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Ship target recognition using low resolution radar and neuralnetworks

机译:使用低分辨率雷达和神经网络的舰船目标识别

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摘要

The classification of ship targets using low resolution down-range radar profiles together with preprocessing and neural networks is investigated. An implementation of the Fourier-modified discrete Mellin transform is used as a means for extracting features which are insensitive to the aspect angle of the radar. Kohonen's self-organizing map with learning vector quantization (LVQ) is used for the classification of these feature vectors. The use of a feedforward network trained with the backpropagation algorithm is also investigated. The classification system is applied to both simulated and real data sets. Classification accuracies of up to 90% are reported for the real data, provided target aspect angle information is available to within an error not exceeding 30 deg
机译:研究了使用低分辨率近距离雷达轮廓,预处理和神经网络对船舶目标进行分类的方法。傅立叶修正的离散梅林变换的实现方式被用作提取对雷达的纵横角不敏感的特征的手段。 Kohonen的带有学习矢量量化(LVQ)的自组织图用于这些特征矢量的分类。还研究了使用反向传播算法训练的前馈网络的使用。分类系统适用于模拟和真实数据集。如果目标纵横比信息在不超过30度的误差范围内可用,则针对真实数据报告的分类精度最高为90%

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