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Estimation and extraction of radio-frequency interference from ultra-wideband radar signals

机译:超宽带雷达信号的射频干扰估计和提取

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This paper presents a simple adaptive framework for robust separation and extraction of multiple sources of radio-frequency interference (RFI) from raw ultra-wideband (UWB) radar signals in challenging bandwidth management environments. RFI sources pose critical challenges for UWB systems since (i) RFI often occupies a wide range of the radar's operating frequency spectrum; (ii) RFI might have significant power; and (iii) RFI signals are difficult to predict and model due to their non-stationary nature as well as the complexity of various communication devices. Our proposed framework involves a standard RFI detection step that operates directly on previously-collected contaminated radar signals to identify RFI-dominant frequency sub-bands. This vital information is then applied to construct an RFI dictionary with various sinusoidal patterns spanning these RFI bands. We then employ a sparsity-driven optimization to estimate and then extract RFI from the received radar signals. Our method can be considered as a de-noising preprocessing stage for raw radar signals prior to image formation and other follow-up tasks. Recovery results from extensive simulated as well as real-world UWB synthetic aperture radar (SAR) data sets illustrate the robustness and effectiveness of our framework.
机译:本文提出了一个简单的自适应框架,用于在挑战性的带宽管理环境中从原始超宽带(UWB)雷达信号中可靠地分离和提取多个射频干扰(RFI)源。射频干扰源对UWB系统构成了严峻的挑战,因为(i)射频干扰经常占据雷达工作频谱的很大范围; (ii)RFI可能具有重大权力; (iii)RFI信号由于其非平稳性质以及各种通信设备的复杂性而难以预测和建模。我们提出的框架涉及标准RFI检测步骤,该步骤直接对先前收集的受污染雷达信号进行操作,以识别RFI主导的频率子带。然后,将这些重要信息应用于构建具有跨越这些RFI频段的各种正弦模式的RFI词典。然后,我们采用稀疏驱动的优化方法来估计并从接收到的雷达信号中提取RFI。我们的方法可视为在图像形成和其他后续任务之前对原始雷达信号进行降噪的预处理阶段。来自广泛的模拟以及真实世界的UWB合成孔径雷达(SAR)数据集的恢复结果说明了我们框架的稳健性和有效性。

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