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首页> 外文期刊>IEEE Transactions on Neural Networks >Classification of radar clutter using neural networks
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Classification of radar clutter using neural networks

机译:基于神经网络的雷达杂波分类

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摘要

A classifier that incorporates both preprocessing and postprocessing procedures as well as a multilayer feedforward network (based on the back-propagation algorithm) in its design to distinguish between several major classes of radar returns including weather, birds, and aircraft is described. The classifier achieves an average classification accuracy of 89% on generalization for data collected during a single scan of the radar antenna. The procedures of feature selection for neural network training, the classifier design considerations, the learning algorithm development, the implementation, and the experimental results of the neural clutter classifier, which is simulated on a Warp systolic computer, are discussed. A comparative evaluation of the multilayer neural network with a traditional Bayes classifier is presented.
机译:描述了一种分类器,该分类器在其设计中结合了预处理和后处理程序以及多层前馈网络(基于反向传播算法),以区分雷达返回的几种主要类别,包括天气,鸟类和飞机。对于雷达天线的单次扫描收集的数据,分类器在归纳上可实现89%的平均分类精度。讨论了神经网络训练的特征选择过程,分类器设计注意事项,学习算法的开发,实现以及在Warp脉动计算机上模拟的神经杂波分类器的实验结果。提出了使用传统贝叶斯分类器对多层神经网络进行的比较评估。

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