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  4. Blind Source Separation of Radar Signals in Time Domain Using Deep Learning
 
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2022
Conference Paper
Title

Blind Source Separation of Radar Signals in Time Domain Using Deep Learning

Abstract
Identification and further analysis of radar emitters in a contested environment requires detection and separation of incoming signals. If they arrive from the same direction and at similar frequencies, deinterleaving them remains challenging. A solution to overcome this limitation becomes increasingly important with the advancement of emitter capabilities. We propose treating the problem as blind source separation in time domain and apply supervisedly trained neural networks to extract the underlying signals from the received mixture. This allows us to handle highly overlapping and also continuous wave (CW) signals from both radar and communication emitters. We make use of advancements in the field of audio source separation and extend a current state-of-the-art model with the objective of deinterleaving arbitrary radio frequency (RF) signals. Results show, that our approach is capable of separating two unknown waveforms in a given frequency band with a single channel receiver.
Author(s)
Hinderer, Sven
Fraunhofer-Institut für Hochfrequenzphysik und Radartechnik FHR  
Mainwork
23rd International Radar Symposium, IRS 2022  
Conference
International Radar Symposium 2022  
DOI
10.23919/IRS54158.2022.9904990
Language
English
Fraunhofer-Institut für Hochfrequenzphysik und Radartechnik FHR  
Keyword(s)
  • Cognitive Radar

  • Deep Learning

  • Electronic Support

  • Low Probability of Intercept

  • Source Separation

  • Transformer

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