IEEE Access (Jan 2020)

Deep Learning Based Data Recovery for Localization

  • Wafa Njima,
  • Marwa Chafii,
  • Ahmad Nimr,
  • Gerhard Fettweis

DOI
https://doi.org/10.1109/ACCESS.2020.3026615
Journal volume & issue
Vol. 8
pp. 175741 – 175752

Abstract

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In this paper, we study the problem of euclidean distance matrix (EDM) recovery aiming to tackle the problem of received signal strength indicator sparsity and fluctuations in indoor environments for localization purposes. This problem is addressed under the constraints required by the internet of things communications ensuring low energy consumption and reduced online complexity compared to classical completion schemes. We propose EDM completion methods based on neural networks that allow an efficient distance recovery and denoising. A trilateration process is then applied to recovered distances to estimate the target's position. The performance of different deep neural networks (DNN) and convolutional neural networks schemes proposed for matrix reconstruction are evaluated in a simulated indoor environment, using a realistic propagation model, and compared with traditional completion method based on the adaptative moment estimation algorithm. Obtained results show the superiority of the proposed DNN based completion systems in terms of localization mean error and online complexity compared to the classical completion.

Keywords