Deep Generative Models for Distributed Acoustic Sensors (DAS)

Authors

  • Antonio Almudévar Atienza Voice Input Voice Output Laboratory (ViVoLab)
  • Alfonso Ortega Voice Input Voice Output Laboratory (ViVoLab)

DOI:

https://doi.org/10.26754/jjii3a.20215970

Abstract

This paper presents two solutions based on Deep Learning techniques to detect mechanical events in signals coming from distributed acoustic sensors (DAS). Specifically, two systems for this task are described. The first one is a deterministic solution based on the concept of autoencoder (AE), while the second system is a stochastic solution based on the idea of Variational Autoencoder (VAE). The signals used for the tests have been provided by Aragón Photonics Labs (APL).

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Published

2021-11-12

Issue

Section

Artículos (Tecnologías de la Información y las Comunicaciones)

How to Cite

Almudévar Atienza, A., & Ortega, A. (2021). Deep Generative Models for Distributed Acoustic Sensors (DAS). Jornada De Jóvenes Investigadores Del I3A, 9. https://doi.org/10.26754/jjii3a.20215970