基于统计特征的神经网络雷达非均匀杂波分类

Thamir R. Saeed, Ghufran M. Hatem, J. W. A. Sadah
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引用次数: 1

摘要

本文提出了一种基于神经网络的鲁棒杂波分类器,通过选择最优的恒定虚警率来辅助雷达接收机,该分类器对16类、4种不同情况下的雷达回波分布进行了训练。回波雷达信号分布为瑞利分布、威布尔分布、对数正态分布和k分布,情况为信号、多目标、封闭多目标和杂波边缘。多层感知器是一种具有均值、方差、模态、峰度、偏度、中值和熵七个特征的神经网络,用于对返回信号进行分类。最小均方误差用于评估分类器的性能。仿真结果表明,信号杂波比在+35 dB到−35 dB范围内,隐藏层神经元个数为5-20个,采样数为60-360个。通过执行,使用240个样本和20个神经元获得了优化,然后导致98.1%的返回信号分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of radar non-homogenous clutter based on statistical features using neural network
This paper presents a robust clutter classifier based on the neural network to assist the radar receiver by choosing optimal constant false alarm rate where this classifier has been trained for 16 classes, four radar return distribution with different situations. The return radar signal distributions are Rayleigh, Weibull, lognormal and K-distribution, while the situations are, signal, multi-target, closed multi-target, and clutter edge. Multilayer perceptron with back-propagation as a neural network with seven features, mean, variance, mode, kurtosis, skewness, median, and entropy, have been used to classify the return signal. A least mean square error is used to evaluate the classifier performance. The simulation is evaluated for the signal to clutter ration from +35 dB to −35 dB, with 5-20 neurons of the hidden layer, and 60-360 samples. By performing, the optimisation has been gained by using 240 samples and 20 neurons then lead to 98.1% return signal classification.
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