AI & ML interests

AI & ML interest, Radio Frequency Interference, Synthetic Aperture Radar, Sentinel-1

🚀 RFInject: Synthetic RF Interference Injection for Sentinel-1 SAR L0 Data

📌 Motivation

  • Radio Frequency Interference (\gls{RFI}) is a major source of performance degradation in modern Synthetic Aperture Radar (\gls{SAR}) missions.
  • The Copernicus Sentinel-1 constellation is significantly affected, with numerous studies reporting its detrimental impact.
  • However, the lack of standardized and reproducible datasets has so far limited systematic benchmarking of RFI detection and mitigation strategies.

🛠️ What RFInject Brings

RFInject introduces a methodology for controlled synthetic RFI injection into clean Sentinel-1 L0 raw bursts, enabling:

  • Reproducible benchmarking of mitigation algorithms
  • Realistic simulation while retaining authentic system properties
  • Full parameter control over RFI characteristics

📐 Methodology Highlights

The framework is based on a parametric signal model:

  • 🎯 Synthetic RFI generation by superimposing modulated chirp trains onto authentic Sentinel-1 radar echoes.
  • 🧠 Spectral and statistical fidelity ensured to reflect real operational systems.
  • 📊 Metadata-rich parameter sets controlling:
    • 📡 Waveform diversity
    • 🌍 Spatial extent
    • ⚡ Power scaling

📂 Dataset Features

  • Clean Sentinel-1 L0 bursts → contaminated with controlled synthetic RFI
  • Fully reproducible contamination scenarios
  • Rich metadata for systematic testing across different algorithms and experimental setups

🎯 Impact and Applications

The dataset empowers researchers to:

  • 🕵️‍♂️ Detect RFI more reliably
  • 🛡️ Mitigate its impact effectively
  • 🤖 Develop learning-based solutions for robust RFI-resilient SAR processing pipelines

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