An Application of Artificial Intelligence to Adaptive Radar Detection Using Raw Data

P. Addabbo, Dario Benvenuti, G. Foglia, G. Giunta, D. Orlando
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引用次数: 1

Abstract

In this paper, we address the detection of targets in clutter-dominated environments. Specifically, we devise and apply a new approach to solve the Interference Covariance Matrix (ICM) estimation problem based upon the neural networks. Assuming a specific structure for the ICM, we train a Neural Network (NN) to estimate the parameters that characterize the ICM in univocal way. Then, we use the results provided by the NN to build up an estimate of the entire ICM and plug it into the adaptive matched filter and the adaptive coherence estimator. The performance assessment is conducted by resorting to synthetic as well as real-recorded data and shows the effectiveness of the proposed approach also in comparison with conventional competitors relying on the sample estimates of the ICM parameters.
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人工智能在原始数据自适应雷达探测中的应用
本文主要研究了杂波环境下的目标检测问题。具体来说,我们设计并应用了一种新的方法来解决基于神经网络的干扰协方差矩阵(ICM)估计问题。假设ICM具有特定的结构,我们训练神经网络(NN)以单一的方式估计表征ICM的参数。然后,我们使用神经网络提供的结果建立整个ICM的估计,并将其插入自适应匹配滤波器和自适应相干估计器。性能评估是通过综合和实时记录的数据进行的,并且与依赖于ICM参数的样本估计的传统竞争对手相比,也显示了所提出方法的有效性。
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