SDR based indoor beacon localization using 3d probabilistic multipath exploitation and deep learning

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Abstract

Wireless indoor positioning systems (IPS) are ever-growing as traditional global positioning systems (GPS) are ineffective due to non-line-of-sight (NLoS) signal propagation. In this paper, we present a novel approach to learning three-dimensional (3D) multipath channel characteristics in a probabilistic manner for providing high performance indoor localization of wireless beacons. The proposed system employs a single triad dipole vector sensor (TDVS) for polarization diversity, a deep learning model deemed the denoising autoencoder to extract unique fingerprints from 3D multipath channel information, and a probabilistic k-nearest-neighbor (PkNN) to exploit the 3D multipath characteristics. The proposed system is the first to exploit 3D multipath channel characteristics for indoor wireless beacon localization via vector sensing methodologies, a software defined radio (SDR) platform, and multipath channel estimation.

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APA

Hall, D. L., Narayanan, R. M., & Jenkins, D. M. (2019). SDR based indoor beacon localization using 3d probabilistic multipath exploitation and deep learning. Electronics (Switzerland), 8(11). https://doi.org/10.3390/electronics8111323

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