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Radio Frequency Interference (RFI) Detection in Instrumentation Radar Systems: a Deep Learning Approach

机译:仪表雷达系统中的射频干扰(RFI)检测:一种深度学习方法

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Transient broadband Radio Frequency Interference (RFI) is a pervasive problem for measurement radars instrumenting outdoor test ranges. These noise signals manifest themselves unpredictably in measurement data and must be detected and removed to preserve overall data quality. Large data volumes make the manual identification of RFI intractable over the long term, but trained human experts can successfully identify RFI when the data is represented visually. Convolutional Neural Networks (CNNs) have been used to some success in mimicking human visual inspection across a wide range of disciplines, and are recently applied to RFI detection in the closely related field of radio astronomy. We present a CNN architecture which is resistant to overfitting, trains quickly, and exhibits excellent performance in flagging RFI-contaminated data in a range instrumentation radar system (Receiver Operating Characteristics Area Under Curve (AUC) = 0.998, Precision-Recall AUC = 0.998).
机译:瞬态宽带射频干扰(RFI)是测量室外测试范围的测量雷达普遍存在的问题。这些噪声信号在测量数据中无法预测地表现出来,必须进行检测和消除以保持整体数据质量。长期以来,大数据量使手动识别RFI变得很困难,但是当以视觉方式表示数据时,训练有素的人类专家可以成功识别RFI。卷积神经网络(CNN)已在模仿广泛范围内的人类视觉检查方面取得了一定的成功,并且最近在射电天文学的紧密相关领域中被应用于RFI检测。我们提出了一种CNN架构,该架构具有抗过度拟合性,快速训练的能力,并且在标记范围仪器雷达系统中受RFI污染的数据时表现出出色的性能(接收机工作曲线下特征面积(AUC)= 0.998,Precision-Recall AUC = 0.998) 。

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