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Bluetooth Direction Finding using Recurrent Neural Network | IEEE Conference Publication | IEEE Xplore

Bluetooth Direction Finding using Recurrent Neural Network


Abstract:

Multipath propagation in an indoor environment has a detrimental impact on the performance of Angle of Arrival (AoA) estimation methods due to the existence of obstacles ...Show More

Abstract:

Multipath propagation in an indoor environment has a detrimental impact on the performance of Angle of Arrival (AoA) estimation methods due to the existence of obstacles introducing reflections and scattering. This paper proposes a new architecture for AoA estimation, utilizing a robust and fast signal processing algorithm and a small Recurrent Neural Network (RNN) to improve performance by considering AoA estimation as a time series problem. The proposed method uses the Spatial Power Spectrum (SPS) of the well-established Propagator Direct Data Acquisition (PDDA) algorithm as an input feature for a Gated Recurrent Unit (GRU), which enhances the accuracy of PDDA by learning dependencies of spatial power spectrum features through previous time steps. Experimental results on a simulated rectangular indoor environment, with four different obstacle sets, show significant performance benefits (PDDA MAE =7.0° vs GRU MAE=3.7°) of GRU. Furthermore, the proposed method outperforms PDDA in a real indoor environment measurement (PDDA MAE = 12.2° vs GRU MAE = 7.1°). Additionally, the proposed method is sufficiently small in size (830 kB) to be employed on a wide range of embedded systems.
Date of Conference: 29 November 2021 - 02 December 2021
Date Added to IEEE Xplore: 04 January 2022
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Conference Location: Lloret de Mar, Spain

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