Assessment of Techniques for Detection of Transient Radio-Frequency Interference (RFI) Signals: A Case Study of a Transient in Radar Test Data

S. Durden, V. Vilnrotter, S. Shaffer
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Abstract

The authors present a case study of the investigation of a transient signal that appeared in the testing of a radar receiver. The characteristics of the test conditions and data are first discussed. The authors then proceed to outline the methods for detecting and analyzing transients in the data. For this, they consider several methods based on modern signal processing and evaluate their utility. The initial method used for identifying transients is based on computer vision techniques, specifically, thresholding spectrograms into binary images, morphological processing, and object boundary extraction. The authors also consider deep learning methods and methods related to optimal statistical detection. For the latter approach, since the transient in this case was chirp-like, the method of maximum likelihood is used to estimate its parameters. Each approach is evaluated, followed by a discussion of how the results could be extended to analysis and detection of other types of transient radio-frequency interference (RFI). The authors find that computer vision, deep learning, and statistical detection methods are all useful. However, each is best used at different stages of the investigation when a transient appears in data. Computer vision is particularly useful when little is known about the transient, while traditional statistically optimal detection can be quite accurate once the structure of the transient is known and its parameters estimated.
瞬态射频干扰(RFI)信号检测技术的评估:以雷达测试数据中的瞬态为例
作者提出了一个研究雷达接收机测试中出现的瞬态信号的案例研究。首先讨论了试验条件和试验数据的特点。作者接着概述了在数据中检测和分析瞬态的方法。为此,他们考虑了几种基于现代信号处理的方法,并评估了它们的实用性。用于识别瞬态的初始方法是基于计算机视觉技术,具体来说,是将谱图阈值分解为二值图像、形态学处理和目标边界提取。作者还考虑了深度学习方法和与最优统计检测相关的方法。对于后一种方法,由于这种情况下的瞬态是类啁啾的,因此使用最大似然方法来估计其参数。对每种方法进行了评估,然后讨论了如何将结果扩展到分析和检测其他类型的瞬态射频干扰(RFI)。作者发现计算机视觉、深度学习和统计检测方法都很有用。但是,当数据中出现暂态时,最好在调查的不同阶段使用每种方法。计算机视觉在对瞬态知之甚少的情况下特别有用,而传统的统计最优检测在已知瞬态结构和估计其参数后可以非常准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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