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Radar target identification based on feature extraction performed with RBF artificial neural networks

机译:基于RBF人工神经网络特征提取的雷达目标识别。

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摘要

An artificial neural network (ANN) approach for radar image processing is presented in this paper. A renewal concept of simple adaptive units as a foundation for network assembling allows one to design ANN-based feature extraction scheme for 2D-signal processing. It was shown that ANN implementing radial basis function (RBF) processing units can be applied for identification of radar targets described by the set of scatterers. The obtained results indicate a high accuracy estimation of separate scatters centers.
机译:本文提出了一种用于雷达图像处理的人工神经网络方法。简单自适应单元的更新概念作为网络组装的基础,使人们可以设计用于2D信号处理的基于ANN的特征提取方案。结果表明,实现径向基函数(RBF)处理单元的ANN可以用于识别由散射体集合描述的雷达目标。获得的结果表明对单独的散射中心进行了高精度估计。

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