Block-sparsity-based localization in wireless sensor networks

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Abstract

In this paper, we deal with the localization problem in wireless sensor networks, where a target sensor location must be estimated starting from few measurements of the power present in a radio signal received from sensors with known locations. Inspired by the recent advances in sparse approximation, the localization problem is recast as a block-sparse signal recovery problem in the discrete spatial domain. In this paper, we develop different RSS-fingerprinting localization algorithms and propose a dictionary optimization based on the notion of the coherence to improve the reconstruction efficiency. The proposed protocols are then compared with traditional fingerprinting methods both via simulation and on-field experiments. The results prove that our methods outperform the existing ones in terms of the achieved localization accuracy.

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Bay, A., Carrera, D., Fosson, S. M., Fragneto, P., Grella, M., Ravazzi, C., & Magli, E. (2015). Block-sparsity-based localization in wireless sensor networks. Eurasip Journal on Wireless Communications and Networking, 2015(1). https://doi.org/10.1186/s13638-015-0410-6

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