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Few-Shot Learning with Uncertainty-based Quadruplet Selection for Interference Classification in GNSS Data

Felix Ott, Lucas Heublein, Nisha Lakshmana Raichur, Tobias Feigl, Jonathan Hansen, Alexander Rügamer, Christopher Mutschler

TL;DR

This paper proposes a few-shot learning (FSL) approach to adapt to new interference classes that employs quadruplet selection for the model to learn representations using various positive and negative interference classes and outperforms other FSL techniques in jammer classification accuracy.

Abstract

Jamming devices pose a significant threat by disrupting signals from the global navigation satellite system (GNSS), compromising the robustness of accurate positioning. Detecting anomalies in frequency snapshots is crucial to counteract these interferences effectively. The ability to adapt to diverse, unseen interference characteristics is essential for ensuring the reliability of GNSS in real-world applications. In this paper, we propose a few-shot learning (FSL) approach to adapt to new interference classes. Our method employs quadruplet selection for the model to learn representations using various positive and negative interference classes. Furthermore, our quadruplet variant selects pairs based on the aleatoric and epistemic uncertainty to differentiate between similar classes. We recorded a dataset at a motorway with eight interference classes on which our FSL method with quadruplet loss outperforms other FSL techniques in jammer classification accuracy with 97.66%. Dataset available at: https://gitlab.cc-asp.fraunhofer.de/darcy_gnss/FIOT_highway

Few-Shot Learning with Uncertainty-based Quadruplet Selection for Interference Classification in GNSS Data

TL;DR

This paper proposes a few-shot learning (FSL) approach to adapt to new interference classes that employs quadruplet selection for the model to learn representations using various positive and negative interference classes and outperforms other FSL techniques in jammer classification accuracy.

Abstract

Jamming devices pose a significant threat by disrupting signals from the global navigation satellite system (GNSS), compromising the robustness of accurate positioning. Detecting anomalies in frequency snapshots is crucial to counteract these interferences effectively. The ability to adapt to diverse, unseen interference characteristics is essential for ensuring the reliability of GNSS in real-world applications. In this paper, we propose a few-shot learning (FSL) approach to adapt to new interference classes. Our method employs quadruplet selection for the model to learn representations using various positive and negative interference classes. Furthermore, our quadruplet variant selects pairs based on the aleatoric and epistemic uncertainty to differentiate between similar classes. We recorded a dataset at a motorway with eight interference classes on which our FSL method with quadruplet loss outperforms other FSL techniques in jammer classification accuracy with 97.66%. Dataset available at: https://gitlab.cc-asp.fraunhofer.de/darcy_gnss/FIOT_highway
Paper Structure (12 sections, 4 equations, 24 figures, 1 table)

This paper contains 12 sections, 4 equations, 24 figures, 1 table.

Figures (24)

  • Figure 1: Overview of our FSL method with uncertainty-based quadruplet selection to adapt to unseen interference classes.
  • Figure 2: Class 0.
  • Figure 3: Class 1.
  • Figure 4: Class 2.
  • Figure 5: Class 3.
  • ...and 19 more figures