor environment, positioning systems face a greater challenge in indoor environment because wireless signal is significantly influenced by building layout and surrounding objects, for which a location fingerprinting approach is needed. Moreover, the signal strength of a wireless device may also change over time, which is known as temporal variation, and therefore a reliable location estimation system must have the ability to learn and adapt with temporal changes. However, if the learning process is highly complex and requires long processing time, deploying the system into a larger scale would not be feasible. In recent years, Extreme Learning Machine (ELM) has surfaced as a viable alternative that challenged the norm of iterative and progressive learning. ELM has also been considered as a solution for indoor location fingerprinting. However, there has not been a comprehensive review on how the ELM-based approaches are linked with existing location fingerprinting techniques. Here we discuss some major location fingerprinting techniques, which are nearest-neighbor, LANDMARC, and LEMT, and formulate a new framework for systematically translating the techniques into ELM-based methods.

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References

  • Bahl, P., & Padmanabhan, V. N. (2000). RADAR: An in-building RF-based user location and tracking system. In Proceedings of the Nineteenth Annual Joint Conference of the IEEE Computer and Communications Societies, IEEE (Vol. 2, pp. 775–784).

  • Dwiyasa, F., & Lim, M. H. (2015). Extreme learning machine for active RFID location classification. In Proceedings of the 18th Asia Pacific Symposium on Intelligent and Evolutionary Systems-Volume 2 (pp. 657–670). Springer.

  • Dwiyasa, F., Lim, M. H., Ong, Y. S., & Panigrahi, B. (2016). Equality constrained-optimization-based semi-supervised ELM for modeling signal strength temporal variation in indoor location estimation. In Proceedings of ELM-2015 Volume 1 (pp. 383–395). Springer.

  • Huang, G. B., Zhu, Q. Y., & Siew, C. K. (2004). Extreme learning machine: A new learning scheme of feedforward neural networks. In IEEE International Joint Conference on Neural Networks, IEEE (Vol. 2, pp. 985–990).

  • Huang, G. B., Zhou, H., Ding, X., & Zhang, R. (2012). Extreme learning machine for regression and multiclass classification. IEEE Transactions on Systems, Man, and Cybernetics, Part B: Cybernetics, 42(2), 513–529.

    Article  Google Scholar 

  • Ni, L. M., Liu, Y., Lau, Y. C., & Patil, A. P. (2004). LANDMARC: Indoor location sensing using active RFID. Wireless networks, 10(6), 701–710.

    Article  Google Scholar 

  • Quinlan, J. R., et al. (1992). Learning with continuous classes. In Proceedings of the 5th Australian Joint Conference on Artificial Intelligence (Vol. 92, pp. 343–348).

  • Satizábal, H. F., Upegui, A., Perez-Uribe, A., Rétornaz, P., & Mondada, F. (2011). A social approach for target localization: Simulation and implementation in the marXbot robot. Memetic Computing, 3(4), 245–259.

    Article  Google Scholar 

  • Xiao, W., Liu, P., Soh, W. S., & Huang, G. B. (2012). Large scale wireless indoor localization by clustering and extreme learning machine. In Proceedings of the 15th International Conference on Information Fusion (FUSION), IEEE (pp. 1609–1614).

  • Yin, J., Yang, Q., & Ni, L. M. (2008). Learning adaptive temporal radio maps for signal-strength-based location estimation. IEEE Transactions on Mobile Computing, 7(7), 869–883.

    Article  Google Scholar 

  • Zou, H., Xie, L., Jia, Q. S., & Wang. H. (2013). An integrative weighted path loss and extreme learning machine approach to RFID based indoor positioning. In International Conference on Indoor Positioning and Indoor Navigation (IPIN), IEEE (pp. 1–5).

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Acknowledgments

This research is supported by the National Research Foundation Singapore under its Interactive Digital Media (IDM) Strategic Research Programme.

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Correspondence to Felis Dwiyasa.

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Dwiyasa, F., Lim, MH., Ong, YS. et al. Extreme learning machine for indoor location fingerprinting. Multidim Syst Sign Process 28, 867–883 (2017). https://doi.org/10.1007/s11045-016-0409-0

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  • DOI: https://doi.org/10.1007/s11045-016-0409-0

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