The neural network method for radar weak target detection

H. Weidong, Yu Wenxian, Guo Guirong
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引用次数: 0

Abstract

Because of the statistical nature nature of many types of clutter, a radar target detector must set a fairly high threshold in order to order to maintain a reasonable false-alarm rate. However, weak targets are usually missed for the above threshold detector. This paper presents an effective detector, which can be considered as a two-dimensional feature matching filter for radar signals. The feature extraction is performed by Hopfield neural networks and the feature integration is finished by a multilayer perceptron. In order to overcome the local optimum problem, a novel modification which is called energy comparing method is introduced into the Hopfield model dynamic equation to find the global optimum. By testing with the real radar return data in a low signal-to-clutter ratio, the detector presented in this paper has more advantages than the conventional threshold detector.<>
雷达弱目标检测的神经网络方法
由于杂波的统计性质,雷达目标探测器必须设置一个相当高的阈值,以保持合理的虚警率。然而,上述阈值检测器通常会遗漏弱目标。本文提出了一种有效的探测器,它可以看作是雷达信号的二维特征匹配滤波器。特征提取由Hopfield神经网络完成,特征集成由多层感知器完成。为了克服Hopfield模型的局部最优问题,在Hopfield模型动力学方程中引入了一种新的修正方法——能量比较法来求全局最优。在低信杂比条件下对实际雷达回波数据进行了测试,结果表明,该检测器比传统的阈值检测器具有更大的优势。
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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