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Detection Algorithms to Discriminate Between Radar Targets and ECM Signals

机译:区分雷达目标和ECM信号的检测算法

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摘要

We address adaptive detection of coherent signals backscattered by possible point-like targets or originated from electronic countermeasure (ECM) systems in presence of thermal noise, clutter, and possible noise-like interferers. In order to come up with a class of decision schemes capable of discriminating between targets and ECM signals, we resort to generalized likelihood ratio test (GLRT) implementations of a generalized Neyman-Pearson rule (i.e., for multiple hypotheses). The adaptive detectors rely on secondary data, free of signal components, but sharing the statistical characterization of the noise in the cell under test. The performance assessment focuses on an adaptive beamformer orthogonal rejection test (ABORT)-like detector; analytical expressions for the probability of false alarm, the probability of detection of the target, and the probability of blanking the ECM (coherent) signal are given. More remarkably, it guarantees the constant false alarm rate (CFAR) property. The performance assessment shows that it can outperform the adaptive sidelobe blanker (ASB) in presence of ECM systems.
机译:我们解决了对相干信号的自适应检测的问题,这些信号被可能的点状目标向后散射,或者源自存在热噪声,杂波和可能的类似噪声的干扰源的电子对策(ECM)系统。为了提出能够区分目标和ECM信号的一类决策方案,我们诉诸广义Neyman-Pearson规则的广义似然比检验(GLRT)实现(即用于多个假设)。自适应检测器依赖于没有信号成分的辅助数据,但共享被测单元中噪声的统计特征。性能评估的重点是自适应波束成形器正交拒绝测试(ABORT)式检测器;给出了虚警概率,目标检测概率和ECM(相干)信号消隐概率的解析表达式。更明显的是,它保证了恒定的误报率(CFAR)属性。性能评估表明,在存在ECM系统的情况下,它的性能优于自适应旁瓣消隐器(ASB)。

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